Next Article in Journal
In Situ Airtightness Measurement Using Compressed Air Flow Characteristics
Previous Article in Journal
High-Temperature Materials for Complex Components in Ammonia/Hydrogen Gas Turbines: A Critical Review
Previous Article in Special Issue
Realistic Nudging through ICT Pipelines to Help Improve Energy Self-Consumption for Management in Energy Communities
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Intelligence Techniques in Sustainable Energy: Analysis of a Decade of Advances

Departamento de Ciencias de la Computación y la Decisión, Facultad de Minas, Universidad Nacional de Colombia, Medellín 1027, Colombia
*
Author to whom correspondence should be addressed.
Energies 2023, 16(19), 6974; https://doi.org/10.3390/en16196974
Submission received: 2 September 2023 / Revised: 22 September 2023 / Accepted: 3 October 2023 / Published: 6 October 2023

Abstract

:
In the last decade, many artificial intelligence (AI) techniques have been used to solve various problems in sustainable energy (SE). Consequently, an increasing volume of research has been devoted to this topic, making it difficult for researchers to keep abreast of its developments. This paper analyzes 18,715 articles—about AI techniques used for SE—indexed in Scopus and published from 2013 to 2022, which were retrieved and selected following a novel iterative methodology. Besides calculating basic bibliometric indicators, we used clustering techniques and a co-occurrence analysis of author keywords to discover and characterize dominant themes in the literature. As a result, we found eight dominant themes in SE (solar energy, smart grids and microgrids, fuel cells, hydrogen, electric vehicles, biofuels, wind energy, and energy planning) and nine dominant techniques in AI (genetic algorithms, support vector machines, particle swarm optimization, differential evolution, classical neural networks, fuzzy logic controllers, reinforcement learning, deep learning, and multi-objective optimization). Each dominant theme is discussed in detail, highlighting the most relevant work and contributions. Finally, we identified the AI techniques most widely used in each SE area to solve its specific problems.

1. Introduction

The transition from conventional fossil-fuel-based energy sources to renewable alternatives, characterized by a low environmental impact and diminished carbon emissions, has emerged as a relevant topic in the last decade [1,2]. This is a clear trend that has emerged since the 1990s, in line with the development of sustainability. Notably, various national governments have achieved significant advances in the integration of sustainable energy (SE) sources into their energy portfolios [3], but the challenges and problems related to their adequate use and popularization have grown as well [4]. On a macro level, incorporating renewable energies into planning the operation and expansion of existing electrical power systems poses essential challenges due to the inherent variability of renewable resources [5], the difficulty of forecasting [6], and their proximity to end-users. On a micro level, the adequate and optimal use of each distinct renewable technology implies solving complex technical problems associated with generic optimization, control, and forecasting issues. For example, forecasting the wind speed and subsequent energy output of wind farms is challenging due to the inherent stochastic and intermittent nature of wind velocity [2]. Similarly, forecasting the performance of fuel cells has significant complexity due to their inherent multivariate and non-linear nature [7]. This article will discuss many other similar cases in depth.
In response to this prevailing worldwide context, both practitioners and researchers have identified a suite of methodologies and tools amenable to tackling the challenges inherent to sustainable energy (SE) within the domain of artificial intelligence (AI) [8,9,10]. These AI approaches offer avenues for addressing extant issues and refining pre-existing solutions hitherto adapted from diverse disciplines. Notably, the past decade has been characterized by the popularization of AI techniques, which has been boosted by successful advances in methodologies such as deep learning [11,12] and the augmentation of computing capacity. Consequently, the use of AI in SE has attracted significant interest, which can be observed from the annual increase in research publications.
However, it should be noted that the domains of sustainable energy (SE) and artificial intelligence (AI) are vast fields in scope, and it is not easy to define their intersections and joint evolution to determine their history and more relevant trends over time. Considering this complexity, it is significant to profile the existing research publications using literature-based discovery techniques to identify dominant themes and development patterns in the last decade. Thus, the objective of this study is to identify, classify, and hierarchize the dominant areas using the existent literature as evidence. Previous works are focused only on subareas and do not present a comprehensive approach to this area. A small-scale attempt is presented in [13], where bibliometric methods are employed to analyze 469 documents obtained from the Web of Science. These documents were published between 1985 and 2022. The main limitation of the study presented in [13] was its search string, as it restricts the obtained documents to those having both “Artificial Intelligence” and “Renewable Energy” terms in their titles. This leads to considerable amounts of the literature being overlooked, as will be demonstrated later in this document. Another highly significant limitation of the study is that the authors do not provide details about the review and cleaning process of the keywords used in the co-word analysis. This aspect is crucial since synonyms and the duplication of terms due to the inclusion of singular and plural forms (treated as distinct text strings) can significantly impact the results, potentially leading to erroneous conclusions.
This investigative effort is thus dedicated to profiling the available data regarding the basic “4W” questions: Who? Where? When? What? To profile the research literature, we blend bibliometric and text-mining methods to map the leading players and their interconnections and discover dominant themes.
A comprehensive assembly and subsequent scrutiny of a database encompassing 18,715 scholarly articles have been undertaken to accomplish this objective. These articles collectively address the application of AI techniques in resolving the principal quandaries discerned by researchers and practitioners who are deeply engaged in the study and practice of SE.
The rest of this article is organized as follows. Section 2 presents a literature review. Section 3 describes the methodology adopted in this study and the data collection and cleaning processes employed. Section 4 presents an analysis of the results. Afterward, Section 5 details the dominant themes in the database. Finally, Section 6 draws the main conclusions.

2. Literature Review

2.1. Applications of Artificial Intelligence on Sustainable Energy

The widespread adoption of artificial intelligence has significantly impacted sustainable development, particularly in solving various issues that affect renewable energy sources. Clearly, AI is a powerful enabler of sustainable development goals, but it can also have negative impacts due to its rapid advancement without proper regulatory insight and oversight [14]. Over the last decade, AI has been applied to address various challenges in sustainable energy, and there is a significant body of literature dedicated to reviewing the progress achieved in specific and focused aspects of the application field. The published analyses are often focused on identifying and classifying the most suitable AI methods for a particular energy issue [15,16] or on examining the potential of a new AI paradigm for application to one or more energy-related problems, e.g., [17,18]. While conducting this research, a total of 378 literature reviews published between 2013 and 2022 were found. Without time restrictions in the search string, 539 review documents were obtained, covering the period between 1989 and 23 August 2023. The ten most cited reviews are listed in Table 1.
The dataset covering the period 1989–2023 presents an annual growth rate of 19.69%. The average age of documents is 2.82 years, with an average of 51.59 citations per document. Authors work collaboratively with an average of 4.68 authors per document; international co-authorship is at 39.96%. There are 2330 unique authors, with 21 producing single-authored documents. The dataset involves 1039 organizations and 74 countries. Keywords are abundant, with 1484 author keywords and 3872 index keywords.
To analyze the published reviews between 1989 and 2023, co-word analysis was applied to all keywords (author keywords plus index keywords) to identify existing dominant thematic clusters. This type of analysis unveils the big picture of the documents, showing major emphasis areas. Only keywords appearing in five or more documents were considered for the co-word analysis. With this threshold, a coverage of 95.2% of the reviews was achieved, corresponding to 513 documents. The keywords underwent the same cleaning and standardization process used for the database analyzed in this document. This process will be discussed in more detail later.
Figure 1 presents the co-occurrence network obtained for keywords appearing in at least 15 documents. The size of text and nodes is proportional to the frequency of the keyword. The color and width of the links are proportional to the similarity measure between nodes. In this way, thicker and darker links indicate that the words in the associated nodes tend to appear together more frequently, e.g., MPPT and PHOTO_VOLTAIC_SYSTEMS, in the upper part of the network diagram. The figure shows a clear dominance of terms associated with deep learning and artificial neural networks in the reviews.
The results of the co-word analysis indicate that the published reviews can be grouped into five clusters. The first cluster discusses the use of AI in optimizing and enhancing the performance of solar and wind energy systems. Machine learning and AI techniques are used to improve the efficiency and reliability of these types of renewable energy systems. In this cluster, topics include the application of AI-enhanced Maximum Power Point Tracking (MPPT) controllers for photovoltaic (PV) systems. These controllers are essential for optimizing power extraction from solar panels, especially under fluctuating environmental scenarios such as partial shade, as addressed previously. AI and machine learning are also employed in forecasting and predicting wind and solar power, which is crucial for grid stability and efficient energy distribution.
The second cluster addresses the application of AI in solving different problems in smart grids and microgrids, which include aspects such as energy efficiency, energy utilization, and energy management. This cluster emerges because smart grids represent a transformative shift in electric power transmission networks, evolving as a direct response to the growing intricacies and demands of contemporary energy needs. Smart grids aim to elevate energy efficiency and optimize energy utilization substantially, converging these efforts towards the overarching goal of adept energy management [24]. As indicated in the analyzed reviews, AI plays a prominent role in diverse aspects of the operation of energy systems [25,26].
The third cluster addresses the application of traditional models of neural networks, support vector machines, and genetic algorithms to different problems in renewable energy. Artificial neural networks (ANNs) emulate the human brain’s structure and function to process data, making them adept at modeling complex systems with non-linear relationships. This adaptability has rendered ANNs invaluable in renewable energy research. The reviews indicated that ANNs have shown proficiency in solving tasks of modeling, forecasting, and optimizing. In addition, there is a synergistic integration of ANNs with genetic algorithms (GAs). These techniques have been applied to improve the efficiency of biodiesel production [27], to forecast energy for renewable sources including solar, wind, and hydro [28], to develop novel renewable energy materials [29], and to augment the heat transfer efficiency in nanofluid systems [30]. Support vector machines (SVMs) are another technique commonly used in energy systems; SVM has been used, for example, to identify prime locations for electric vehicle charging stations [31] and to architect energy distribution frameworks [32].
The fourth cluster discusses the application of diverse deep learning models in sustainable energy. The reviews mainly focus on solving problems related to electric and hybrid vehicles and different aspects of batteries, such as estimating the state of charge and remaining useful life. This emphasis in the most relevant literature is because of the rising use of lithium-ion batteries in applications such as portable electronics and electric vehicles, and there is an increasing interest in optimizing their performance and predicting their state [33]. Lithium-ion batteries are categorized as secondary batteries and are fundamental to energy storage systems, particularly for powering electric and hybrid vehicles due to their high energy densities [34]. Ensuring the consistent and reliable performance of these batteries is paramount. As vehicles transition to being powered by these batteries, predicting their lifespan and the remaining energy they can offer has become crucial [35]. Deep learning’s capacity for nonlinear modeling, a skill highlighted by its ability to handle complex tasks and historical data, provides a robust tool for accurately estimating the State of Charge (SOC) of batteries, a crucial factor for their health [36]. This accurate SOC estimation is indispensable for creating advanced battery management systems and formulating effective charging strategies [37]. Similarly, the global tilt towards electric and hybrid vehicles is also driven by environmental imperatives. The transportation sector substantially contributes to greenhouse gas emissions and consumes a significant portion of global energy [35]. With the pressing need to curtail greenhouse gases due to their role in climate change, electric and hybrid vehicles have emerged as potential game-changers. They substantially reduce dependency on fossil fuels, decreasing greenhouse gas emissions [38]. Advanced battery management systems, enhanced by deep learning capabilities, play a critical role in this transition. By boosting vehicle reliability, these systems facilitate the broader adoption of electric and hybrid vehicles, underscoring our commitment to a sustainable future [38].
Finally, the fifth cluster groups reviews discussing the use of AI in proton exchange membrane fuel cells and other devices for energy storage and conversion like rechargeable electric batteries. This cluster also includes works related to hydrogen production. Fuel cells, particularly proton exchange membrane fuel cells (PEMFCs), are electrochemical devices that convert chemical energy directly into electrical energy using specific chemical reactions [39]. PEMFCs have become increasingly prominent in the energy domain owing to their versatile properties, such as high power density and quick startup. They can achieve notable conversion efficiencies, with some models reaching up to 65% [40,41]. The scope of energy storage and conversion extends beyond just fuel cells. It encapsulates devices such as rechargeable electric batteries. With the advent of artificial intelligence and machine learning, there has been a rapid advancement in the design and development of essential battery materials, especially electrode materials and solid electrolytes [42]. Machine learning stands out as a transformative tool in this domain, unveiling and predicting novel battery systems, thus propelling the evolution of battery research [43,44]. Moreover, combining imaging techniques with machine learning has enriched our understanding of battery materials. This synergistic approach has revealed intricate details about electrode microstructures and their consequential influence on overall battery performance [45].
To analyze the evolution of the topics addressed by the literature reviews, the dominant clusters were analyzed for each year in the period 2011–2023. With the clusters of each year, a Sankey diagram was prepared that shows the migration of keywords from one cluster to another. This diagram is presented in Figure 2.
In the oldest review found, Nilsson, in 1989, analyzes the application of expert systems in utility electrical power plant systems [46]. In 1998, Li et al. [47] presented a comparative analysis of regression and ANNs for the prediction of wind turbine power. Next, in 2000, Kalogirou [48] reviewed the application of ANNs in renewable energy systems. In 2008, Mellit and Kalogirou [49] analyzed the application of AI in photovoltaic systems. In 2009, Mellit et al. [50] discussed using AI for sizing photovoltaic systems. Starting in 2011, literature reviews on the topic of study began to be consistently produced.
As seen in Figure 2, between 2011 and 2014, reviews focused on the applications of ANN, PSO, and GA in solar and wind energy. For 2015, the reviews on smart grids, energy efficiency, and the use of fuzzy logic in MPPT, are consolidated. For 2016, reviews on energy storage take a central role. For 2017, hybrid and electric vehicles and microgrids stand out as new focuses of interest. In 2018, the use of big data appears as one of the central themes. Subsequently, in 2019, a significant number of reviews on deep learning were published. In 2020, topics related to lithium batteries, charging strategies, electric vehicles, and deep learning occupy the attention of reviews. These topics continue to be valid during the years 2021 and 2022. Finally, for 2023, hydrogen stands out as one of the most relevant topics.

2.2. Dominant Theme Identification and Co-Word Analysis

Profiling large volumes of the literature is a challenge that needs to be addressed using bibliometric and text mining methods [51,52,53]. Bibliometrics involves applying quantitative techniques to bibliographic databases to determine performance indicators for authors, institutions, countries, and sources [54]. It also aims to elucidate the analyzed field’s social, intellectual, and conceptual structure [55]. However, the techniques vary based on the quantity of documents to be analyzed and the available software. Specifically, for large volumes of information, it is necessary to employ text mining techniques that enable preprocessing and highlighting of the most essential information before analyzing the available data.
The identification of relevant themes in a body of literature is primarily based on the analysis of keywords or noun phrases extracted from the text of the documents. Keyword analysis is commonly used to uncover the intellectual structure (major dominant themes), while noun phrases are used to discover emerging topics. Particularly in the latter case, there is a significant effort to develop methodologies that enable the detection of technological emergence through the analysis of the scientific literature and patents [56].
Determining thematic areas using co-word analysis is based on clustering techniques on the matrix or network of keyword co-occurrences. This technique is well known and widely used in the most relevant literature. For example, in [57], co-word analysis is used to obtain the research clusters to analyze business models in green buildings. Chen et al. [58] deduced the characteristics of an energy policy in China using this technique.

3. Materials and Methods

3.1. Workflow Overview

This study followed the standard workflow proposed in [54,55], which includes the following stages:
  • Study design.
  • Data collection and preparation.
  • Data analysis.
  • Data visualization.
  • Interpretation.

3.2. Study Design

The parameters of the study are presented in Table 2. The study was restricted to the last ten complete years to discover the recent evolution of the field.
To define the analysis period, the articles retrieved by the search string designed in this research were analyzed without considering any time restrictions. The analysis of the keywords (not discussed here) shows that the research published during the period 1979–2012 is concentrated on the use of classic ANN models (back-propagation feed-forward networks, radial basis function networks, SVM), GA, PSO, expert systems, and fuzzy systems to solve problems related to solar and wind energy and batteries. During that period, there was not a variety of techniques and issues in the area similar to those that have arisen in recent years, as seen in Figure 2. In this way, it was decided to use the last ten years in this analysis to capture the temporal evolution of the different thematic focuses that have been presented. In addition, Ref. [13] covers the initial period.
Constructing the search string posed a substantial challenge in the context of this research. Designing search strings to collect publications in a field of knowledge is a central activity in bibliometric analysis, meta-analysis, and systematic literature reviews. One of the main functions of search strings is identifying relevant documents in a specific area while discarding non-relevant content. Nevertheless, the wider the field of knowledge, the more challenging the identification of keywords. Such is the case for AI and SE.
Figure 3 details the methodology adopted in this study to design the search string and retrieve the publications. Note that some stages could be similar to those in other methodologies to select publications in literature reviews, e.g., PRISMA [59]. However, the methodology implemented here was different because its goal was to develop an adequate search string by tracking keywords instead of filtering the results retrieved by a search string that was established a priori.

3.3. Design of the Search String

The search string was designed in late 2022 during the preliminary formulation of the research project. The design process is discussed in the following sections.

3.3.1. Data Collection

The objective of the first step was to find the keywords associated with the categories of sustainable energy (SE) and artificial intelligence (AI). To do this, all Q1 and Q2 journals belonging to these categories were identified in Scimago Journal and Country Rank. A total of 103 journals were found in the SE category and 100 in the IA category. Then, the author’s keywords were downloaded for each journal article from 2013 to 2022. For this period, 274,764 articles and 334,527 keywords were found in the SE category, and 123,362 articles and 203,443 keywords in the AI category. This equates to a total of 398,126 articles and 516,244 author keywords. Table 3 summarizes these figures.
Of the total keywords, 191,662 author keywords in AI and 158,849 author keywords in SE appear in six or fewer documents. These could be considered rare terms. On the other hand, if basic text mining techniques were used to homogenize the text, such as unifying plurals and singulars, it was found that of the totals of 334,527 and 203,443, there are 311,316 and 247,848 different keywords.

3.3.2. Data Selection

A manual analysis was conducted to identify the most significant keywords within each field (i.e., SE and AI). For this purpose, the terms that ranked among the top 1000 most frequently used keywords each year and had a minimum frequency of eight were subject to manual examination. The resulting keywords obtained from this process were incorporated into the initial search string.

3.3.3. Initial Design

The keywords selected in the preceding phase were employed in formulating an initial search query within the Scopus database. That preliminary string specified that the title of the documents should include at least one relevant SE keyword and one relevant AI keyword. No restrictions were imposed concerning the field of knowledge or publication year. This initial query retrieved a total of 12,428 documents.

3.3.4. Exclusion

The titles of the top 2000 most cited publications obtained through the initial search query were subject to manual review to identify those that did not align with the objectives of this study. These words were deleted from the search string. This review led to identifying keywords that, owing to their general nature, failed to retrieve pertinent documents for this investigation.

3.3.5. Final Design

As a result of the previous step, the final search string included only keywords that allow the target documents to be retrieved for analysis. The final search string is detailed in Appendix A.

3.4. Data Collection and Preparation

All information from the documents retrieved by the search string was extracted from the Scopus database. The downloaded fields encompassed article title, authors’ names, authors’ Scopus identifiers, source title, citation count, references, abstract content, author keywords, and index keywords. All this information was downloaded in CSV format to facilitate subsequent processing.
Multiple procedures were employed to extract, clean, and consolidate the data in the dataset. These procedures encompass a combination of computational operations complemented by manual refinements. The comprehensive process involved:
  • Removing accents to normalize textual representation.
  • Standardizing the formatting of author names.
  • Disambiguating author names based on Scopus Author ID.
  • Removing parts of titles in languages other than English.
  • Extracting and refining geographic regions and affiliations from the affiliation field.
  • Applying text string transformations such as case conversion, whitespace removal, concatenation, and character substitution as required.
  • Eliminating occurrences of <NA>, substituting where applicable.
  • Homogenizing author and index keywords. Within this phase, a thesaurus was systematically constructed through an iterative approach. Initially, text mining techniques were used to group terms differing in spelling (American and British) or plural and singular forms. After this, a manual computer-assisted validation process was undertaken. The primary objective of this manual verification was to establish uniformity among synonyms and textual variations not encompassed within the preliminary phase.

3.5. Data Analysis, Visualization, and Interpretation

This study used several performance metrics to characterize the contributions of journals, authors, organizations, and countries in the field. The performance metrics for productivity and impact include the number of publications and citations per year, and citations per year and document.
Co-word analysis was used to examine the content of the documents. In this case, it was assumed that words frequently appear together and have a thematic relationship. In this research, the relationships between terms are represented using a co-occurrence network, where the nodes represent the terms and the links represent co-occurrence. The number of co-occurrences between the words in the corresponding nodes weights the links.
The co-occurrence network derived from the author’s keywords was clustered to identify the dominant themes, applying community detection algorithms. Each resulting cluster corresponds to one dominant theme. Documents with one or more author keywords belonging to the cluster were examined to analyze each dominant theme.

4. Results

4.1. Performance Metrics

4.1.1. General Performance Metrics

The employed dataset encompasses documents published from 2013 to 2022, comprising 18,715 documents. This yields an annual growth rate of 41.71%, with an average document age of 3.63 years and 19.56 citations per document. Notably, each document receives an approximate annual citation count of 1.96. The dataset involves contributions from 4467 distinct source titles, with an average of 4.19 documents per source. The dataset contains 11,614 articles, 7100 conference papers, and 1 retracted document (which was ignored in the analysis). The 54,884 authors collectively yield an average of 4.14 authors per document, alongside an average of 4.24 co-authors. Around 23.81% of authors partake in international co-authorship, contributing to 77,571 author appearances. Furthermore, the dataset encompasses 13,450 organizations across 138 countries. There are 28,487 author keywords and 46,920 index keywords.

4.1.2. Performance Trend Metrics

Figure 4 depicts the annual publication count, while Table 4 outlines the primary yearly performance metrics. The plotted curve shows a distinct upward trajectory, reflecting an increasing interest in the research domain. However, it is noteworthy that the average citations per document and the mean citations per document per year reveal a consistent downward pattern, as can be seen in Table 4. This trend can be attributed to the tendency for older documents to accumulate more citations. Particularly interesting is the anomaly in 2018; despite a surge in publication volume, there was an abrupt drop in both the average citations per document and the mean citations per document per year.

4.1.3. Authors’ Performance Metrics

There are 54,884 authors and 242 authors with ten or more publications. Table 5 details the performance indicators, ordered by the number of documents, for the top 20 authors with more documents or more total citations (GCS). Seven authors belong in both groups. Javaid N. ranks first with 50 publications, while Xiong R. is the most cited author. In addition, the number of local citations (citations among the documents in the database or local citation score (LCS)) was calculated; this value was used to compute the h-, g-, and m-index presented in the table. As a result, Mekhilef S., with an h-index of 21, is the most relevant author considering local citations and the number of published documents.
A correlation map for exploring the co-authorship relationships among the authors in Table 5 is presented in Figure 5. The size of the nodes is proportional to the number of documents of the author, whereas the width of the links is proportional to the number of co-authored publications. The figure shows six clusters of authors and nine isolated authors.

4.1.4. Organizations’ Performance Metrics

Table 6 presents the performance metrics for the authors’ institutions of affiliation. Notable trends include the dominance of Chinese institutions such as North China Electric Power University, Tsinghua University, and Huazhong University of Science and Technology, indicating China’s robust contribution to the research landscape. However, organizations like Islamic Azad University, the University of Tehran in Iran, and the National Institutes of Technology in India demonstrate a significant impact despite lower publication counts. A prominent outlier is the University of California (USA), with a high global citation count but a relatively lower number of documents published, underscoring its research quality.

4.1.5. Countries’ Performance Metrics

Table 7 provides insights into performance indicators for the countries of affiliation of the authors, sorted by the number of documents. China holds a prominent position, with the highest number of documents and total citations, indicating a dominant research output. Significantly, it should be emphasized that China’s production is 2.5 times that of the country ranking second in the list. India and the United States follow with substantial publication counts and citations. Despite fewer published documents, Iran showcases a relatively high global citation count, underscoring impactful research. The United Kingdom, South Korea, and other countries also demonstrate substantial contributions. Notably, Singapore and Hong Kong stand out with a high global citation count compared to their scientific production, reflecting their research excellence.
Figure 6 presents the auto-correlation map for the countries appearing in Table 7. There are no strong links between countries, and this figure shows a moderate level of collaboration among countries. There are no strong links, and notably, there are no isolated nodes.

4.1.6. Sources’ Performance Metrics

Table 8 presents the performance indicators for the top 20 most frequent and the top 20 most cited publication sources in the analyzed dataset, sorted by the number of occurrences (OCC). Of the 26 publications sources in the table, 14 belong simultaneously to the two groups, indicating high quality and productivity. Prominent sources like Energies and Energy demonstrate high frequency and global citations, indicating influential platforms. Journals like Applied energy (APPL ENERGY) and Energy Conversion and Management (ENERGY CONVERS MANAGE) also display high global citations, highlighting their impact. Notably, some sources exhibit high local citations relative to global citations, suggesting a concentrated impact within the field; this is the case of ACS Applied Materials & Interfaces (ACS APPL MATER INTERFACES), with a local citation score (LCS) of 3493, appearing in the 25th position in the frequency ranking. Regarding the impact and frequency, the most important source is Applied Energy, with an h-index of 83. However, Applied Energy is the most influential document source within the field of applications of AI in SE, with an h-index of 87. Additionally, specific sources like the Journal of Physics: Conference Sseries (J PHYS CONF SER) have a lower global impact despite the higher number of publications. All the journals listed in the table fall within the energy domain, except for Applied Soft Computing Journal (APPL SOFT COMPUT J), which pertains to the field of artificial intelligence.

4.2. Determination of the Dominant Themes Using Co-Word Analysis

This section discusses the process for obtaining the dominant themes using the Author keywords (AKs). For this research, the author keywords were selected. AKs refer to a set of words or phrases that authors themselves choose to represent the primary themes, concepts, and topics addressed in their research article. These keywords aim to reflect the content and focus of the research paper accurately. Authors often select keywords that are not only relevant to their work but also are words that potential readers might use when searching for related articles. Author keywords provide direct insight into the subject matter of the research article. In contrast, index keywords (IK) come from a standardized list or taxonomy maintained by the database or indexing service. Consequently, AKs are more precise than IKs to capture the essence of the documents.

4.2.1. Keywords Preparation

Keywords were prepared by building a thesaurus constructed using the following steps:
  • A table was constructed with two columns: the “original (raw) keyword” and the “modified keyword”. In this step, the two columns contain the same text. The “modified keyword” column corresponds to the cleaned author keyword used in the analysis. The following steps were applied only to the “modified keyword” column.
  • British English words were rewritten in American English.
  • Abbreviations were eliminated from the terms; for instance, “electric vehicles (EV)” was converted to “electric vehicles”.
  • Text collision techniques were employed to standardize terms that might differ in word order or usage of plurals and singulars. For instance, these techniques group phrases like “analysis of data” and “data analysis”, as well as “electric vehicle” and “electric vehicles”.
  • Lastly, a computer-assisted review was performed. In this step, for example, the uses of common synonyms such as “forecast” and “predict”, or “lithium” and “li-ion” are reviewed.
The obtained table is used to clean and standardize the AKs. Simultaneously, a compilation of stop words was generated as part of this procedure. The list encompasses terms that will be ignored during the analysis. The list includes vague terms without utility in the analysis, country names, and overly broad terms such as “sustainable energy” or “machine learning”.

4.2.2. Selection of the Minimum Number of Keyword Occurrences

Due to the extensive volume of processed articles and the duration of the time span, the analysis was performed for each year within the analysis period. During this phase, it is necessary to select the minimum number of appearances that a keyword must have to be considered in the analysis. Setting this threshold too low would result in the inclusion of infrequent keywords that pertain to particular topics beyond the scope of this research. Table 8 shows the number of documents per year, the number of documents without AKs (column “Documents with N/A”), and the number of usable documents. The threshold of the minimum number of occurrences was determined as the maximum number of occurrences ensuring coverage across at least 90% of the usable documents. The calculated values appear in Table 9.

4.2.3. Clusters of Author Keywords Obtained for Each Year

A co-occurrence network of author keywords was constructed for every year within the analysis period. This network uses the cleaned author keywords, as discussed previously. Subsequently, the Louvain community detection algorithm was employed to extract keyword clusters representing the prevailing subject areas. Table 10 presents the results that were obtained. For each year, the obtained clusters are accompanied by the corresponding count of author keywords and the four most frequent terms. Clusters are arranged based on their cluster size, determined by the number of keywords they encompass. This sequence can be interpreted as a ranking that reflects the significance of the subjects throughout each year.
Figure 7 displays a Sankey diagram, wherein the clusters are organized by year, following the order indicated in Table 10. This diagram facilitates the observation of keyword transitions across clusters, illustrating the shifts in research focus across different years. Several patterns emerge when analyzing the evolution of clusters and the movements of keywords between clusters year by year.
  • The use of fuzzy controllers for tracking the maximum power point in photovoltaic systems is a topic that has remained relevant during the last decade.
  • Research on electric vehicles has been a dominant area in all years, particularly concerning topics related to their impact on the electrical grid, the corresponding energy source management, and subjects related to electric batteries. In 2019, batteries became a central research topic with their own cluster in the diagram.
  • The use of deep learning techniques has been a dominant topic since 2019, and with these techniques, various issues related to wind and solar energy, as well as electric batteries, have been addressed.
  • The utilization of heuristic optimization techniques, such as genetic algorithms, particle swarm optimization, and ant colony optimization, has been a prevalent theme throughout the decade. These techniques have been applied to optimization problems in energy, such as distribution planning and issues related to other artificial intelligence models when used in renewable energy contexts. An example of this is parameter identification in models.
  • Artificial neural networks, support vector machines, and neuro-fuzzy systems have been applied to a wide range of problems and have served as benchmarks for evaluating newer models like deep learning.
Figure 2 and Figure 8 can be compared to establish a parallel with previous works. As shown year-by-year, Figure 8 captures many details about the research emphasis in each year. For example, DEEP_LEARNING appears in Figure 2 in the year 2019, and this term is associated with the keywords DECISION_MAKING, SMART_GRID, and ELECTRIC_AND_HYBRID_VEHICLES; however, Figure 8 shows the same keyword (DEEP_LEARNING) in the years 2017 and 2018 associated with WIND_ENERGY. On the other hand, the works discussed in Section 2 are focused on narrow themes; in this sense, they are not comparable with our research.
Figure 8 presents the trending words per year. In the figure, the width of the lines is proportional to the total number of occurrences of the corresponding keyword. The analysis of the graph enables the identification of the most important words per year. Complementing the previous figure, it also helps establish the relevance of the themes. For example, deep learning is the most significant topic for 2020, 2021, and 2022. It is crucial to note at this point that Figure 7 presents clusters ordered by the number of keywords they contain, not by the total occurrences of the keywords.

5. Discussion

A detailed analysis of the underlying themes was conducted for each cluster obtained each year. This process is necessary because, by definition, clusters are derived from co-word analysis group keywords that frequently appear together in documents. However, each cluster can encompass more than one dominant area. For instance, if support vector machines and artificial neural networks are employed to predict a battery’s charge state and the wind turbine’s output power, the clustering algorithm tends to create a cluster containing the keywords related to these topics. This situation can go unnoticed when individual keywords are analyzed in isolation using numerical techniques without attempting to interpret their interrelationship within a cluster. This is a well-known situation in practice (for example, in customer analytics). As a result, there is a desire for clusters to be interpretable or explainable based on expert knowledge in the field.
This work conducted a computer-assisted manual analysis of each cluster’s 50 most cited articles annually. This analysis was supported by using text-mining techniques to uncover the underlying structure of the clusters. This analysis allowed for the discovery of the underlying dominant thematic areas. These areas can be categorized as belonging to artificial intelligence or sustainable energy. Addressing both classifications can lead to redundancies, so it was decided to conduct the analysis using a classification based on dominant themes in sustainable energy. This section discusses the emerging areas identified as dominant in detail.

5.1. Analysis of Dominant Themes

This section details the dominant themes that were found in the database. As this analysis was classified by SE theme, the following subsections briefly describe the problems found in diverse SE subfields and how they have been addressed using AI.

5.1.1. Solar Energy

Photovoltaic (PV) generation systems are particularly attractive renewable energy sources because they do not entail fuel costs and require minimum maintenance [60]. Nevertheless, they pose complex problems, which have been addressed using several AI techniques:
  • Maximum Power Point Tracking (MPPT) in solar power systems under variable conditions of solar radiation, shading, and ambient temperature [61]. This kind of tracking is challenging in extreme environments [62] due to the problems of traditional control techniques (in terms of accuracy, flexibility, and efficiency), as well as the presence of multiple local maxima in the power–voltage curve [63] when PV systems are partially shaded. MPPT has been implemented using traditional control systems, e.g., perturb-and-observe [64], fuzzy logic [65], and neuro-fuzzy systems [66]. Other heuristic mechanisms have been incorporated to optimize control systems: ant colony optimization [61,67,68,69], artificial bee colony optimization [69,70,71], particle swarm optimization or PSO [72,73], and differential evolution and genetic algorithms [74]. Likewise, adaptive mechanisms have been used in controllers [75], e.g., based on Hopfield networks [76,77].
  • Modelling and forecasting solar radiation at different scales: monthly [78,79], daily [80,81], and hourly [82]. One of the biggest problems of this type of SE is that solar radiation depends on climatic factors that are difficult to forecast accurately, such as temperature, humidity, wind speed, and daylight duration [83]. In addition, there is a lack of accurate data about climatic variables [80]. The literature has reported experiences of solar radiation forecasting using multi-layer perceptrons [78,79,80], radial basis function networks [79,80,81], fuzzy linear regression [84], SVMs [84], and hybrid models [82]. Some studies have proposed training neural network models using evolutionary algorithms, such as PSO [78].
  • Identifying solar photovoltaic (PV) system parameters is challenging due to their nonlinear, multimodal, and multivariate characteristics. The efficiency of converting solar energy into electricity largely hinges on the precision of these parameters. Traditional methods often grapple with issues such as immature convergence and falling into local optima, as they cannot effectively navigate the complex landscape of PV system models [85]. Diverse techniques have been used for parameter identification, including genetic algorithms (GAs) and other metaheuristic techniques, such as PSO [86], the Firefly algorithm [87], and differential evolution [88,89].

5.1.2. Smart Grids and Microgrids

Smart grids and microgrids are essential for managing power transmission systems efficiently and safely [90]. However, designing and operating them pose significant challenges, i.e., the decentralized control of these distributed sources, real-time electricity pricing, price sensitivity, using Energy Storage Systems (ESSs), and incorporating variable-operation renewable sources [91,92]. The following are some of the problems of these types of grids and the solutions that have been proposed:
  • Operation planning, efficient management, and determining optimal policies. Solving these problems is more complicated due to variable renewable sources. Some authors have proposed using multi-agent systems to manage microgrids [92,93] and smart grids [91]. For instance, Cha et al. [93] used smart agents to improve the management of microgrids, which are subjected to variable loads (i.e., refrigerated containers, electric vehicles, and loading stations for ships) and meet their own demand using wind power. Kuznetsova et al. [94] used reinforcement learning to plan the use of a battery in a system composed of a microgrid, a consumer, a renewable source, and a storage battery. The same methodology was adopted by Mbuwir et al. [95] to find optimal policies that can maximize solar self-consumption in microgrids. Intelligent agents have been employed to operate grids optimally using a decentralized management scheme [93,96].
  • Estimating electricity prices. Forecasting electricity prices in deregulated markets presents significant challenges due to the inherent volatility and dynamic interaction between consumers and real-time prices within smart grid systems. The unpredictable nature of these interactions can lead to deviations from initial forecasts, underscoring the importance of accurate prediction tools [97]. In response to these complexities, sophisticated artificial intelligence methodologies have been developed. These methodologies include fuzzy systems such as ANFIS [98], SVR [98,99], reinforcement learning [100], recurrent neural networks [101], and deep learning models [102] such as LSTM [103] and GRU [104].
  • Determining the optimal size and location of energy storage systems. Kerdphol et al. [105] and Baghaee, Mirsalim, and Gharehpetian et al. [106] proposed the use of radial basis function networks to determine (1) the optimal size and location of energy storage systems using batteries in microgrids and (2) the electricity that distributed sources should supply to the transmission network.
  • Expansion planning. One of the main challenges in the planning and operation of the modern transmission infrastructure (smart grids and microgrids) is locating and sizing sustainable generation sources [107,108]. This is because it is necessary to simultaneously optimize multiple objectives, which involves minimizing system losses and voltage deviations and maximizing voltage stability indices [109,110,111,112]. In addition, this kind of optimization should consider different technical and economic constraints, such as fluctuations in sustainable generation and demand [113]. This is a complex optimization problem that, in radial basis function networks, is usually addressed using modified versions of GAs [109,114,115], such as self-adaptive algorithms [113], those based on chaos or quantic computing [108], and their hybrids with techniques such as PSO [107]. However, to a lesser extent, other heuristic algorithms have been implemented for this purpose in the literature, such as the bat algorithm [112] and PSO [111,116,117,118].
  • Detecting malicious attacks in smart grids. Integrating advanced information and communication technologies (ICTs) in developing smart grids has undeniably amplified the efficiency and resilience of power distribution and management [119]. However, as the smart grid architecture becomes more centralized and reliant on software-defined networking (SDN) that captures data in real time, it also ushers in new vulnerabilities [120]. A significant concern is the susceptibility of smart grids to false data injection attacks. Such attacks cunningly sidestep conventional bad data detection systems within energy management systems, leading to distorted state estimations. The repercussions can vary from minor operational mishaps to large-scale blackouts [121,122]. To counteract these cyber threats, diverse artificial intelligence techniques have been used. Machine learning models, including those employing support vector machines (SVMs) and hybrid models integrating SVMs with random forest (RF), have displayed promising outcomes in recognizing various cyber threats [120]. Deep learning, too, has shown commendable progress in this arena. LSTM autoencoders are employed to discern false data injection attacks by extracting spatial and spectral features from state estimations, showcasing significant simulation accuracy [123]. Concurrently, convolutional neural network (CNN)-based strategies offer continuous recognition of areas affected by such attacks, integrating well with existing frameworks and providing rapid detection even on standard computing platforms [124]. Distinct research introduced an anomaly detection technique using CNNs to identify denial of charge (DoC) attacks on electric vehicle charging stations, leveraging the station’s energy demand patterns [125]. Additionally, wavelet convolutional neural networks have been highlighted as especially proficient at pinpointing distributed denial of service (DDoS) attacks in smart grid systems, combining high detection rates with minimal false alarms [126]. Deep convolutional neural networks (DCNNs) push the boundaries further in curtailing false data injection attack effects, surpassing traditional techniques [127,128].
  • Islanding detection in microgrids. For several reasons, islanding detection in grid-linked photovoltaic-based distributed power generation (PVDPG) systems is critical. This includes ensuring the safety of line workers and the general public, protecting consumer and utility equipment, preventing malfunctions of power system protective equipment, maintaining power quality, and strengthening the overarching security of the power system [129,130]. A significant challenge in devising reliable detection mechanisms lies in the inconsistent power output often associated with renewable energy sources like PVDPG, which can lead to voltage disturbances and unforeseen blackouts [131]. Recent innovations merging the Internet of Things (IoT) with cloud computing and machine learning have paved the way for enhanced microgrid controls [132]. IoT devices are pivotal in this technological nexus, providing superior measurement and control functionalities, vital for the microgrid environment. Moreover, cloud-based artificial neural networks (ANNs) have proven effective in islanding detection, especially when utilizing data from islanding simulations [132]. Numerous AI methodologies exhibit promise in islanding detection. For instance, ANFIS is an advanced technique for islanding detection, capitalizing on passive detection parameters such as voltage, frequency rate changes, and power variations [129,133]. Additionally, the synergy of LSTM networks with the empirical wavelet transform boosts the reliability of smart islanding detection [134]. Finally, Kermany et al. [135] used fuzzy neural networks for this purpose.

5.1.3. Fuel Cells

Fuel cells continuously convert chemical energy from fuel into electricity. Accurately predicting different variables associated with these devices (e.g., service life) is essential to reduce costs and improve durability [136]. AI applications for fuel cells include:
  • Estimating optimal operating parameters. One of the fundamental problems that should be solved to improve the performance of these systems is modeling and precisely identifying the parameters that characterize the cells. However, to do that, complex nonlinear multimodal functions should be solved so that optimization algorithms are not trapped in local optima. This problem has been addressed using GAs and their variants [137,138,139], Elman networks [140,141], and metaheuristic techniques such as the artificial bee colony algorithm [142].
  • Performance prediction. Predicting the performance of fuel cells is essential for improving their operational parameters and ensuring accurate long-term projections, especially given the challenges presented by factors such as degradation mechanisms and aging processes [143,144]. Various artificial intelligence (AI) techniques have been employed to tackle these complexities. The neural network autoregressive with external input (NNARX) method was utilized to forecast the performance of solid oxide fuel cells (SOFCs) [144]. In contrast, deep belief networks (DBN) offer heightened accuracy in the realm of proton exchange membrane fuel cells (PEMFCs) [145]. Echo-state neural networks have also emerged as an effective tool for predicting degradation [143]. Specialized neural network models, such as the wavelet transform combined with long short-term memory (LSTM) and gradient boosting decision tree (GBDT), have achieved exceptional results in various facets of fuel cell prediction [146,147,148]. Techniques like merging convolutional neural networks (CNNs) with random forest feature selection and spatiotemporal vision-based deep neural networks with 3D inception LSTM have shown significant advances in fuel cell vehicle speed predictions [145,149]. LSTMs, especially when combined with techniques like electrochemical impedance spectroscopy and Savitzky Golay filters, have displayed superiority in forecasting fuel cell degradation and performance [150,151,152].
  • Failure diagnosis. Proton exchange membrane (PEM) fuel cells are garnering attention due to their potential in sectors like fuel cell vehicles [153,154]. However, the complexity of PEM fuel cells and the variety of potential faults they can exhibit make their reliability and durability a concern, highlighting the significance of fault diagnosis. Various artificial intelligence (AI) techniques have been developed to address these challenges. Fuzzy logic has been instrumental in diagnosing common PEM fuel cell issues such as flooding and dehydration [154]. Another method merges a probabilistic neural network with a differential evolution algorithm designed for impedance identification [155]. Siamese artificial neural networks, tailored to PEM fuel cells, distinguish features from impedance spectra [156]. Additionally, support vector machines combined with binary trees have been utilized to hasten fault categorization [153], and a novel deep learning approach marries a backpropagation neural network with an inception-based convolutional network, targeting fault identification in fuel cell tram systems [157]. In recent advancements, long short-term memory (LSTM) networks, acclaimed for processing time series data, have been pivotal for diagnosing issues like flooding in vehicle-based systems [158]. This proficiency was augmented by integrating LSTM networks with empirical mode decomposition (EMD), achieving high levels of fault classification accuracy [159]. Other approaches include using ensembles of neural network models [160].
  • Optimizing the micro-structure design [161,162]. The intricate dynamics of fuel cells, governed by numerous factors, emphasize the essential nature of their design. One of the primary design challenges revolves around the cathode, where tweaking channel structures, such as integrating blocks in the cathode flow fields, can enhance oxygen delivery to the catalyst layer, subsequently optimizing fuel cell efficiency [163]. Solid oxide fuel cells come with challenges driven by inherent nonlinearities, delays in operation, and unique operational boundaries [164]. Innovatively, designs inspired by natural patterns, like the wave-like structures reminiscent of cuttlefish fins, exhibit promising performance enhancement advancements [162]. Artificial intelligence (AI) is a formidable ally when navigating this intricate landscape. For instance, genetic algorithms have proven instrumental in refining fuel cell channel designs [162] and conceptualizing bio-inspired structures [162]. In fuel cell electric vehicles, AI, armed with advanced optimization techniques such as the elephant herding optimization algorithm, has made noteworthy progress [165]. This showcases AI’s vast potential in conceptualizing sophisticated hybrid systems [166]. Extending its role further, AI employs innovative algorithms like the modified NSGA II to fine-tune aerodynamic attributes of fuel cell parts for peak performance [167]. Augmenting this, the fusion of machine learning and traditional techniques, especially in solid oxide fuel cell systems, signifies a transformative pathway to a greener and more efficient energy horizon [168].

5.1.4. Hydrogen

Clean renewable hydrogen (produced from different domestic resources) is used in energy storage, energy generation, fuel mixtures, and industrial processes. In this context, AI techniques have been used for several purposes:
  • Managing islanded energy systems (with clean, renewable energy sources) that use hydrogen to store energy. García et al. [169] and Zahedi and Ardehali [170] investigated the use of fuzzy control systems to satisfy the energy demand in these systems. Chen et al. [171] used a predictive control model for the optimal dispatch of a system composed of a wind farm, a hydrogen/oxygen storage system, and several fuel cells.
  • Modelling and forecasting hydrogen production. Nasr et al. [172] used models of artificial neural networks to estimate the hydrogen production profile based on biomass and considering variables such as temperature, time, and pH. Ozbas et al. [173] used different machine learning algorithms to predict hydrogen production based on biomass gasification. Nasrudin et al. [174] investigated the effect of different algorithms (used to train neural networks) on the accuracy of the models in terms of their hydrogen and biochar production predictions.
  • Analyzing the behavior of fuel cells. Bicer, Dincer, and Aydin [175] developed a model that represents the behavior of a fuel cell connected to a smart cell, which is used to forecast the parameters of the actual cell.
This cluster includes other studies on synthesizing gas (or syngas) production. Similar to the case of hydrogen, the most relevant research in this area is about predicting syngas production [176], simulating the syngas production process [177], and predicting syngas composition (Shenbagaraj et al. [178] and Li et al. [179] used artificial neural networks for this purpose).

5.1.5. Electric Vehicles

The search for sustainable, low-carbon footprint transportation has found a promising solution in plug-in hybrid and all-electric vehicles due to their low fuel consumption and reduced emissions [180]. Nevertheless, their use and operation inside electricity generation and transmission systems pose important challenges:
  • Developing and operating a power supply infrastructure for EVs. Optimizing the charging state of EVs is a complex nonlinear problem because it should consider network conditions, charging time, and battery capacity [180], as well as the intermittent and disorganized nature of the demand [181]. In this case, the goals are to minimize the total operating cost of the vehicle, which is the sum of the fuel and electricity costs [182], provide optimal scheduling [181], and establish the optimal location and size of renewable energy sources and charging stations [183,184,185,186]. In general, these goals have been addressed using adaptations of heuristic algorithms, such as particle swarms [180,181,182] and artificial immune algorithms [187]. Additionally, some studies have used PSO algorithms to determine the charging and discharging patterns of systems that integrate (simultaneously) charging stations for EVs, solar PV micro-generation, and energy storage batteries. Intelligent agents have been used for this purpose as well [188].
  • Estimating and forecasting different characteristics of batteries—such as their optimal parameters [180], charging state, remaining service life, or degradation—under multiple temperature and voltage conditions to maximize their service life [189,190,191,192,193,194,195]. Different types of neural networks have been used for this purpose: RBF networks [196,197], SVMs [198,199,200], Elman networks [201], and time-delay neural networks [202]. Recently, deep learning techniques have also been applied to this end, e.g., LSTM networks [203,204,205,206,207], GRU networks [208], ensembles [209], and autoencoders [210].
  • Optimizing EV operation. To improve fuel consumption, Qu et al. [211] used reinforcement learning to minimize automatic plug-in EVs’ start and stop cycles.
  • Managing the power in the electric system and electricity storage cells of EVs. This challenge has been addressed using metaheuristic techniques [212] and fuzzy logic.

5.1.6. Biofuels

Several studies have applied AI techniques to biodiesel, an organic, renewable synthetic fuel obtained from vegetal oils and animal fat. Biodiesel can be used in internal combustion engines to replace the fuel obtained from petroleum. The following are some of the main problems in this field that have been addressed using AI:
  • Determining the optimal parameters for biofuel production. Multiple studies have compared neural networks with response surface methodology for modeling and optimizing biofuel production under different conditions [213,214,215,216]. Other articles have compared fuzzy logic models [217], neuro-fuzzy interference models, and response surface methodology [218].
  • Estimating the cetane number of biodiesel as an indicator of its quality. Piloto-Rodríguez et al. [219,220] concluded that, for this purpose, neural networks were more accurate than linear regression. Miraboutalebi, Kazemi, and Bahrami [221] compared neural networks and random forests.
  • Modeling and optimizing biodiesel engines. Wong et al. [222] used cuckoo search and extreme learning machines (ELMs) to reduce emissions and fuel costs and improve engine performance.
  • Determining the performance of diesel engines when they use biodiesel [223,224].
  • Determining the amount of biodiesel in mixtures with diesel [225] or their components [226].
  • Forecasting biofuel properties [227]. Biodiesel’s importance as an environmentally friendly alternative to conventional fuels cannot be overstated. Its fatty acid composition profoundly influences its physicochemical attributes. These attributes, including kinematic viscosity, flash point, cloud point, pour point, and many more, profoundly determine its performance when used in engines [227]. Yet, predicting these properties from their fatty acid constituents remains a formidable challenge. In efforts to surmount this hurdle, advanced artificial intelligence methodologies have been leveraged. Gene expression programming (GEP) is one such technique. For example, it has been effectively employed in modeling the performance and emission characteristics of engines running on biodiesel blends like linseed oil methyl ester [228]. Compared to traditional multiple linear regression (MLR) approaches, GEP offers superior accuracy in predicting biodiesel properties [227]. Furthermore, artificial neural networks (ANNs) and their hybrids, like the adaptive neuro-fuzzy inference system (ANFIS) combined with genetic algorithms (GA), have shown promising results in predicting biodiesel engine characteristics [229].

5.1.7. Wind Power

In the last decade, wind farms have been integrated into interconnected electricity generation systems and global electricity markets [230]. In this subfield, AI has been mainly used for:
  • Wind speed forecasting. Accurate wind speed forecasting is essential for managing wind systems regarding safety, stability, and quality [231]. Nevertheless, this task is hard due to turbine operation [232] and the effect of weather conditions [230]. It is even more complex because wind series present wide fluctuations, autocorrelation, and stochastic volatility [191]. Therefore, efforts have been made to develop AI-based methodologies to forecast wind speeds. In many relevant studies, decomposition techniques have been used to extract significant information from wind data [233,234] and later feed that information to forecasting models. Other studies have combined traditional time series model forecasts with machine learning techniques such as ELMs and SVMs [2]. Different kinds of SVMs, Elman neural networks [235], neuro-fuzzy systems, and ELMs have been used to forecast wind speed as the output variable [230,234,236,237,238], or as part of systems that combine forecasts. For example, Wang and Hu [2] analyzed a combined forecast system that predicts wind speed in the short term. Their system combines individual forecasts obtained by an ARIMA model, ELMs, and two different types of SVM. In most articles reviewed here, the parameters of the SVMs were estimated using several techniques, including variants of the PSO algorithm [236,239], evolutionary algorithms [240], cuckoo search [241], and differential evolution [242].
  • Optimal selection and location of generators for wind farms. Most of the time, this problem has been solved using PSO [243,244,245], neural networks [246], and different evolutionary algorithms such as the firefly algorithm [247].
  • Maximum Power Point Tracking (MPPT). This type of tracking has been performed using fuzzy logic [248] and other AI techniques [249], which include PSO [250].
  • Power output forecasting. This challenge has been addressed using neural networks [251], neuro-fuzzy systems [252], and machine learning algorithms [253].
  • Failure diagnosis. This area has been investigated using ELMs [254] and SVMs [255,256].
  • Turbine angle control. Fuzzy logic has been implemented to investigate this topic [257,258,259].
  • Optimal dispatch. Usually, the goal is reducing CO2 emissions [260].
  • Locating capacitors in wind power systems [261].

5.1.8. Management, Planning, and Operation of Energy Systems

This cluster covers other energy system management, planning, and operation themes. The following are the main topics discussed in this cluster:
  • Integrating the energy consumption of buildings. As Naji et al. [262] claim, buildings’ electricity consumption represents a significant percentage of the total electricity consumption. Therefore, maximizing their energy efficiency is an essential task in terms of sustainability. Ferreira et al. [263] and Yu et al. [264] used a multi-objective genetic algorithm to minimize the energy consumption of buildings while maintaining thermal comfort for their occupants. Similarly, Yang et al. [265] employed nondominated sorting genetic algorithms to optimally locate renewable sources on the roofs of buildings at a university campus. Taking another approach to this problem, Naji et al. [262] implemented ELMs to optimize the building materials of construction projects to minimize their electricity demand.
  • Predicting energy consumption. T.-Y. Kim and Cho [100] implemented the CNN-LSTM model to capture the space and time characteristics of the time series of residential electricity consumption to produce better forecasts. Other authors have used SVMs to forecast the electricity consumption of buildings [266,267].
  • Forecasting demand response to save energy. Demand response has been simulated using intelligent agents [268]. Wen, O’Neill, and Maei [269] investigated using reinforcement learning to provide an optimal demand response.
  • Solving multi-objective problems. Heuristic optimization techniques, such as GAs, have been employed to solve multi-objective problems in combined heat and power systems commonly used in buildings [270]. In this case, the goal is to minimize the production costs while meeting heating and electricity requirements [271]. As in the case of multi-objective optimization of distributed generation, most of the time, these problems have been successfully solved using variants of GAs [270,271,272,273,274].

5.2. Current Dominant Themes

The analysis presented represents the dominant thematic areas over the past decade. However, this analysis does not necessarily reflect the most relevant topics currently. To uncover the currently relevant topics of interest, a co-occurrence analysis of keywords was conducted under the following parameters:
  • The analysis period was restricted to 2020, 2021, and 2022. For this period, there are 9494 documents with author keywords.
  • Keywords that appear in at least five documents were considered. Additionally, only keywords that appear twice as many times in the period 2020–2022 compared to the base period of 2013–2019 were considered. In other words, if a keyword appears 100 times in the base period, it must appear 200 times in the period 2020–2022 to be considered. This restriction ensures its novelty.
The obtained results reveal the following themes of interest.
  • The application of deep learning techniques, such as LSTM networks, convolutional networks, and recurrent networks, for time series forecasting in wind energy and electricity consumption.
  • The use of reinforcement learning techniques and Q-learning addresses various issues related to integrated energy systems, virtual power plants, and power regulation.
  • The use of various AI techniques in problems related to hydrogen, cells, and biochar.
  • The estimation of the state of charge, remaining useful life, and health status in lithium batteries.
  • The use of metaheuristics like Gray Wolf Optimization in power systems.

6. Conclusions, Limitations, and Future Work

6.1. Conclusions

This article analyzed the evolution of the most relevant themes in publications on AI applications for SE, which were represented using keyword clusters. The methodology adopted here employed text mining techniques, co-occurrence analysis, and clustering to determine the clusters of keywords that appeared together most often. In addition, it implemented a novel technique to construct the search string, which can be helpful in exploring the literature in various fields of knowledge. Data cleaning, homogenization, and text mining were used to transform the keywords, identify and cluster terms with the same meaning, and disambiguate them by analyzing the context where they appeared. Likewise, text analysis techniques and expert opinion were utilized to interpret each identified cluster.
This analysis established eight dominant themes in the literature about SE: (1) solar energy; (2) smart grids and microgrids; (3) fuel cells; (4) hydrogen; (5) electric vehicles; (6) biofuels; (7) wind power; and (8) management, planning, and operation of energy systems. The analysis also revealed eight AI techniques that have been predominantly used to solve SE problems: (1) genetic algorithms, (2) support vector machines, (3) particle swarm optimization, (4) differential evolution, (5) backpropagation neural networks, (6) fuzzy logic controllers, (7) reinforcement learning, and (8) deep learning.
It was found that although some AI techniques (e.g., SVMs, genetic algorithms, and PSO) are widely used for multiple SE topics, not all techniques are suitable to solve all the major problems in SE. A vast collection of AI tools has been used in some SE subfields (e.g., solar energy or electric vehicles). In contrast, research has focused on a single AI tool in some others (e.g., fuel cells or hydrogen).
The results presented the evolution of international authors’ interests in different AI and SE topics over the period examined here. In addition, a thematic evolution can be observed regarding the popularization of different AI techniques and advances in SE. This analysis determined the most important SE clusters in recent years (2020–2021): (1) energy consumption, (2) smart grids, (3) wind turbines, (4) solar irradiance, and (5) wind power. It also revealed the most commonly used AI techniques in the same subperiod: (1) swarm optimization, (2) genetic algorithms, (3) long short-term memory, (4) support vector machines, (5) back propagation, (6) neural networks, and (7) differential evolution algorithms.

6.2. Limitations

There are several limitations to this study. First, there may be new dominant areas emerging today. As of this document’s review date, more than 3900 documents have already been published for the year 2023. Given the high volume of new documents, reviewing the progress made during this year is important. On the other hand, only Scopus has been considered as the source of information. In this sense, including other documentary bases, such as Dimensions, could be interesting.
Another aspect concerns the kind of keywords chosen and their refinement process. In this study, only the author’s keywords were considered. However, it is essential to investigate whether adding or using index keywords or nominal phrases extracted from the document titles and abstracts could help identify other issues or methodologies that the field’s community should consider.
Other limitations are related to the use of a co-word analysis. This technique is based on the principle that the co-occurrence of two terms in a set of documents reflects a meaningful relationship. However, co-occurrence does not always mean a substantive or causal relationship. Additionally, the strength of connections based on frequency might overlook less frequent but significant relationships. Other techniques, such as document classification, topic modeling, or emergency indicators, could provide new insights.

6.3. Future Work

Looking back at the work, we can identify several potential directions for future research:
  • Crafting specialized techniques to automate the cleanup of keywords and noun phrases extracted from documents. This facet is vital for any subsequent analysis.
  • Formulating or employing methodologies that identify the emergence of new themes and convergence in methodological approaches.
  • It is essential to contrast outcomes between various methodologies that depict the field’s progression, such as topic modeling or document classification.
  • Detailed examination of the primary dominant areas discovered.

Author Contributions

Conceptualization, J.D.V., L.C. and C.J.F.; methodology, J.D.V., L.C. and C.J.F.; software, J.D.V.; validation, L.C., and C.J.F.; formal analysis, J.D.V., L.C. and C.J.F.; investigation, J.D.V., L.C. and C.J.F.; data curation, J.D.V.; writing—original draft preparation, J.D.V.; writing—review and editing, L.C. and C.J.F.; visualization, J.D.V.; supervision, C.J.F. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

All raw data are available in the repo https://github.com/jdvelasq/tm2-reviews-about-ai-in-sustaibable-energy (accessed on 1 September 2023).

Acknowledgments

We express our gratitude to the peer reviewers for their valuable feedback, and would like to acknowledge the support from the Universidad Nacional de Colombia.

Conflicts of Interest

The authors declare no conflict of interest.

Abbreviations

APPL ENERGYApplied Energy
APPL SCIApplied Sciences (Switzerland)
APPL SOFT COMPUT JApplied Soft Computing Journal
ENERGIESEnergies
ENERGYEnergy
ENERGY CONVERS MANAGEEnergy Conversion and Management
ENERGY REPEnergy Reports
ENERGY BUILDEnergy and Buildings
IEEE ACCESSIEEE Access
IEEE POWER ENERGY SOC GEN MEEIEEE Power and Energy Society General Meeting
IEEE TRANS IND ELECTRONIEEE Transactions on Industrial Electronics
IEEE TRANS IND INFIEEE Transactions on Industrial Informatics
IEEE TRANS SMART GRIDIEEE Transactions on Smart Grid
IEEE TRANS SUSTAINABLE ENERGYIEEE Transactions on Sustainable Energy
IOP CONF SER EARTH ENVIRON SCIOP Conference Series: Earth and Environmental Science
INT J ELECTR POWER ENERGY SYSInternational Journal of Electrical Power and Energy Systems
INT J ENERGY RESInternational Journal of Energy Research
INT J HYDROGEN ENERGYInternational Journal of Hydrogen Energy
J CLEAN PRODJournal of Cleaner Production
J ENERGY STORAGEJournal of Energy Storage
J MATER CHEM AJournal of Materials Chemistry A
J PHYS CONF SERJournal of Physics: Conference Series
J POWER SOURCESJournal of Power Sources
J RENEWABLE SUSTAINABLE ENERGJournal of Renewable and Sustainable Energy
RENEW ENERGYRenewable Energy
SOL ENERGYSolar Energy

Appendix A

The subsequent text represents the search string employed for document retrieval.
(
TITLE( {adabost} OR {adaptive fuzzy control} OR {adaptive learning} OR {adaptive system} OR {adaptive systems} OR {adversarial learning} OR {adversarial machine learning} OR {adversarial training} OR {ant colony optimization} OR {artificial bee colony} OR {artificial bee colony algorithm} OR {artificial intelligence} OR {artificial neural network} OR {artificial neural networks} OR {associative memory} OR {autoencoder} OR {autoencoders} OR {automl} OR {bat algorithm} OR {bayesian network} OR {bayesian networks} OR {bayesian neural networks} OR {big data analytics} OR {boosting} OR {bp neural network} )
) OR (
TITLE( {cellular automata} OR {cellular neural networks} OR {collaborative filtering} OR {collaborative learning} OR {computational intelligence} OR {convolution neural network} OR {convolutional neural network} OR {convolutional neural networks} OR {data mining} OR {deep belief network} OR {deep belief networks} OR {deep convolutional network} OR {deep convolutional neural networks} OR {deep generative models} OR {deep learning} OR {deep learning method} OR {deep learning methods} OR {deep neural network} OR {deep neural networks} OR {deep reinforcement learning} OR {differential evolution} OR {differential evolution algorithm} OR {distributed learning} OR {encoder-decoder} OR {ensemble classifier} )
) OR (
TITLE( {ensemble learning} OR {ensemble methods} OR {evolutionary algorithm} OR {evolutionary algorithms} OR {evolutionary computation} OR {evolutionary computing} OR {expert system} OR {expert systems} OR {explainable ai} OR {explainable artificial intelligence} OR {extreme gradient boosting} OR {extreme learning machine} OR {extreme learning machines} OR {feature learning} OR {firefly algorithm} OR {fully convolutional network} OR {fully convolutional networks} OR {fuzzy c-means} OR {fuzzy clustering} OR {fuzzy inference system} OR {fuzzy logic} OR {fuzzy logic controller} OR {fuzzy logic systems} OR {fuzzy neural network} OR {fuzzy neural networks} )
) OR (
TITLE( {fuzzy rough set} OR {fuzzy set theory} OR {fuzzy system} OR {fuzzy systems} OR {generative adversarial network} OR {generative adversarial networks} OR {genetic algorithm} OR {genetic algorithms} OR {genetic programming} OR {graph convolutional network} OR {graph convolutional networks} OR {graph learning} OR {graph mining} OR {graph neural network} OR {graph neural networks} OR {gravitational search algorithm} OR {heuristic algorithm} OR {heuristic algorithms} OR {imitation learning} OR {inertial neural networks} OR {intelligent agents} OR {intelligent system} OR {intelligent systems} OR {k-means} OR {k-means clustering} )
) OR (
TITLE( {k-nearest neighbor} OR {k-nearest neighbors} OR {knowledge-based system} OR {latent dirichlet allocation} OR {learning system} OR {learning systems} OR {long short term memory} OR {long short-term memory} OR {long short-term memory network} OR {lstm} OR {machine learning} OR {machine learning algorithms} OR {machine translation} OR {machine-learning} OR {memetic algorithm} OR {memristive neural networks} OR {memristor-based neural networks} OR {meta learning} OR {meta-heuristic} OR {meta-heuristic algorithm} OR {meta-heuristics} OR {meta-learning} OR {metaheuristic} OR {metaheuristic algorithm} OR {metaheuristic algorithms} )
) OR (
TITLE( {metaheuristics} OR {metalearning} OR {metric learning} OR {multi-agent reinforcement learning} OR {multi-agent system} OR {multi-agent systems} OR {multiagent system} OR {multiagent systems} OR {multilayer perceptron} OR {natural language generation} OR {natural language processing} OR {neural architecture search} OR {neural machine translation} OR {neural network} OR {neural networks} OR {nsga-ii} OR {particle size distribution} OR {particle swarm optimization} OR {pattern mining} OR {q-learning} OR {recommendation system} OR {recommendation systems} OR {recommender system} OR {recommender systems} OR {recurrent neural network} )
) OR (
TITLE( {recurrent neural networks} OR {reinforcement learning} OR {representation learning} OR {restricted boltzmann machine} OR {restricted boltzmann machines} OR {ridge regression} OR {rough set} OR {rough sets} OR {self-organizing map} OR {self-organizing maps} OR {self-supervised learning} OR {semi-supervised learning} OR {semisupervised learning} OR {social robotics} OR {spiking neural network} OR {statistical learning} OR {supervised learning} OR {support vector machine} OR {support vector machines} OR {support vector regression} OR {swarm intelligence} OR {t-s fuzzy model} OR {t-s fuzzy systems} OR {tabu search} OR {takagi-sugeno model} )
) OR (
TITLE( {text classification} OR {text mining} OR {transfer learning} OR {twin support vector machine} OR {unsupervised learning} OR {variational autoencoder} )
)
AND
(
TITLE( {alkaline fuel cell} OR {all-solid-state batteries} OR {all-solid-state battery} OR {alternative energy source} OR {alternative energy sources} OR {batteries} OR {battery} OR {battery energy storage} OR {battery energy storage system} OR {battery energy storage systems} OR {battery management system} OR {battery storage} OR {bio-char} OR {bio-ethanol} OR {bio-hydrogen} OR {bio-oil} OR {biochar} OR {biodiesel} OR {biodiesel production} OR {bioeconomy} OR {bioelectricity} OR {bioenergy} OR {bioethanol} OR {bioethanol production} OR {biofuel} )
) OR (
TITLE( {biofuels} OR {biogas} OR {biogas production} OR {biohydrogen} OR {biological hydrogen production} OR {biomass energy} OR {biomass gasification} OR {biorefinery} OR {bipv} OR {carbon capture} OR {carbon capture and storage} OR {carbon sequestration} OR {circular bioeconomy} OR {clean energy} OR {co 2 capture} OR {co 2 reduction} OR {co 2 reductions} OR {co-2 reduction} OR {co-2 reductions} OR {co2 capture} OR {co2 reduction} OR {co2 reductions} OR {co2 sequestration} OR {co2capture} OR {co2reduction} )
) OR (
TITLE( {cogeneration} OR {combined heat and power} OR {community energy} OR {compressed air energy storage} OR {concentrated solar energy} OR {concentrated solar power} OR {concentrating solar power} OR {decarbonization} OR {demand response} OR {demand side management} OR {demand-side management} OR {direct borohydride fuel cell} OR {direct carbon fuel cell} OR {direct ethanol fuel celldirect methanol fuel cell} OR {direct methanol fuel cells} OR {distributed energy resources} OR {distributed generation} OR {distributed power generation} OR {dye sensitized solar cell} OR {dye sensitized solar cells} OR {dye-sensitized solar cell} OR {dye-sensitized solar cells} OR {electric vehicle} OR {electric vehicles} OR {electrical efficiency} )
) OR (
TITLE( {electrification} OR {electrolysis} OR {electrolyzer} OR {energy access} OR {energy conservation} OR {energy consumption} OR {energy conversion} OR {energy conversion efficiency} OR {energy crop} OR {energy crops} OR {energy density} OR {energy efficiency} OR {energy from biomass} OR {energy harvesting} OR {energy intensity} OR {energy justice} OR {energy management} OR {energy management strategy} OR {energy management system} OR {energy management systems} OR {energy performance} OR {energy poverty} OR {energy recovery} OR {energy saving} OR {energy savings} )
) OR (
TITLE( {energy security} OR {energy storage} OR {energy storage system} OR {energy storage systems} OR {energy transition} OR {energy transitions} OR {enhanced geothermal system} OR {enhanced geothermal systems} OR {environmental sustainability} OR {ethanol} OR {ethanol production} OR {feed-in tariff} OR {fuel cell} OR {fuel cells} OR {gasification} OR {geothermal energy} OR {global solar radiation} OR {green energy} OR {green hydrogen} OR {homer} OR {horizontal axis wind turbine} OR {hybrid electric vehicle} OR {hybrid electric vehicles} OR {hybrid energy storage system} OR {hybrid energy storage systems} )
) OR (
TITLE( {hybrid energy system} OR {hybrid energy systems} OR {hybrid power system} OR {hybrid renewable energy system} OR {hybrid renewable energy systems} OR {hydrogen evolution reaction} OR {hydrogen storage} OR {hydropower} OR {integrated energy system} OR {inverted polymer solar cells} OR {lcoe} OR {levelized cost of electricity} OR {levelized cost of energy} OR {li metal batteries} OR {li metal battery} OR {li-air battery} OR {li-ion batteries} OR {li-ion battery} OR {li-ion cell} OR {li-metal batteries} OR {li-metal battery} OR {li-s batteries} OR {li-s battery} OR {liquid air energy storage} OR {lithium batteries} )
) OR (
TITLE( {lithium battery} OR {lithium ion batteries} OR {lithium ion battery} OR {lithium metal batteries} OR {lithium metal battery} OR {lithium sulfur batteries} OR {lithium sulfur battery} OR {lithium-air batteries} OR {lithium-air battery} OR {lithium-ion batteries} OR {lithium-ion battery} OR {lithium-metal batteries} OR {lithium-metal battery} OR {lithium-sulfur batteries} OR {lithium-sulfur battery} OR {lithium–sulfur batteries} OR {lithium–sulfur battery} OR {marine renewable energy} OR {maximum power point tracking} OR {micro grid} OR {micro grids} OR {micro-gridmicro-grid} OR {micro-gridsmicrobial electrolysis cell} OR {microbial electrolysis cells} OR {microbial fuel cell} )
) OR (
TITLE( {microbial fuel cells} OR {microgrid} OR {microgrids} OR {molten carbonate fuel cell} OR {na-ion batteries} OR {na-ion battery} OR {ocean energy} OR {off-grid} OR {offshore wind} OR {offshore wind energy} OR {offshore wind farm} OR {offshore wind turbine} OR {organic photovoltaic} OR {organic photovoltaics} OR {organic solar cell} OR {organic solar cells} OR {oxygen evolution reaction} OR {oxygen reduction reaction} OR {peak shaving} OR {pem fuel cell} OR {pem fuel cells} OR {perovskite solar cell} OR {perovskite solar cells} OR {photovoltaic} OR {photovoltaic cell} )
) OR (
TITLE( {photovoltaic cells} OR {photovoltaic devices} OR {photovoltaic energy} OR {photovoltaic module} OR {photovoltaic panel} OR {photovoltaic performance} OR {photovoltaic system} OR {photovoltaic systems} OR {photovoltaics} OR {plug-in hybrid electric vehicles} OR {polymer electrolyte fuel cell} OR {polymer electrolyte membrane fuel cell} OR {polymer electrolyte membrane fuel cells} OR {polymer solar cell} OR {polymer solar cells} OR {potassium ion batteries} OR {potassium ion battery} OR {potassium-ion batteries} OR {potassium-ion battery} OR {power conversion efficiency} OR {power density} OR {power to gas} OR {power-to-gas} OR {proton exchange membrane fuel cell} OR {proton exchange membrane fuel cells} )
) OR (
TITLE( {pv} OR {pv module} OR {pv system} OR {pv systems} OR {redox flow batteries} OR {redox flow battery} OR {renewable electricity} OR {renewable energies} OR {renewable energy} OR {renewable energy consumption} OR {renewable energy policy} OR {renewable energy resource} OR {renewable energy resources} OR {renewable energy source} OR {renewable energy sources} OR {renewable resources} OR {rural electrification} OR {silicon solar cell} OR {silicon solar cells} OR {smart grid} OR {smart grids} OR {smart-grid} OR {smart-grids} OR {smartgrid} OR {smartgrids} )
) OR (
TITLE( {sodium ion batteries} OR {sodium ion battery} OR {sodium-ion batteries} OR {sodium-ion battery} OR {solar air heater} OR {solar cell} OR {solar cells} OR {solar collector} OR {solar collectors} OR {solar cooling} OR {solar energy} OR {solar forecasting} OR {solar hydrogen} OR {solar irradiance} OR {solar irradiation} OR {solar photovoltaic} OR {solar photovoltaics} OR {solar pond} OR {solar power} OR {solar pv} OR {solar radiation} OR {solar thermal} OR {solar thermal energy} OR {solar water heater} OR {solid oxide electrolysis cells} )
) OR (
TITLE( {solid oxide fuel cell} OR {solid oxide fuel cells} OR {solid state batteries} OR {solid state battery} OR {solid-state batteries} OR {solid-state battery} OR {sustainability assessment} OR {sustainability transition} OR {sustainability transitions} OR {sustainable development goals} OR {sustainable energy} OR {syngas} OR {thermal efficiency} OR {thermal energy storage} OR {thermal storage} OR {thermochemical energy storage} OR {thin film solar cell} OR {thin film solar cells} OR {vanadium redox flow batteries} OR {vanadium redox flow battery} OR {variable renewable energy} OR {vehicle-to-grid} OR {vertical axis wind turbine} OR {virtual power plant} OR {waste heat recovery} )
) OR (
TITLE( {waste to energy} OR {waste-to-energy} OR {water electrolysis} OR {water splitting} OR {wave energy} OR {wave energy converter} OR {wave energy converters} OR {wave power} OR {wind energy} OR {wind farm} OR {wind farms} OR {wind power} OR {wind power forecasting} OR {wind power generation} OR {wind power prediction} OR {wind resource assessment} OR {wind speed forecasting} OR {wind speed prediction} OR {wind turbine} OR {wind turbine blade} OR {wind turbines} OR {woody biomass} OR {zn air batteries} OR {zn air battery} OR {zn-air batteries} )
) OR (
TITLE( {zn-air battery} )
)
AND
(LIMIT-TO ( LANGUAGE,”English” ) )

References

  1. Tshivhase, N.; Hasan, A.N.; Shongwe, T. Proposed fuzzy logic system for voltage regulation and power factor improvement in power systems with high infiltration of distributed generation. Energies 2020, 13, 4241. [Google Scholar] [CrossRef]
  2. Wang, J.; Hu, J. A robust combination approach for short-term wind speed forecasting and analysis—Combination of the ARIMA (Autoregressive Integrated Moving Average), ELM (Extreme Learning Machine), SVM (Support Vector Machine) and LSSVM (Least Square SVM) forecasts using a GPR (Gaussian Process Regression) model. Energy 2015, 93, 41–56. [Google Scholar] [CrossRef]
  3. Di Vaio, A.; Palladino, R.; Hassan, R.; Escobar, O. Artificial intelligence and business models in the sustainable development goals perspective: A systematic literature review. J. Bus. Res. 2020, 121, 283–314. [Google Scholar] [CrossRef]
  4. Zhou, C.; Tang, B.; Cui, W.; Yao, Z. Short-term power forecast of wind power generation based on genetic algorithm optimized neural network. J. Phys. Conf. Ser. 2020, 1601, 022046. [Google Scholar] [CrossRef]
  5. Bahmani-Firouzi, B.; Farjah, E.; Azizipanah-Abarghooee, R. An efficient scenario-based and fuzzy self-adaptive learning particle swarm optimization approach for dynamic economic emission dispatch considering load and wind power uncertainties. Energy 2013, 50, 232–244. [Google Scholar] [CrossRef]
  6. Quan, H.; Srinivasan, D.; Khosravi, A. Short-term load and wind power forecasting using neural network-based prediction intervals. IEEE Trans. Neural Netw. Learn. Syst. 2014, 25, 303–315. [Google Scholar] [CrossRef]
  7. Kheirandish, A.; Shafiabady, N.; Dahari, M.; Kazemi, M.S.; Isa, D. Modeling of commercial proton exchange membrane fuel cell using support vector machine. Int. J. Hydrog. Energy 2016, 41, 11351–11358. [Google Scholar] [CrossRef]
  8. Jha, S.K.; Bilalovic, J.; Jha, A.; Patel, N.; Zhang, H. Renewable energy: Present research and future scope of Artificial Intelligence. Renew. Sustain. Energy Rev. 2017, 77, 297–317. [Google Scholar] [CrossRef]
  9. Seyedmahmoudian, M.; Horan, B.; Soon, T.K.; Rahmani, R.; Than Oo, A.M.; Mekhilef, S.; Stojcevski, A. State of the art artificial intelligence-based MPPT techniques for mitigating partial shading effects on PV systems—A review. Renew. Sustain. Energy Rev. 2016, 64, 435–455. [Google Scholar] [CrossRef]
  10. Wang, H.; Liu, Y.; Zhou, B.; Li, C.; Cao, G.; Voropai, N.; Barakhtenko, E. Taxonomy research of artificial intelligence for deterministic solar power forecasting. Energy Convers. Manag. 2020, 214, 112909. [Google Scholar] [CrossRef]
  11. Wang, S.; Ren, P.; Takyi-Aninakwa, P.; Jin, S.; Fernandez, C. A Critical Review of Improved Deep Convolutional Neural Network for Multi-Timescale State Prediction of Lithium-Ion Batteries. Energies 2022, 15, 5053. [Google Scholar] [CrossRef]
  12. Zhao, E.; Sun, S.; Wang, S. New developments in wind energy forecasting with artificial intelligence and big data: A scientometric insight. Data Sci. Manag. 2022, 5, 84–95. [Google Scholar] [CrossRef]
  13. Zhang, L.; Ling, J.; Lin, M. Artificial intelligence in renewable energy: A comprehensive bibliometric analysis. Energy Rep. 2022, 8, 14072–14088. [Google Scholar] [CrossRef]
  14. Vinuesa, R.; Azizpour, H.; Leite, I.; Balaam, M.; Dignum, V.; Domisch, S.; Felländer, A.; Langhans, S.D.; Tegmark, M.; Fuso Nerini, F. The role of artificial intelligence in achieving the Sustainable Development Goals. Nat. Commun. 2020, 11, 1–10. [Google Scholar] [CrossRef] [PubMed]
  15. Voyant, C.; Notton, G.; Kalogirou, S.; Nivet, M.-L.; Paoli, C.; Motte, F.; Fouilloy, A. Machine learning methods for solar radiation forecasting: A review. Renew. Energy 2017, 105, 569–582. [Google Scholar] [CrossRef]
  16. Stetco, A.; Dinmohammadi, F.; Zhao, X.; Robu, V.; Flynn, D.; Barnes, M.; Keane, J.; Nenadic, G. Machine learning methods for wind turbine condition monitoring: A review. Renew. Energy 2019, 133, 620–635. [Google Scholar] [CrossRef]
  17. Vázquez-Canteli, J.R.; Nagy, Z. Reinforcement learning for demand response: A review of algorithms and modeling techniques. Appl. Energy 2019, 235, 1072–1089. [Google Scholar] [CrossRef]
  18. Wang, H.; Lei, Z.; Zhang, X.; Zhou, B.; Peng, J. A review of deep learning for renewable energy forecasting. Energy Convers. Manag. 2019, 198, 111799. [Google Scholar] [CrossRef]
  19. Raza, M.Q.; Khosravi, A. A review on artificial intelligence based load demand forecasting techniques for smart grid and buildings. Renew. Sustain. Energy Rev. 2015, 50, 1352–1372. [Google Scholar] [CrossRef]
  20. Yadav, A.K.; Chandel, S.S. Solar radiation prediction using Artificial Neural Network techniques: A review. Renew. Sustain. Energy Rev. 2014, 33, 772–781. [Google Scholar] [CrossRef]
  21. Suganthi, L.; Iniyan, S.; Samuel, A.A. Applications of fuzzy logic in renewable energy systems—A review. Renew. Sustain. Energy Rev. 2015, 48, 585–607. [Google Scholar] [CrossRef]
  22. Elsheikh, A.H.; Sharshir, S.W.; Abd Elaziz, M.; Kabeel, A.E.; Guilan, W.; Haiou, Z. Modeling of solar energy systems using artificial neural network: A comprehensive review. Sol. Energy 2019, 180, 622–639. [Google Scholar] [CrossRef]
  23. Yarlagadda, V.; Carpenter, M.K.; Moylan, T.E.; Kukreja, R.S.; Koestner, R.; Gu, W.; Thompson, L.; Kongkanand, A. Boosting Fuel Cell Performance with Accessible Carbon Mesopores. ACS Energy Lett. 2018, 3, 618–621. [Google Scholar] [CrossRef]
  24. Hossain, E.; Khan, I.; Un-Noor, F.; Sikander, S.S.; Sunny, M.S.H. Application of Big Data and Machine Learning in Smart Grid, and Associated Security Concerns: A Review. IEEE Access 2019, 7, 13960–13988. [Google Scholar] [CrossRef]
  25. Seyedzadeh, S.; Rahimian, F.P.; Glesk, I.; Roper, M. Machine learning for estimation of building energy consumption and performance: A review. Vis. Eng. 2018, 6, 5. [Google Scholar] [CrossRef]
  26. Ahmad, T.; Zhang, D.; Huang, C.; Zhang, H.; Dai, N.; Song, Y.; Chen, H. Artificial intelligence in sustainable energy industry: Status Quo, challenges and opportunities. J. Clean. Prod. 2021, 289, 125834. [Google Scholar] [CrossRef]
  27. Betiku, E.; Okunsolawo, S.S.; Ajala, S.O.; Odedele, O.S. Performance evaluation of artificial neural network coupled with generic algorithm and response surface methodology in modeling and optimization of biodiesel production process parameters from shea tree (Vitellaria paradoxa) nut butter. Renew. Energy 2015, 76, 408–417. [Google Scholar] [CrossRef]
  28. Bermejo, J.F.; Fernández, J.F.G.; Polo, F.O.; Márquez, A.C. A review of the use of artificial neural network models for energy and reliability prediction. A study of the solar PV, hydraulic and wind energy sources. Appl. Sci. 2019, 9, 1844. [Google Scholar] [CrossRef]
  29. Aghbashlo, M.; Peng, W.; Tabatabaei, M.; Kalogirou, S.A.; Soltanian, S.; Hosseinzadeh-Bandbafha, H.; Mahian, O.; Lam, S.S. Machine learning technology in biodiesel research: A review. Prog. Energy Combust. Sci. 2021, 85, 100904. [Google Scholar] [CrossRef]
  30. Sharma, P.; Said, Z.; Kumar, A.; Nižetić, S.; Pandey, A.; Hoang, A.T.; Huang, Z.; Afzal, A.; Li, C.; Le, A.T.; et al. Recent Advances in Machine Learning Research for Nanofluid-Based Heat Transfer in Renewable Energy System. Energy Fuels 2022, 36, 6626–6658. [Google Scholar] [CrossRef]
  31. Hosseini, S.; Sarder, M.D. Development of a Bayesian network model for optimal site selection of electric vehicle charging station. Int. J. Electr. Power Energy Syst. 2019, 105, 110–122. [Google Scholar] [CrossRef]
  32. Laghari, J.A.; Mokhlis, H.; Karimi, M.; Bakar, A.H.A.; Mohamad, H. Computational Intelligence based techniques for islanding detection of distributed generation in distribution network: A review. Energy Convers. Manag. 2014, 88, 139–152. [Google Scholar] [CrossRef]
  33. Mao, J.; Miao, J.; Lu, Y.; Tong, Z. Machine learning of materials design and state prediction for lithium ion batteries. Chin. J. Chem. Eng. 2021, 37, 1–11. [Google Scholar] [CrossRef]
  34. Cui, Z.; Wang, L.; Li, Q.; Wang, K. A comprehensive review on the state of charge estimation for lithium-ion battery based on neural network. Int. J. Energy Res. 2022, 46, 5423–5440. [Google Scholar] [CrossRef]
  35. Sharma, P.; Bora, B.J. A Review of Modern Machine Learning Techniques in the Prediction of Remaining Useful Life of Lithium-Ion Batteries. Batteries 2022, 9, 13. [Google Scholar] [CrossRef]
  36. Zhang, Y.; Li, Y.-F. Prognostics and health management of Lithium-ion battery using deep learning methods: A review. Renew. Sustain. Energy Rev. 2022, 161, 112282. [Google Scholar] [CrossRef]
  37. Cui, Z.; Dai, J.; Sun, J.; Li, D.; Wang, L.; Wang, K. Hybrid Methods Using Neural Network and Kalman Filter for the State of Charge Estimation of Lithium-Ion Battery. Math. Probl. Eng. 2022, 2022, 9616124. [Google Scholar] [CrossRef]
  38. Ahmed, M.; Zheng, Y.; Amine, A.; Fathiannasab, H.; Chen, Z. The role of artificial intelligence in the mass adoption of electric vehicles. Joule 2021, 5, 2296–2322. [Google Scholar] [CrossRef]
  39. Ming, W.; Sun, P.; Zhang, Z.; Qiu, W.; Du, J.; Li, X.; Zhang, Y.; Zhang, G.; Liu, K.; Wang, Y.; et al. A systematic review of machine learning methods applied to fuel cells in performance evaluation, durability prediction, and application monitoring. Int. J. Hydrogen Energy 2023, 48, 5197–5228. [Google Scholar] [CrossRef]
  40. Wang, Y.; Seo, B.; Wang, B.; Zamel, N.; Jiao, K.; Adroher, X.C. Fundamentals, materials, and machine learning of polymer electrolyte membrane fuel cell technology. Energy AI 2020, 1, 100014. [Google Scholar] [CrossRef]
  41. Feng, Z.; Huang, J.; Jin, S.; Wang, G.; Chen, Y. Artificial intelligence-based multi-objective optimisation for proton exchange membrane fuel cell: A literature review. J. Power Sources 2022, 520, 230808. [Google Scholar] [CrossRef]
  42. Guo, H.; Wang, Q.; Stuke, A.; Urban, A.; Artrith, N. Accelerated Atomistic Modeling of Solid-State Battery Materials with Machine Learning. Front. Energy Res. 2021, 9, 695902. [Google Scholar] [CrossRef]
  43. Gao, T.; Lu, W. Machine learning toward advanced energy storage devices and systems. iScience 2021, 24, 101936. [Google Scholar] [CrossRef] [PubMed]
  44. Lv, C.; Zhou, X.; Zhong, L.; Yan, C.; Srinivasan, M.; Seh, Z.W.; Liu, C.; Pan, H.; Li, S.; Wen, Y.; et al. Machine Learning: An Advanced Platform for Materials Development and State Prediction in Lithium-Ion Batteries. Adv. Mater. 2022, 34, 2101474. [Google Scholar] [CrossRef]
  45. Scharf, J.; Chouchane, M.; Finegan, D.P.; Lu, B.; Redquest, C.; Kim, M.-C.; Yao, W.; Franco, A.A.; Gostovic, D.; Liu, Z.; et al. Bridging nano- and microscale X-ray tomography for battery research by leveraging artificial intelligence. Nat. Nanotechnol. 2022, 17, 446–459. [Google Scholar] [CrossRef]
  46. Nilsson, N. Application of computer artificial intelligence techniques to analyzing the status of typical utility electrical power plant systems. IEEE Trans. Energy Convers. 1989, 4, 1–8. [Google Scholar] [CrossRef]
  47. Li, S.; O’Hair, E.; Giesselmann, M.G.; Wunsch, D.C. Comparative analysis of regression and neural network models for wind power. Intell. Eng. Syst. Artif. Neural Netw. 1998, 1998, 675–681. [Google Scholar]
  48. Kalogirou, S.A. Artificial neural networks in renewable energy systems applications: A review. Renew. Sustain. Energy Rev. 2001, 5, 373–401. [Google Scholar] [CrossRef]
  49. Mellit, A.; Kalogirou, S.A. Artificial intelligence techniques for photovoltaic applications: A review. Prog. Energy Combust. Sci. 2008, 34, 574–632. [Google Scholar] [CrossRef]
  50. Mellit, A.; Kalogirou, S.A.; Hontoria, L.; Shaari, S. Artificial intelligence techniques for sizing photovoltaic systems: A review. Renew. Sustain. Energy Rev. 2009, 13, 406–419. [Google Scholar] [CrossRef]
  51. Porter, A.L.; Kongthon, A.; Lu, J.-C. Research profiling: Improving the literature review. Scientometrics 2002, 53, 351–370. [Google Scholar] [CrossRef]
  52. De Bellis, N. Bibliometrics and Citation Analysis: From the Science Citation Index to Cybermetrics; Scarecrow Press: Lanham, MD, USA, 2009. [Google Scholar]
  53. Porter, A.L.; Cunningham, S.W. Tech Mining: Exploiting New Technologies for Competitive Advantage; John Wiley & Sons: Hoboken, NJ, USA, 2004. [Google Scholar]
  54. Donthu, N.; Kumar, S.; Mukherjee, D.; Pandey, N.; Lim, W.M. How to conduct a bibliometric analysis: An overview and guidelines. J. Bus. Res. 2021, 133, 285–296. [Google Scholar] [CrossRef]
  55. Aria, M.; Cuccurullo, C. bibliometrix: An R-tool for comprehensive science mapping analysis. J. Informetr. 2017, 11, 959–975. [Google Scholar] [CrossRef]
  56. Porter, A.L.; Garner, J.; Carley, S.F.; Newman, N.C. Emergence scoring to identify frontier R&D topics and key players. Technol. Forecast. Soc. Change 2019, 146, 628–643. [Google Scholar]
  57. Zhao, X.; Pan, W. The characteristics and evolution of business model for green buildings: A bibliometric approach. Eng. Constr. Archit. Manag. 2022, 29, 4241–4266. [Google Scholar] [CrossRef]
  58. Chen, W.; Xiang, Y.; Peng, G.; Wang, S.; Guo, Y.; Liu, J. Co-word based energy policy analysis for power system evolution and investment. Energy Rep. 2022, 8, 167–174. [Google Scholar] [CrossRef]
  59. Page, M.J.; McKenzie, J.E.; Bossuyt, P.M.; Boutron, I.; Hoffmann, T.C.; Mulrow, C.D.; Shamseer, L.; Tetzlaff, J.M.; Akl, E.A.; Brennan, S.E.; et al. The PRISMA 2020 statement: An updated guideline for reporting systematic reviews. BMJ 2021, 372, n71. [Google Scholar] [CrossRef]
  60. Liu, Y.-H.; Huang, S.-C.; Huang, J.-W.; Liang, W.-C. A particle swarm optimization-based maximum power point tracking algorithm for PV systems operating under partially shaded conditions. IEEE Trans. Energy Convers. 2012, 27, 1027–1035. [Google Scholar] [CrossRef]
  61. Sridhar, R.; Vishnuram, P.; Bindu, D.H.; Divya, A. Ant Colony optimization based Maximum Power Point Tracking (MPPT) for Partially shaded standalone PV System. Int. J. Control Theory Appl. 2016, 9, 8125–8133. [Google Scholar]
  62. Ishaque, K.; Salam, Z.; Mekhilef, S.; Shamsudin, A. Parameter extraction of solar photovoltaic modules using penalty-based differential evolution. Appl. Energy 2012, 99, 297–308. [Google Scholar] [CrossRef]
  63. Ramasamy, S.; Jeevananthan, S.; Dash, S.S.; Selvan, T. An intelligent differential evolution based maximum power point tracking (MPPT) technique for partially shaded photo voltaic (PV) array. Int. J. Adv. Soft Comput. Its Appl. 2014, 6, 1–16. [Google Scholar]
  64. Lian, K.L.; Jhang, J.H.; Tian, I.S. A maximum power point tracking method based on perturb-and-observe combined with particle swarm optimization. IEEE J. Photovolt. 2014, 4, 626–633. [Google Scholar] [CrossRef]
  65. Farhat, M.; Barambones, O.; Sbita, L. Efficiency optimization of a DSP-based standalone PV system using a stable single input fuzzy logic controller. Renew. Sustain. Energy Rev. 2015, 49, 907–920. [Google Scholar] [CrossRef]
  66. El-Zoghby, H.M.; Bendary, A.F. A Novel Technique for Maximum Power Point Tracking of a Photovoltaic Based on Sensing of Array Current Using Adaptive Neuro-Fuzzy Inference System (ANFIS). Int. J. Emerg. Electr. Power Syst. 2016, 17, 547–554. [Google Scholar] [CrossRef]
  67. Titri, S.; Larbes, C.; Toumi, K.Y.; Benatchba, K. A new MPPT controller based on the Ant colony optimization algorithm for Photovoltaic systems under partial shading conditions. Appl. Soft Comput. J. 2017, 58, 465–479. [Google Scholar] [CrossRef]
  68. Jiang, L.L.; Maskell, D.L.; Patra, J.C. A novel ant colony optimization-based maximum power point tracking for photovoltaic systems under partially shaded conditions. Energy Build. 2013, 58, 227–236. [Google Scholar] [CrossRef]
  69. Oshaba, A.S.; Ali, E.S.; Abd Elazim, S.M. Speed control of Switched Reluctance Motor fed by PV system using Ant Colony Optimization Algorithm. WSEAS Trans. Power Syst. 2014, 9, 376–387. [Google Scholar]
  70. Sundareswaran, K.; Sankar, P.; Nayak, P.S.R.; Simon, S.P.; Palani, S. Enhanced energy output from a PV system under partial shaded conditions through artificial bee colony. IEEE Trans. Sustain. Energy 2015, 6, 198–209. [Google Scholar] [CrossRef]
  71. Benyoucef, A.S.; Chouder, A.; Kara, K.; Silvestre, S.; Sahed, O.A. Artificial bee colony based algorithm for maximum power point tracking (MPPT) for PV systems operating under partial shaded conditions. Appl. Soft Comput. J. 2015, 32, 38–48. [Google Scholar] [CrossRef]
  72. Díaz Martínez, D.; Trujillo Codorniu, R.; Giral, R.; Vázquez Seisdedos, L. Evaluation of particle swarm optimization techniques applied to maximum power point tracking in photovoltaic systems. Int. J. Circuit Theory Appl. 2021, 49, 1849–1867. [Google Scholar] [CrossRef]
  73. Sheikh Ahmadi, S.H.; Karami, M.; Gholami, M.; Mirzaei, R. Improving MPPT Performance in PV Systems Based on Integrating the Incremental Conductance and Particle Swarm Optimization Methods. Iran. J. Sci. Technol. Trans. Electr. Eng. 2021, 46, 27–39. [Google Scholar] [CrossRef]
  74. Daraban, S.; Petreus, D.; Morel, C. A novel MPPT (maximum power point tracking) algorithm based on a modified genetic algorithm specialized on tracking the global maximum power point in photovoltaic systems affected by partial shading. Energy 2014, 74, 374–388. [Google Scholar] [CrossRef]
  75. Gheibi, A.; Mohammadi, S.M.A.; Maghfoori Farsangi, M. A proposed maximum power point tracking by using adaptive fuzzy logic controller for photovoltaic systems. Sci. Iran. 2016, 23, 1272–1281. [Google Scholar] [CrossRef]
  76. Subiyanto, S.; Mohamed, A.; Hannan, M.A. Intelligent maximum power point tracking for PV system using Hopfield neural network optimized fuzzy logic controller. Energy Build. 2012, 51, 29–38. [Google Scholar] [CrossRef]
  77. Subiyanto; Mohamed, A.; Shareef, H. Hopfield neural network optimized fuzzy logic controller for maximum power point tracking in a photovoltaic system. Int. J. Photoenergy 2012, 2012, 798361. [Google Scholar] [CrossRef]
  78. Mohandes, M.A. Modeling global solar radiation using Particle Swarm Optimization (PSO). Sol. Energy 2012, 86, 3137–3145. [Google Scholar] [CrossRef]
  79. Al-Shamisi, M.H.; Assi, A.H.; Hejase, H.A.N. Artificial neural networks for predicting global solar radiation in Al Ain City—UAE. Int. J. Green Energy 2013, 10, 443–456. [Google Scholar] [CrossRef]
  80. Guermoui, M.; Rabehi, A.; Benkaciali, S.; Djafer, D. Daily global solar radiation modelling using multi-layer perceptron neural networks in semi-arid region. Leonardo Electron. J. Pract. Technol. 2016, 15, 35–46. [Google Scholar]
  81. Abdelaziz, R.; Mawloud, G.; Djelloul, D.; Mohamed, Z. Radial basis function neural networks model to estimate global solar radiation in semi-arid area. Leonardo Electron. J. Pract. Technol. 2015, 14, 177–184. [Google Scholar]
  82. Azimi, R.; Ghayekhloo, M.; Ghofrani, M. A hybrid method based on a new clustering technique and multilayer perceptron neural networks for hourly solar radiation forecasting. Energy Convers. Manag. 2016, 118, 331–344. [Google Scholar] [CrossRef]
  83. Díaz-Gómez, J.; Parrales, A.; Álvarez, A.; Silva-Martínez, S.; Colorado, D.; Hernández, J.A. Prediction of global solar radiation by artificial neural network based on a meteorological environmental data. Desalination Water Treat. 2015, 55, 3210–3217. [Google Scholar] [CrossRef]
  84. Ramedani, Z.; Omid, M.; Keyhani, A.; Khoshnevisan, B.; Saboohi, H. A comparative study between fuzzy linear regression and support vector regression for global solar radiation prediction in Iran. Sol. Energy 2014, 109, 135–143. [Google Scholar] [CrossRef]
  85. Fan, Y.; Wang, P.; Heidari, A.A.; Chen, H.; Mafarja, M. Random reselection particle swarm optimization for optimal design of solar photovoltaic modules. Energy 2022, 239, 121865. [Google Scholar] [CrossRef]
  86. Li, Y.; Yu, K.; Liang, J.; Yue, C.; Qiao, K. A landscape-aware particle swarm optimization for parameter identification of photovoltaic models. Appl. Soft Comput. 2022, 131, 109793. [Google Scholar] [CrossRef]
  87. Farayola, A.M.; Sun, Y.; Ali, A. Global maximum power point tracking and cell parameter extraction in Photovoltaic systems using improved firefly algorithm. Energy Rep. 2022, 8, 162–186. [Google Scholar] [CrossRef]
  88. Ishaque, K.; Salam, Z.; Shamsudin, A.; Amjad, M. A direct control based maximum power point tracking method for photovoltaic system under partial shading conditions using particle swarm optimization algorithm. Appl. Energy 2012, 99, 414–422. [Google Scholar] [CrossRef]
  89. Bechouat, M.; Younsi, A.; Sedraoui, M.; Soufi, Y.; Yousfi, L.; Tabet, I.; Touafek, K. Parameters identification of a photovoltaic module in a thermal system using meta-heuristic optimization methods. Int. J. Energy Environ. Eng. 2017, 8, 331–341. [Google Scholar] [CrossRef]
  90. Marzband, M.; Ghadimi, M.; Sumper, A.; Domínguez-García, J.L. Experimental validation of a real-time energy management system using multi-period gravitational search algorithm for microgrids in islanded mode. Appl. Energy 2014, 128, 164–174. [Google Scholar] [CrossRef]
  91. Radhakrishnan, B.M.; Srinivasan, D.; Mehta, R. Fuzzy-Based Multi-Agent System for Distributed Energy Management in Smart Grids. Int. J. Uncertain. Fuzziness Knowlege-Based Syst. 2016, 24, 781–803. [Google Scholar] [CrossRef]
  92. Eddy, Y.S.F.; Gooi, H.B.; Chen, S.X. Multi-agent system for distributed management of microgrids. IEEE Trans. Power Syst. 2015, 30, 24–34. [Google Scholar] [CrossRef]
  93. Cha, H.-J.; Won, D.-J.; Kim, S.-H.; Chung, I.-Y.; Han, B.-M. Multi-agent system-based microgrid operation strategy for demand response. Energies 2015, 8, 14272–14286. [Google Scholar] [CrossRef]
  94. Kuznetsova, E.; Li, Y.-F.; Ruiz, C.; Zio, E.; Ault, G.; Bell, K. Reinforcement learning for microgrid energy management. Energy 2013, 59, 133–146. [Google Scholar] [CrossRef]
  95. Mbuwir, B.V.; Ruelens, F.; Spiessens, F.; Deconinck, G. Battery energy management in a microgrid using batch reinforcement learning. Energies 2017, 10, 1846. [Google Scholar] [CrossRef]
  96. Kuo, M.-T.; Lu, S.-D. Design and implementation of real-time intelligent control and structure based on multi-agent systems in microgrids. Energies 2013, 6, 6045–6059. [Google Scholar] [CrossRef]
  97. Khalid, R.; Javaid, N.; Al-zahrani, F.A.; Aurangzeb, K.; Qazi, E.-U.-H.; Ashfaq, T. Electricity load and price forecasting using jaya-long short term memory (JLSTM) in smart grids. Entropy 2020, 22, 10. [Google Scholar] [CrossRef]
  98. Yousaf, A.; Asif, R.M.; Shakir, M.; Rehman, A.U.; Alassery, F.; Hamam, H.; Cheikhrouhou, O. A novel machine learning-based price forecasting for energy management systems. Sustainability 2021, 13, 12693. [Google Scholar] [CrossRef]
  99. Wang, K.; Xu, C.; Zhang, Y.; Guo, S.; Zomaya, A.Y. Robust Big Data Analytics for Electricity Price Forecasting in the Smart Grid. IEEE Trans. Big Data 2019, 5, 34–45. [Google Scholar] [CrossRef]
  100. Kim, T.-Y.; Cho, S.-B. Predicting residential energy consumption using CNN-LSTM neural networks. Energy 2019, 182, 72–81. [Google Scholar] [CrossRef]
  101. Usman, M.; Ali Khan, Z.; Khan, I.U.; Javaid, S.; Javaid, N. Data Analytics for Short Term Price and Load Forecasting in Smart Grids using Enhanced Recurrent Neural Network. In Proceedings of the 2019 Sixth HCT Information Technology Trends (ITT), Ras Al Khaimah, United Arab Emirates, 20–21 November 2019; pp. 84–88. [Google Scholar]
  102. Atef, S.; Eltawil, A.B. A Comparative Study Using Deep Learning and Support Vector Regression for Electricity Price Forecasting in Smart Grids. In Proceedings of the 2019 IEEE 6th International Conference on Industrial Engineering and Applications (ICIEA), Tokyo, Japan, 12–15 April 2019; pp. 603–607. [Google Scholar]
  103. Fatema, I.; Kong, X.; Fang, G. Electricity demand and price forecasting model for sustainable smart grid using comprehensive long short term memory. Int. J. Sustain. Eng. 2021, 14, 1714–1732. [Google Scholar] [CrossRef]
  104. Yang, H.; Schell, K.R. Real-time electricity price forecasting of wind farms with deep neural network transfer learning and hybrid datasets. Appl. Energy 2021, 299, 117242. [Google Scholar] [CrossRef]
  105. Kerdphol, T.; Qudaih, Y.S.; Hongesombut, K.; Watanabe, M.; Mitani, Y. Intelligent determination of a battery energy storage system size and location based on RBF neural networks for microgrids. Int. Rev. Electr. Eng. 2016, 11, 78–87. [Google Scholar] [CrossRef]
  106. Baghaee, H.R.; Mirsalim, M.; Gharehpetian, G.B. Power Calculation Using RBF Neural Networks to Improve Power Sharing of Hierarchical Control Scheme in Multi-DER Microgrids. IEEE J. Emerg. Sel. Top. Power Electron. 2016, 4, 1217–1225. [Google Scholar] [CrossRef]
  107. Moradi, M.H.; Abedini, M. A combination of genetic algorithm and particle swarm optimization for optimal distributed generation location and sizing in distribution systems with fuzzy optimal theory. Int. J. Green Energy 2012, 9, 641–660. [Google Scholar] [CrossRef]
  108. Liao, G.-C. Solve environmental economic dispatch of Smart MicroGrid containing distributed generation system—Using chaotic quantum genetic algorithm. Int. J. Electr. Power Energy Syst. 2012, 43, 779–787. [Google Scholar] [CrossRef]
  109. Sheng, W.; Liu, K.-Y.; Liu, Y.; Meng, X.; Li, Y. Optimal Placement and Sizing of Distributed Generation via an Improved Nondominated Sorting Genetic Algorithm II. IEEE Trans. Power Deliv. 2015, 30, 569–578. [Google Scholar] [CrossRef]
  110. Aryani, N.K.; Syai’in, M.; Soeprijanto, A.; Made Yulistya Negara, I. Optimal placement and sizing of distributed generation for minimize losses in unbalance radial distribution systems using quantum genetic algorithm. Int. Rev. Electr. Eng. 2014, 9, 157–164. [Google Scholar] [CrossRef]
  111. Ramya, S.; Rajesh, N.B.; Viswanathan, B.; Karthika Vigneswari, B. Particle swarm optimization (PSO) based optimum distributed generation (DG) location and sizing for voltage stability and loadability enhancement in radial distribution system. Int. Rev. Autom. Control 2014, 7, 288–293. [Google Scholar]
  112. Remha, S.; Chettih, S.; Arif, S. A novel multi-objective bat algorithm for optimal placement and sizing of distributed generation in radial distributed systems. Adv. Electr. Electron. Eng. 2017, 15, 736–746. [Google Scholar] [CrossRef]
  113. Xie, S.; Zhai, R.; Liu, X.; Li, B.; Long, K.; Ai, Q. Research article self-adaptive genetic algorithm and fuzzy decision based multiobjective optimization in microgrid with DGs. Open Electr. Electron. Eng. J. 2016, 10, 46–57. [Google Scholar] [CrossRef]
  114. Javidtash, N.; Jabbari, M.; Niknam, T.; Nafar, M. A novel mixture of non-dominated sorting genetic algorithm and fuzzy method to multi-objective placement of distributed generations in Microgrids. J. Intell. Fuzzy Syst. 2017, 33, 2577–2584. [Google Scholar] [CrossRef]
  115. López-Lezama, J.M.; Contreras, J.; Padilha-Feltrin, A. Location and contract pricing of distributed generation using a genetic algorithm. Int. J. Electr. Power Energy Syst. 2012, 36, 117–126. [Google Scholar] [CrossRef]
  116. MacIel, R.S.; Rosa, M.; Miranda, V.; Padilha-Feltrin, A. Multi-objective evolutionary particle swarm optimization in the assessment of the impact of distributed generation. Electr. Power Syst. Res. 2012, 89, 100–108. [Google Scholar] [CrossRef]
  117. Cheng, S.; Chen, M.-Y.; Wai, R.-J.; Wang, F.-Z. Optimal placement of distributed generation units in distribution systems via an enhanced multi-objective particle swarm optimization algorithm. J. Zhejiang Univ. Sci. C 2014, 15, 300–311. [Google Scholar] [CrossRef]
  118. Farhadi, P.; Ghadimi, N.; Sojoudi, T. Distributed generation allocation in radial distribution systems using various particle swarm optimization techniques. Prz. Elektrotechniczny 2013, 89, 261–265. [Google Scholar]
  119. Qi, R.; Rasband, C.; Zheng, J.; Longoria, R. Detecting cyber attacks in smart grids using semi-supervised anomaly detection and deep representation learning. Information 2021, 12, 328. [Google Scholar] [CrossRef]
  120. Aribisala, A.; Khan, M.S.; Husari, G. Machine learning algorithms and their applications in classifying cyber-attacks on a smart grid network. In Proceedings of the 2021 IEEE 12th Annual Information Technology, Electronics and Mobile Communication Conference (IEMCON), Vancouver, BC, Canada, 27–30 October 2021; pp. 63–69. [Google Scholar]
  121. Zhao, Y.; Jia, X.; An, D.; Yang, Q. LSTM-Based false data injection attack detection in smart grids. In Proceedings of the 2020 35th Youth Academic Annual Conference of Chinese Association of Automation (YAC), Zhanjiang, China, 16–18 October 2020; pp. 638–644. [Google Scholar]
  122. Ashrafuzzaman, M.; Das, S.; Chakhchoukh, Y.; Shiva, S.; Sheldon, F.T. Detecting stealthy false data injection attacks in the smart grid using ensemble-based machine learning. Comput. Secur. 2020, 97, 101994. [Google Scholar] [CrossRef]
  123. Yang, L.; Zhai, Y.; Li, Z. Deep learning for online AC False Data Injection Attack detection in smart grids: An approach using LSTM-Autoencoder. J. Netw. Comput. Appl. 2021, 193, 103178. [Google Scholar] [CrossRef]
  124. Prasanna Srinivasan, V.; Balasubadra, K.; Saravanan, K.; Arjun, V.S.; Malarkodi, S. Multi label deep learning classification approach for false data injection attacks in smart grid. KSII Trans. Internet Inf. Syst. 2021, 15, 2168–2187. [Google Scholar] [CrossRef]
  125. Shafee, A.; Nabil, M.; Mahmoud, M.; Alasmary, W.; Amsaad, F. Detection of Denial of Charge (DoC) Attacks in Smart Grid Using Convolutional Neural Networks. In Proceedings of the 2021 International Symposium on Networks, Computers and Communications (ISNCC), Dubai, United Arab Emirates, 31 October–2 November 2021. [Google Scholar]
  126. Monday, H.N.; Li, J.P.; Nneji, G.U.; Yutra, A.Z.; Lemessa, B.D.; Nahar, S.; James, E.C.; Haq, A.U. The Capability of Wavelet Convolutional Neural Network for Detecting Cyber Attack of Distributed Denial of Service in Smart Grid. In Proceedings of the 2021 18th International Computer Conference on Wavelet Active Media Technology and Information Processing (ICCWAMTIP), Chengdu, China, 17–19 December 2021; pp. 413–418. [Google Scholar]
  127. Wang, Z.; Cheng, W.; Li, C. DoS attack detection model of smart grid based on machine learning method. In Proceedings of the 2020 IEEE International Conference on Power, Intelligent Computing and Systems (ICPICS), Shenyang, China, 28–30 July 2020; pp. 735–738. [Google Scholar]
  128. He, Y.; Mendis, G.J.; Wei, J. Real-Time Detection of False Data Injection Attacks in Smart Grid: A Deep Learning-Based Intelligent Mechanism. IEEE Trans. Smart Grid 2017, 8, 2505–2516. [Google Scholar] [CrossRef]
  129. Kazeem, B.; Eneh, I.I.; Igweh, K. Islanding detection for grid integrated distributed generation using adaptive neuro-fuzzy inference system. In Proceedings of the IEEE PES/IAS PowerAfrica, Nairobi, Kenya, 23–27 August 2021. [Google Scholar]
  130. Ananda Kumar, S.; Subathra, M.S.P.; Kumar, N.M.; Malvoni, M.; Sairamya, N.J.; Thomas George, S.; Suviseshamuthu, E.S.; Chopra, S.S. A novel islanding detection technique for a resilient photovoltaic-based distributed power generation system using a tunable-Q wavelet transform and an artificial neural network. Energies 2020, 13, 4238. [Google Scholar] [CrossRef]
  131. Mogaka, L.O.; Nyakoe, G.N.; Saulo, M.J. Islanding detection in a ress supplied microgrid using pmu-fuzzy logic algorithm. Int. J. Sci. Technol. Res. 2020, 9, 233–238. [Google Scholar]
  132. Ali, W.; Ulasyar, A.; Mehmood, M.U.; Khattak, A.; Imran, K.; Zad, H.S.; Nisar, S. Hierarchical Control of Microgrid Using IoT and Machine Learning Based Islanding Detection. IEEE Access 2021, 9, 103019–103031. [Google Scholar] [CrossRef]
  133. Kong, X.; Xu, X.; Yan, Z.; Chen, S.; Yang, H.; Han, D. Deep learning hybrid method for islanding detection in distributed generation. Appl. Energy 2018, 210, 776–785. [Google Scholar] [CrossRef]
  134. Bukhari, S.B.A.; Mehmood, K.K.; Wadood, A.; Park, H. Intelligent islanding detection of microgrids using long short-term memory networks. Energies 2021, 14, 5762. [Google Scholar] [CrossRef]
  135. Kermany, S.D.; Joorabian, M.; Deilami, S.; Masoum, M.A.S. Hybrid Islanding Detection in Microgrid with Multiple Connection Points to Smart Grids Using Fuzzy-Neural Network. IEEE Trans. Power Syst. 2017, 32, 2640–2651. [Google Scholar] [CrossRef]
  136. Chen, K.; Laghrouche, S.; Djerdir, A. Remaining Useful Life Prediction for Fuel Cell Based on Support Vector Regression and Grey Wolf Optimizer Algorithm. IEEE Trans. Energy Convers. 2021, 37, 778–787. [Google Scholar] [CrossRef]
  137. Raajiv Menon, R.; Vijay Kumar, R.; Pandey, J.K. Realisation of optimal parameters of PEM fuel cell using simple genetic algorithm (SGA) and simulink modeling. Int. J. Eng. Adv. Technol. 2019, 8, 1542–1548. [Google Scholar] [CrossRef]
  138. Abdi, H.; Messaoudene, N.A.; Kolsi, L.; Belazzoug, M. Multi-Objective Optimization of Operating Parameters of A PEM fuel cell under flooding conditions using the non-dominated sorting genetic algorithm (NSGA-II). Therm. Sci. 2018, 2018, 3525–3537. [Google Scholar] [CrossRef]
  139. Erlin, T.; Ebadi, A.G.; Mavaluru, D.; Alshehri, M.; Mohamed, A.A.-B.; Sobhani, B. Parameter derivation of a proton exchange membrane fuel cell based on coevolutionary ribonucleic acid genetic algorithm. Comput. Intell. 2019, 35, 1022–1042. [Google Scholar] [CrossRef]
  140. Yu, J.J.Q.; Hou, Y.; Lam, A.Y.S.; Li, V.O.K. Intelligent fault detection scheme for microgrids with wavelet-based deep neural networks. IEEE Trans. Smart Grid 2019, 10, 1694–1703. [Google Scholar] [CrossRef]
  141. Guo, C.; Lu, J.; Tian, Z.; Guo, W.; Darvishan, A. Optimization of critical parameters of PEM fuel cell using TLBO-DE based on Elman neural network. Energy Convers. Manag. 2019, 183, 149–158. [Google Scholar] [CrossRef]
  142. Zhang, W.; Wang, N.; Yang, S. Hybrid artificial bee colony algorithm for parameter estimation of proton exchange membrane fuel cell. Int. J. Hydrog. Energy 2013, 38, 5796–5806. [Google Scholar] [CrossRef]
  143. Vichard, L.; Harel, F.; Ravey, A.; Venet, P.; Hissel, D. Degradation prediction of PEM fuel cell based on artificial intelligence. Int. J. Hydrog. Energy 2020, 45, 14953–14963. [Google Scholar] [CrossRef]
  144. Cheng, S.-J.; Lin, J.-K. Performance prediction model of solid oxide fuel cell system based on neural network autoregressive with external input method. Processes 2020, 8, 828. [Google Scholar] [CrossRef]
  145. Li, H.-W.; Xu, B.-S.; Du, C.-H.; Yang, Y. Performance prediction and power density maximization of a proton exchange membrane fuel cell based on deep belief network. J. Power Sources 2020, 461, 228154. [Google Scholar] [CrossRef]
  146. Chen, H.; Shan, W.; Liao, H.; He, Y.; Zhang, T.; Pei, P.; Deng, C.; Chen, J. Online voltage consistency prediction of proton exchange membrane fuel cells using a machine learning method. Int. J. Hydrog. Energy 2021, 46, 34399–34412. [Google Scholar] [CrossRef]
  147. Yuan, P.; Liu, S.-F. Transient analysis of a solid oxide fuel cell unit with reforming and water-shift reaction and the building of neural network model for rapid prediction in electrical and thermal performance. Int. J. Hydrog. Energy 2020, 45, 924–936. [Google Scholar] [CrossRef]
  148. Wang, X. Remaining Useful Life Prediction of Proton Exchange Membrane Fuel Cell Based on Deep Learning. In Proceedings of the 2022 IEEE 5th International Conference on Electronics Technology (ICET), Chengdu, China, 13–16 May 2022; pp. 290–296. [Google Scholar]
  149. Zhang, Y.; Huang, Z.; Zhang, C.; Lv, C.; Deng, C.; Hao, D.; Chen, J.; Ran, H. Improved Short-Term Speed Prediction Using Spatiotemporal-Vision-Based Deep Neural Network for Intelligent Fuel Cell Vehicles. IEEE Trans. Ind. Inform. 2021, 17, 6004–6013. [Google Scholar] [CrossRef]
  150. Zuo, B.; Cheng, J.; Zhang, Z. Degradation prediction model for proton exchange membrane fuel cells based on long short-term memory neural network and Savitzky-Golay filter. Int. J. Hydrog. Energy 2021, 46, 15928–15937. [Google Scholar] [CrossRef]
  151. Caponetto, R.; Guarnera, N.; Matera, F.; Privitera, E.; Xibilia, M.G. Application of electrochemical impedance spectroscopy for prediction of fuel cell degradation by LSTM neural networks. In Proceedings of the 2021 29th Mediterranean Conference on Control and Automation (MED), Puglia, Italy, 22–25 June 2021; pp. 1064–1069. [Google Scholar]
  152. Zheng, L.; Hou, Y.; Zhang, T.; Pan, X. Performance prediction of fuel cells using long short-term memory recurrent neural network. Int. J. Energy Res. 2021, 45, 9141–9161. [Google Scholar] [CrossRef]
  153. Xie, J.; Wang, C.; Zhu, W.; Yuan, H. A multi-stage fault diagnosis method for proton exchange membrane fuel cell based on support vector machine with binary tree. Energies 2021, 14, 6526. [Google Scholar] [CrossRef]
  154. Pei, M.; Zhang, C.; Hu, M.; Jackson, L.; Mao, L. A Fuzzy Logic-based Method for Proton Exchange Membrane Fuel Cell Fault Diagnosis. In Proceedings of the 2020 International Conference on Sensing, Measurement & Data Analytics in the era of Artificial Intelligence (ICSMD), Xi’an, China, 15–17 October 2020; pp. 1–6. [Google Scholar]
  155. Du, R.; Wei, X.; Wang, X.; Chen, S.; Yuan, H.; Dai, H.; Ming, P. A fault diagnosis model for proton exchange membrane fuel cell based on impedance identification with differential evolution algorithm. Int. J. Hydrog. Energy 2021, 46, 38795–38808. [Google Scholar] [CrossRef]
  156. Guarino, A.; Spagnuolo, G. Automatic features extraction of faults in PEM fuel cells by a siamese artificial neural network. Int. J. Hydrog. Energy 2021, 46, 34854–34866. [Google Scholar] [CrossRef]
  157. Zhang, X.; Guo, X. Fault diagnosis of proton exchange membrane fuel cell system of tram based on information fusion and deep learning. Int. J. Hydrog. Energy 2021, 46, 30828–30840. [Google Scholar] [CrossRef]
  158. Gu, X.; Hou, Z.; Cai, J. Data-based flooding fault diagnosis of proton exchange membrane fuel cell systems using LSTM networks. Energy AI 2021, 4, 100056. [Google Scholar] [CrossRef]
  159. Gou, Y.; Yang, K.; Xu, W. A Fault diagnosis method of environment-friendly proton exchange membrane fuel cell for vehicles using deep learning. Fresenius Environ. Bull. 2021, 30, 2931–2942. [Google Scholar]
  160. Shao, M.; Zhu, X.-J.; Cao, H.-F.; Shen, H.-F. An artificial neural network ensemble method for fault diagnosis of proton exchange membrane fuel cell system. Energy 2014, 67, 268–275. [Google Scholar] [CrossRef]
  161. Yang, W.-J.; Wang, H.-Y.; Lee, D.-H.; Kim, Y.-B. Channel geometry optimization of a polymer electrolyte membrane fuel cell using genetic algorithm. Appl. Energy 2015, 146, 1–10. [Google Scholar] [CrossRef]
  162. Cai, G.; Liang, Y.; Liu, Z.; Liu, W. Design and optimization of bio-inspired wave-like channel for a PEM fuel cell applying genetic algorithm. Energy 2020, 192, 116670. [Google Scholar] [CrossRef]
  163. Li, W.-Z.; Yang, W.-W.; Wang, N.; Jiao, Y.-H.; Yang, Y.; Qu, Z.-G. Optimization of blocked channel design for a proton exchange membrane fuel cell by coupled genetic algorithm and three-dimensional CFD modeling. Int. J. Hydrog. Energy 2020, 45, 17759–17770. [Google Scholar] [CrossRef]
  164. Darjat; Sulistyo; Triwiyatno, A.; Sudjadi; Kurniahadi, A. Designing hydrogen and oxygen flow rate control on a solid oxide fuel cell simulator using the fuzzy logic control method. Processes 2020, 8, 154. [Google Scholar] [CrossRef]
  165. Kang, Y.-R.; Son, J.-C.; Lim, D.-K. Optimal Design of IPMSM for Fuel Cell Electric Vehicles Using Autotuning Elliptical Niching Genetic Algorithm. IEEE Access 2020, 8, 117405–117412. [Google Scholar] [CrossRef]
  166. Cao, Y.; Yao, H.; Wang, Z.; Jermsittiparsert, K.; Yousefi, N. Optimal Designing and Synthesis of a Hybrid PV/Fuel cell/Wind System using Meta-heuristics. Energy Rep. 2020, 6, 1353–1362. [Google Scholar] [CrossRef]
  167. Liu, J.; Li, W.; Liu, M.; He, K.; Wang, Y.; Fang, P. Multi-objective aerodynamic design optimisation method of fuel cell centrifugal impeller using modified NSGA-II algorithm. Appl. Sci. 2021, 11, 7659. [Google Scholar] [CrossRef]
  168. Wang, D.; Bao, J.; Xu, Z.; Koeppel, B.; Marina, O.A.; Noring, A.; Zamarripa-Perez, M.; Iyengar, A.; Eggleton, E.; Schwartz, D.T.; et al. Machine learning tools set for natural gas fuel cell system design. ECS Trans. 2021, 103, 2283–2292. [Google Scholar] [CrossRef]
  169. García, P.; Torreglosa, J.P.; Fernández, L.M.; Jurado, F. Optimal energy management system for stand-alone wind turbine/photovoltaic/ hydrogen/battery hybrid system with supervisory control based on fuzzy logic. Int. J. Hydrog. Energy 2013, 38, 14146–14158. [Google Scholar] [CrossRef]
  170. Zahedi, R.; Ardehali, M.M. Power management for storage mechanisms including battery, supercapacitor, and hydrogen of autonomous hybrid green power system utilizing multiple optimally-designed fuzzy logic controllers. Energy 2020, 204, 117935. [Google Scholar] [CrossRef]
  171. Chen, X.; Cao, W.; Zhang, Q.; Hu, S.; Zhang, J. Artificial Intelligence-Aided Model Predictive Control for a Grid-Tied Wind-Hydrogen-Fuel Cell System. IEEE Access 2020, 8, 92418–92430. [Google Scholar] [CrossRef]
  172. Nasr, N.; Hafez, H.; El Naggar, M.H.; Nakhla, G. Application of artificial neural networks for modeling of biohydrogen production. Int. J. Hydrogen Energy 2013, 38, 3189–3195. [Google Scholar] [CrossRef]
  173. Ozbas, E.E.; Aksu, D.; Ongen, A.; Aydin, M.A.; Ozcan, H.K. Hydrogen production via biomass gasification, and modeling by supervised machine learning algorithms. Int. J. Hydrog. Energy 2019, 44, 17260–17268. [Google Scholar] [CrossRef]
  174. Nasrudin, N.A.; Jewaratnam, J.; Hossain, M.A.; Ganeson, P.B. Performance comparison of feedforward neural network training algorithms in modelling microwave pyrolysis of oil palm fibre for hydrogen and biochar production. Asia-Pac. J. Chem. Eng. 2020, 15, e2388. [Google Scholar] [CrossRef]
  175. Bicer, Y.; Dincer, I.; Aydin, M. Maximizing performance of fuel cell using artificial neural network approach for smart grid applications. Energy 2016, 116, 1205–1217. [Google Scholar] [CrossRef]
  176. Adeniyi, A.G.; Ighalo, J.O.; Marques, G. Utilisation of machine learning algorithms for the prediction of syngas composition from biomass bio-oil steam reforming. Int. J. Sustain. Energy 2021, 40, 310–325. [Google Scholar] [CrossRef]
  177. Li, Y.; Yan, L.; Yang, B.; Gao, W.; Farahani, M.R. Simulation of biomass gasification in a fluidized bed by artificial neural network (ANN). Energy Sources Part Recovery Util. Environ. Eff. 2018, 40, 544–548. [Google Scholar] [CrossRef]
  178. Shenbagaraj, S.; Sharma, P.K.; Sharma, A.K.; Raghav, G.; Kota, K.B.; Ashokkumar, V. Gasification of food waste in supercritical water: An innovative synthesis gas composition prediction model based on Artificial Neural Networks. Int. J. Hydrog. Energy 2021, 46, 12739–12757. [Google Scholar] [CrossRef]
  179. Li, J.; Pan, L.; Suvarna, M.; Wang, X. Machine learning aided supercritical water gasification for H2-rich syngas production with process optimization and catalyst screening. Chem. Eng. J. 2021, 426, 131285. [Google Scholar] [CrossRef]
  180. Rahman, I.; Vasant, P.M.; Singh, B.S.M.; Abdullah-Al-Wadud, M. On the performance of accelerated particle swarm optimization for charging plug-in hybrid electric vehicles. Alex. Eng. J. 2016, 55, 419–426. [Google Scholar] [CrossRef]
  181. Kang, Q.; Feng, S.; Zhou, M.; Ammari, A.C.; Sedraoui, K. Optimal Load Scheduling of Plug-In Hybrid Electric Vehicles via Weight-Aggregation Multi-Objective Evolutionary Algorithms. IEEE Trans. Intell. Transp. Syst. 2017, 18, 2557–2568. [Google Scholar] [CrossRef]
  182. Chen, Z.; Xiong, R.; Wang, K.; Jiao, B. Optimal energy management strategy of a plug-in hybrid electric vehicle based on a particle swarm optimization algorithm. Energies 2015, 8, 3661–3678. [Google Scholar] [CrossRef]
  183. Vasant, P.M.; Rahman, I.; Singh, B.S.M.; Abdullah-Al-Wadud, M. Optimal power allocation scheme for plug-in hybrid electric vehicles using swarm intelligence techniques. Cogent Eng. 2016, 3, 1203083. [Google Scholar] [CrossRef]
  184. Lan, T.; Kang, Q.; An, J.; Yan, W.; Wang, L. Sitting and sizing of aggregator controlled park for plug-in hybrid electric vehicle based on particle swarm optimization. Neural Comput. Appl. 2013, 22, 249–257. [Google Scholar] [CrossRef]
  185. Rahman, I.; Vasant, P.M.; Mahinder Singh, B.S.; Abdullah-Al-Wadud, M. Swarm Intelligence-Based Smart Energy Allocation Strategy for Charging Stations of Plug-In Hybrid Electric Vehicles. Math. Probl. Eng. 2015, 2015, 620425. [Google Scholar] [CrossRef]
  186. Sadeghi, S.; Jahangir, H.; Vatandoust, B.; Golkar, M.A.; Ahmadian, A.; Elkamel, A. Optimal bidding strategy of a virtual power plant in day-ahead energy and frequency regulation markets: A deep learning-based approach. Int. J. Electr. Power Energy Syst. 2021, 127, 106646. [Google Scholar] [CrossRef]
  187. Mozaffari, A.; Vajedi, M.; Azad, N.L. A robust safety-oriented autonomous cruise control scheme for electric vehicles based on model predictive control and online sequential extreme learning machine with a hyper-level fault tolerance-based supervisor. Neurocomputing 2015, 151, 845–856. [Google Scholar] [CrossRef]
  188. Karfopoulos, E.L.; Hatziargyriou, N.D. A multi-agent system for controlled charging of a large population of electric vehicles. IEEE Trans. Power Syst. 2013, 28, 1196–1204. [Google Scholar] [CrossRef]
  189. Xu, L.; Wang, J.; Chen, Q. Kalman filtering state of charge estimation for battery management system based on a stochastic fuzzy neural network battery model. Energy Convers. Manag. 2012, 53, 33–39. [Google Scholar] [CrossRef]
  190. Chen, Z.; Wang, F.; Feng, Q. Cost-benefit evaluation for building intelligent systems with special consideration on intangible benefits and energy consumption. Energy Build. 2016, 128, 484–490. [Google Scholar] [CrossRef]
  191. He, Z.; Gao, M.; Ma, G.; Liu, Y.; Chen, S. Online state-of-health estimation of lithium-ion batteries using Dynamic Bayesian Networks. J. Power Sources 2014, 267, 576–583. [Google Scholar] [CrossRef]
  192. Kang, L.; Zhao, X.; Ma, J. A new neural network model for the state-of-charge estimation in the battery degradation process. Appl. Energy 2014, 121, 20–27. [Google Scholar] [CrossRef]
  193. Klass, V.; Behm, M.; Lindbergh, G. A support vector machine-based state-of-health estimation method for lithium-ion batteries under electric vehicle operation. J. Power Sources 2014, 270, 262–272. [Google Scholar] [CrossRef]
  194. Tang, C.; Yuan, Z.; Liu, G.; Jiang, S.; Hao, W. Acoustic emission analysis of 18,650 lithium-ion battery under bending based on factor analysis and the fuzzy clustering method. Eng. Fail. Anal. 2020, 117, 104800. [Google Scholar] [CrossRef]
  195. Weng, C.; Cui, Y.; Sun, J.; Peng, H. On-board state of health monitoring of lithium-ion batteries using incremental capacity analysis with support vector regression. J. Power Sources 2013, 235, 36–44. [Google Scholar] [CrossRef]
  196. Jin, F.; Yong-Ling, H. Adaptive mutation particle swarm optimized BP neural network in state-of-charge estimation of Li-ion battery for electric vehicles. Bulg. Chem. Commun. 2015, 47, 904–912. [Google Scholar]
  197. Hou, Z.; Xie, P.; Hou, J. The state of charge estimation of power lithium battery based on RBF neural network optimized by particle swarm optimization. J. Appl. Sci. Eng. 2017, 20, 483–490. [Google Scholar] [CrossRef]
  198. Li, X.; Yuan, C.; Wang, Z. State of health estimation for Li-ion battery via partial incremental capacity analysis based on support vector regression. Energy 2020, 203, 117852. [Google Scholar] [CrossRef]
  199. Chandran, V.; Patil, C.K.; Karthick, A.; Ganeshaperumal, D.; Rahim, R.; Ghosh, A. State of charge estimation of lithium-ion battery for electric vehicles using machine learning algorithms. World Electr. Veh. J. 2021, 12, 38. [Google Scholar] [CrossRef]
  200. Li, S.; Zhou, Y.; Li, R.; Zhao, X. Online Lithium Battery Fault Diagnosis based on Least Square Support Vector Machine Optimized by Ant Lion Algorithm. Int. J. Perform. Eng. 2020, 16, 1637–1645. [Google Scholar] [CrossRef]
  201. Zhao, X.; Xuan, D.; Zhao, K.; Li, Z. Elman neural network using ant colony optimization algorithm for estimating of state of charge of lithium-ion battery. J. Energy Storage 2020, 32, 101789. [Google Scholar] [CrossRef]
  202. Hossain Lipu, M.S.; Hannan, M.A.; Hussain, A.; Ayob, A.; Saad, M.H.M.; Muttaqi, K.M. State of charge estimation in lithium-ion batteries: A neural network optimization approach. Electronics 2020, 9, 1546. [Google Scholar] [CrossRef]
  203. Zhang, Y.; Xiong, R.; He, H.; Pecht, M.G. Long short-term memory recurrent neural network for remaining useful life prediction of lithium-ion batteries. IEEE Trans. Veh. Technol. 2018, 67, 5695–5705. [Google Scholar] [CrossRef]
  204. Bian, C.; He, H.; Yang, S.; Huang, T. State-of-charge sequence estimation of lithium-ion battery based on bidirectional long short-term memory encoder-decoder architecture. J. Power Sources 2020, 449, 227558. [Google Scholar] [CrossRef]
  205. Park, K.; Choi, Y.; Choi, W.J.; Ryu, H.-Y.; Kim, H. LSTM-Based Battery Remaining Useful Life Prediction with Multi-Channel Charging Profiles. IEEE Access 2020, 8, 20786–20798. [Google Scholar] [CrossRef]
  206. Tian, Y.; Lai, R.; Li, X.; Xiang, L.; Tian, J. A combined method for state-of-charge estimation for lithium-ion batteries using a long short-term memory network and an adaptive cubature Kalman filter. Appl. Energy 2020, 265, 114789. [Google Scholar] [CrossRef]
  207. Yang, F.; Zhang, S.; Li, W.; Miao, Q. State-of-charge estimation of lithium-ion batteries using LSTM and UKF. Energy 2020, 201, 117664. [Google Scholar] [CrossRef]
  208. Chen, W.; Qi, W.; Li, Y.; Zhang, J.; Zhu, F.; Xie, D.; Ru, W.; Luo, G.; Song, M.; Tang, F. Ultra-Short-Term Wind Power Prediction Based on Bidirectional Gated Recurrent Unit and Transfer Learning. Front. Energy Res. 2021, 9, 808116. [Google Scholar] [CrossRef]
  209. Shen, S.; Sadoughi, M.; Li, M.; Wang, Z.; Hu, C. Deep convolutional neural networks with ensemble learning and transfer learning for capacity estimation of lithium-ion batteries. Appl. Energy 2020, 260, 114296. [Google Scholar] [CrossRef]
  210. Fasahat, M.; Manthouri, M. State of charge estimation of lithium-ion batteries using hybrid autoencoder and Long Short Term Memory neural networks. J. Power Sources 2020, 469, 228375. [Google Scholar] [CrossRef]
  211. Qu, X.; Yu, Y.; Zhou, M.; Lin, C.-T.; Wang, X. Jointly dampening traffic oscillations and improving energy consumption with electric, connected and automated vehicles: A reinforcement learning based approach. Appl. Energy 2020, 257, 114030. [Google Scholar] [CrossRef]
  212. Machado, F.; Trovão, J.P.F.; Antunes, C.H. Effectiveness of supercapacitors in pure electric vehicles using a hybrid metaheuristic approach. IEEE Trans. Veh. Technol. 2016, 65, 29–36. [Google Scholar] [CrossRef]
  213. Sarve, A.N.; Varma, M.N.; Sonawane, S.S. Response surface optimization and artificial neural network modeling of biodiesel production from crude mahua (Madhuca indica) oil under supercritical ethanol conditions using CO2 as co-solvent. RSC Adv. 2015, 5, 69702–69713. [Google Scholar] [CrossRef]
  214. Betiku, E.; Omilakin, O.R.; Ajala, S.O.; Okeleye, A.A.; Taiwo, A.E.; Solomon, B.O. Mathematical modeling and process parameters optimization studies by artificial neural network and response surface methodology: A case of non-edible neem (Azadirachta indica) seed oil biodiesel synthesis. Energy 2014, 72, 266–273. [Google Scholar] [CrossRef]
  215. Betiku, E.; Ajala, S.O. Modeling and optimization of Thevetia peruviana (yellow oleander) oil biodiesel synthesis via Musa paradisiacal (plantain) peels as heterogeneous base catalyst: A case of artificial neural network vs. response surface methodology. Ind. Crops Prod. 2014, 53, 314–322. [Google Scholar] [CrossRef]
  216. Prakash Maran, J.; Priya, B. Comparison of response surface methodology and artificial neural network approach towards efficient ultrasound-assisted biodiesel production from muskmelon oil. Ultrason. Sonochem. 2015, 23, 192–200. [Google Scholar] [CrossRef] [PubMed]
  217. Nassef, A.M.; Sayed, E.T.; Rezk, H.; Abdelkareem, M.A.; Rodriguez, C.; Olabi, A.G. Fuzzy-modeling with Particle Swarm Optimization for enhancing the production of biodiesel from Microalga. Energy Sources Part Recovery Util. Environ. Eff. 2019, 41, 2094–2103. [Google Scholar] [CrossRef]
  218. Ogaga Ighose, B.; Adeleke, I.A.; Damos, M.; Adeola Junaid, H.; Ernest Okpalaeke, K.; Betiku, E. Optimization of biodiesel production from Thevetia peruviana seed oil by adaptive neuro-fuzzy inference system coupled with genetic algorithm and response surface methodology. Energy Convers. Manag. 2017, 132, 231–240. [Google Scholar] [CrossRef]
  219. Piloto, R.; Sanchez, Y.; Goyos, L.; Verhelst, S. Prediction of cetane number of biodiesel from its fatty acid ester composition using artificial neural networks. Renew. Energy Power Qual. J. 2013, 1, 83–87. [Google Scholar] [CrossRef]
  220. Piloto-Rodríguez, R.; Sánchez-Borroto, Y.; Lapuerta, M.; Goyos-Pérez, L.; Verhelst, S. Prediction of the cetane number of biodiesel using artificial neural networks and multiple linear regression. Energy Convers. Manag. 2013, 65, 255–261. [Google Scholar] [CrossRef]
  221. Miraboutalebi, S.M.; Kazemi, P.; Bahrami, P. Fatty Acid Methyl Ester (FAME) composition used for estimation of biodiesel cetane number employing random forest and artificial neural networks: A new approach. Fuel 2016, 166, 143–151. [Google Scholar] [CrossRef]
  222. Wong, P.K.; Wong, K.I.; Vong, C.M.; Cheung, C.S. Modeling and optimization of biodiesel engine performance using kernel-based extreme learning machine and cuckoo search. Renew. Energy 2015, 74, 640–647. [Google Scholar] [CrossRef]
  223. Hosseini, S.H.; Taghizadeh-Alisaraei, A.; Ghobadian, B.; Abbaszadeh-Mayvan, A. Artificial neural network modeling of performance, emission, and vibration of a CI engine using alumina nano-catalyst added to diesel-biodiesel blends. Renew. Energy 2020, 149, 951–961. [Google Scholar] [CrossRef]
  224. Shukri, M.R.; Rahman, M.M.; Ramasamy, D.; Kadirgama, K. Artificial neural network optimization modeling on engine performance of diesel engine using biodiesel fuel. Int. J. Automot. Mech. Eng. 2015, 11, 2332–2347. [Google Scholar] [CrossRef]
  225. Alves, J.C.L.; Poppi, R.J. Biodiesel content determination in diesel fuel blends using near infrared (NIR) spectroscopy and support vector machines (SVM). Talanta 2013, 104, 155–161. [Google Scholar] [CrossRef] [PubMed]
  226. Filgueiras, P.R.; Alves, J.C.L.; Poppi, R.J. Quantification of animal fat biodiesel in soybean biodiesel and B20 diesel blends using near infrared spectroscopy and synergy interval support vector regression. Talanta 2014, 119, 582–589. [Google Scholar] [CrossRef] [PubMed]
  227. Alviso, D.; Artana, G.; Duriez, T. Prediction of biodiesel physico-chemical properties from its fatty acid composition using genetic programming. Fuel 2020, 264, 116844. [Google Scholar] [CrossRef]
  228. Sharma, P. Gene expression programming-based model prediction of performance and emission characteristics of a diesel engine fueled with linseed oil biodiesel/diesel blends: An artificial intelligence approach. Energy Sources Part A Recovery Util. Environ. Eff. 2020, 45, 8751–8770. [Google Scholar] [CrossRef]
  229. Singh, N.K.; Singh, Y.; Sharma, A.; Rahim, E.A. Prediction of performance and emission parameters of Kusum biodiesel based diesel engine using neuro-fuzzy techniques combined with genetic algorithm. Fuel 2020, 280, 118629. [Google Scholar] [CrossRef]
  230. de Giorgi, M.G.; Campilongo, S.; Ficarella, A.; Congedo, P.M. Comparison between wind power prediction models based on wavelet decomposition with Least-Squares Support Vector Machine (LS-SVM) and Artificial Neural Network (ANN). Energies 2014, 7, 5251–5272. [Google Scholar] [CrossRef]
  231. Kong, X.; Liu, X.; Shi, R.; Lee, K.Y. Wind speed prediction using reduced support vector machines with feature selection. Neurocomputing 2015, 169, 449–456. [Google Scholar] [CrossRef]
  232. Yuan, X.; Tan, Q.; Lei, X.; Yuan, Y.; Wu, X. Wind power prediction using hybrid autoregressive fractionally integrated moving average and least square support vector machine. Energy 2017, 129, 122–137. [Google Scholar] [CrossRef]
  233. Ren, Y.; Suganthan, P.N.; Srikanth, N. A Novel Empirical Mode Decomposition with Support Vector Regression for Wind Speed Forecasting. IEEE Trans. Neural Netw. Learn. Syst. 2016, 27, 1793–1798. [Google Scholar] [CrossRef]
  234. Liu, Z. Wind speed forecasting model based on fuzzy manifold support vector machine. J. Inf. Comput. Sci. 2014, 11, 2387–2395. [Google Scholar] [CrossRef]
  235. Yu, C.; Li, Y.; Zhang, M. An improved Wavelet Transform using Singular Spectrum Analysis for wind speed forecasting based on Elman Neural Network. Energy Convers. Manag. 2017, 148, 895–904. [Google Scholar] [CrossRef]
  236. Zhao, Y.; Zhao, X.; Hu, H. Wind speed forecasting based on chaotic particle swarm optimization support vector machine. Int. J. Appl. Math. Stat. 2013, 48, 347–355. [Google Scholar]
  237. Osório, G.J.; Matias, J.C.O.; Catalão, J.P.S. Short-term wind power forecasting using adaptive neuro-fuzzy inference system combined with evolutionary particle swarm optimization, wavelet transform and mutual information. Renew. Energy 2015, 75, 301–307. [Google Scholar] [CrossRef]
  238. Zeng, J.; Qiao, W. Short-term wind power prediction using a wavelet support vector machine. IEEE Trans. Sustain. Energy 2012, 3, 255–264. [Google Scholar] [CrossRef]
  239. Lu, N.; Liu, Y. Application of support vector machine model in wind power prediction based on particle swarm optimization. Discrete Contin. Dyn. Syst. Ser. S 2015, 8, 1267–1276. [Google Scholar] [CrossRef]
  240. Wu, Q.; Peng, C. A least squares support vector machine optimized by cloud-based evolutionary algorithm for wind power generation prediction. Energies 2016, 9, 585. [Google Scholar] [CrossRef]
  241. Wang, C.; Wu, J.; Wang, J.; Hu, Z. Short-term wind speed forecasting using the data processing approach and the support vector machine model optimized by the improved cuckoo search parameter estimation algorithm. Math. Probl. Eng. 2016, 2016, 4896854. [Google Scholar] [CrossRef]
  242. Zhang, J.; Wu, Y.; Guo, Y.; Wang, B.; Wang, H.; Liu, H. A hybrid harmony search algorithm with differential evolution for day-ahead scheduling problem of a microgrid with consideration of power flow constraints. Appl. Energy 2016, 183, 791–804. [Google Scholar] [CrossRef]
  243. Siano, P.; Mokryani, G. Assessing wind turbines placement in a distribution market environment by using particle swarm optimization. IEEE Trans. Power Syst. 2013, 28, 3852–3864. [Google Scholar] [CrossRef]
  244. Pookpunt, S.; Ongsakul, W. Optimal placement of wind turbines within wind farm using binary particle swarm optimization with time-varying acceleration coefficients. Renew. Energy 2013, 55, 266–276. [Google Scholar] [CrossRef]
  245. Pookpunt, S.; Ongsakul, W. Design of optimal wind farm configuration using a binary particle swarm optimization at Huasai district, Southern Thailand. Energy Convers. Manag. 2016, 108, 160–180. [Google Scholar] [CrossRef]
  246. Ekonomou, L.; Lazarou, S.; Chatzarakis, G.E.; Vita, V. Estimation of wind turbines optimal number and produced power in a wind farm using an artificial neural network model. Simul. Model. Pract. Theory 2012, 21, 21–25. [Google Scholar] [CrossRef]
  247. Massan, S.-U.-R.; Wagan, A.I.; Shaikh, M.M.; Abro, R. Wind turbine micrositing by using the firefly algorithm. Appl. Soft Comput. J. 2015, 27, 450–456. [Google Scholar] [CrossRef]
  248. Tria, F.Z.; Srairi, K.; Benchouia, M.T.; Mahdad, B.; Benbouzid, M.E.H. An hybrid control based on fuzzy logic and a second order sliding mode for MPPT in wind energy conversion systems. Int. J. Electr. Eng. Inform. 2016, 8, 711–726. [Google Scholar] [CrossRef]
  249. Bouzekri, A.; Allaoui, T.; Denai, M.; Mihoub, Y. Artificial intelligence-based fault tolerant control strategy in wind turbine systems. Int. J. Renew. Energy Res. 2017, 7, 652–659. [Google Scholar]
  250. Soufi, Y.; Kahla, S.; Bechouat, M. Feedback linearization control based particle swarm optimization for maximum power point tracking of wind turbine equipped by PMSG connected to the grid. Int. J. Hydrog. Energy 2016, 41, 20950–20955. [Google Scholar] [CrossRef]
  251. Pelletier, F.; Masson, C.; Tahan, A. Wind turbine power curve modelling using artificial neural network. Renew. Energy 2016, 89, 207–214. [Google Scholar] [CrossRef]
  252. Morshedizadeh, M.; Kordestani, M.; Carriveau, R.; Ting, D.S.-K.; Saif, M. Application of imputation techniques and Adaptive Neuro-Fuzzy Inference System to predict wind turbine power production. Energy 2017, 138, 394–404. [Google Scholar] [CrossRef]
  253. Clifton, A.; Kilcher, L.; Lundquist, J.K.; Fleming, P. Using machine learning to predict wind turbine power output. Environ. Res. Lett. 2013, 8, 024009. [Google Scholar] [CrossRef]
  254. Yang, Z.-X.; Wang, X.-B.; Zhong, J.-H. Representational learning for fault diagnosis of wind turbine equipment: A multi-layered extreme learning machines approach. Energies 2016, 9, 379. [Google Scholar] [CrossRef]
  255. Hang, J.; Zhang, J.; Cheng, M. Application of multi-class fuzzy support vector machine classifier for fault diagnosis of wind turbine. Fuzzy Sets Syst. 2016, 297, 128–140. [Google Scholar] [CrossRef]
  256. Laouti, N.; Othman, S.; Alamir, M.; Sheibat-Othman, N. Combination of model-based observer and support vector machines for fault detection of wind turbines. Int. J. Autom. Comput. 2014, 11, 274–287. [Google Scholar] [CrossRef]
  257. Civelek, Z.; Lüy, M.; Çam, E.; Mamur, H. A new fuzzy logic proportional controller approach applied to individual pitch angle for wind turbine load mitigation. Renew. Energy 2017, 111, 708–717. [Google Scholar] [CrossRef]
  258. Meghni, B.; Dib, D.; Azar, A.T. A second-order sliding mode and fuzzy logic control to optimal energy management in wind turbine with battery storage. Neural Comput. Appl. 2017, 28, 1417–1434. [Google Scholar] [CrossRef]
  259. Van, T.L.; Nguyen, T.H.; Lee, D.-C. Advanced Pitch Angle Control Based on Fuzzy Logic for Variable-Speed Wind Turbine Systems. IEEE Trans. Energy Convers. 2015, 30, 578–587. [Google Scholar] [CrossRef]
  260. Mondal, S.; Bhattacharya, A.; Nee Dey, S.H. Multi-objective economic emission load dispatch solution using gravitational search algorithm and considering wind power penetration. Int. J. Electr. Power Energy Syst. 2013, 44, 282–292. [Google Scholar] [CrossRef]
  261. Ramadan, H.S.; Bendary, A.F.; Nagy, S. Particle swarm optimization algorithm for capacitor allocation problem in distribution systems with wind turbine generators. Int. J. Electr. Power Energy Syst. 2017, 84, 143–152. [Google Scholar] [CrossRef]
  262. Ferreira, P.M.; Ruano, A.E.; Silva, S.; Conceição, E.Z.E. Neural networks based predictive control for thermal comfort and energy savings in public buildings. Energy Build. 2012, 55, 238–251. [Google Scholar] [CrossRef]
  263. Yu, W.; Li, B.; Jia, H.; Zhang, M.; Wang, D. Application of multi-objective genetic algorithm to optimize energy efficiency and thermal comfort in building design. Energy Build. 2015, 88, 135–143. [Google Scholar] [CrossRef]
  264. Yang, M.-D.; Chen, Y.-P.; Lin, Y.-H.; Ho, Y.-F.; Lin, J.-Y. Multiobjective optimization using nondominated sorting genetic algorithm-II for allocation of energy conservation and renewable energy facilities in a campus. Energy Build. 2016, 122, 120–130. [Google Scholar] [CrossRef]
  265. Naji, S.; Keivani, A.; Shamshirband, S.; Alengaram, U.J.; Jumaat, M.Z.; Mansor, Z.; Lee, M. Estimating building energy consumption using extreme learning machine method. Energy 2016, 97, 506–516. [Google Scholar] [CrossRef]
  266. Chen, Y.; Xu, P.; Chu, Y.; Li, W.; Wu, Y.; Ni, L.; Bao, Y.; Wang, K. Short-term electrical load forecasting using the Support Vector Regression (SVR) model to calculate the demand response baseline for office buildings. Appl. Energy 2017, 195, 659–670. [Google Scholar] [CrossRef]
  267. Jain, R.K.; Smith, K.M.; Culligan, P.J.; Taylor, J.E. Forecasting energy consumption of multi-family residential buildings using support vector regression: Investigating the impact of temporal and spatial monitoring granularity on performance accuracy. Appl. Energy 2014, 123, 168–178. [Google Scholar] [CrossRef]
  268. Gomes, L.; Faria, P.; Morais, H.; Vale, Z.; Ramos, C. Distributed, agent-based intelligent system for demand response program simulation in smart grids. IEEE Intell. Syst. 2014, 29, 56–65. [Google Scholar] [CrossRef]
  269. Wen, Z.; O’Neill, D.; Maei, H. Optimal demand response using device-based reinforcement learning. IEEE Trans. Smart Grid 2015, 6, 2312–2324. [Google Scholar] [CrossRef]
  270. Ahmadi, P.; Almasi, A.; Shahriyari, M.; Dincer, I. Multi-objective optimization of a combined heat and power (CHP) system for heating purpose in a paper mill using evolutionary algorithm. Int. J. Energy Res. 2012, 36, 46–63. [Google Scholar] [CrossRef]
  271. Haghrah, A.; Nazari-Heris, M.; Mohammadi-Ivatloo, B. Solving combined heat and power economic dispatch problem using real coded genetic algorithm with improved Mühlenbein mutation. Appl. Therm. Eng. 2016, 99, 465–475. [Google Scholar] [CrossRef]
  272. Mohammadkhani, F.; Khalilarya, S.; Mirzaee, I. Exergy and exergoeconomic analysis and optimization of diesel engine based Combined Heat and Power (CHP) system using genetic algorithm. Int. J. Exergy 2013, 12, 139–161. [Google Scholar] [CrossRef]
  273. Yazdi, B.A.; Yazdi, B.A.; Ehyaei, M.A.; Ahmadi, A. Optimization of micro combined heat and power gas turbine by genetic algorithm. Therm. Sci. 2015, 19, 207–218. [Google Scholar] [CrossRef]
  274. Gopalakrishnan, H.; Kosanovic, D. Operational planning of combined heat and power plants through genetic algorithms for mixed 0-1 nonlinear programming. Comput. Oper. Res. 2015, 56, 51–67. [Google Scholar] [CrossRef]
Figure 1. Keyword co-occurrence network constructed for terms with a minimum threshold of 15, considering only the literature reviews published between 1989 and 2023. The numbers following the term indicate appearances and citations, respectively. The size of the nodes is proportional to the number of appearances of the keyword. The width and darkness of links show similarity between terms, e.g., the terms tend to appear together in the documents.
Figure 1. Keyword co-occurrence network constructed for terms with a minimum threshold of 15, considering only the literature reviews published between 1989 and 2023. The numbers following the term indicate appearances and citations, respectively. The size of the nodes is proportional to the number of appearances of the keyword. The width and darkness of links show similarity between terms, e.g., the terms tend to appear together in the documents.
Energies 16 06974 g001
Figure 2. Thematic clusters per year for the reviews published from 2011 to 2023.
Figure 2. Thematic clusters per year for the reviews published from 2011 to 2023.
Energies 16 06974 g002
Figure 3. Methodology implemented to design the search string.
Figure 3. Methodology implemented to design the search string.
Energies 16 06974 g003
Figure 4. Number of documents per year. The number above each marker indicates the total citations per year.
Figure 4. Number of documents per year. The number above each marker indicates the total citations per year.
Energies 16 06974 g004
Figure 5. Co-authorship among the top 20 authors with more documents or more citations. Numbers following the name indicate the total number of documents and citations.
Figure 5. Co-authorship among the top 20 authors with more documents or more citations. Numbers following the name indicate the total number of documents and citations.
Energies 16 06974 g005
Figure 6. Co-authorship among the top 20 countries with more documents or more citations. Numbers following the name indicate the total number of documents and citations.
Figure 6. Co-authorship among the top 20 countries with more documents or more citations. Numbers following the name indicate the total number of documents and citations.
Energies 16 06974 g006
Figure 7. Clusters per year ordered by the number of terms in each cluster.
Figure 7. Clusters per year ordered by the number of terms in each cluster.
Energies 16 06974 g007
Figure 8. Trending keywords per year.
Figure 8. Trending keywords per year.
Energies 16 06974 g008
Table 1. Most cited reviews.
Table 1. Most cited reviews.
AuthorsYearCitationsTitle
Voyant et al. [15] 20171034Machine learning methods for solar radiation forecasting: A review
Vinuesa et al. [14] 2020631The role of artificial intelligence in achieving the Sustainable Development Goals
Raza and Khosravi [19]2015612A review on artificial intelligence-based load demand forecasting techniques for smart grid and buildings
Wang et al. [18] 2019496A review of deep learning for renewable energy forecasting
Yadav and Chandel [20]2014494Solar radiation prediction using Artificial Neural Network techniques: A review
Stetco et al. [16] 2019460Machine learning methods for wind turbine condition monitoring: A review
Suganthi et al. [21] 2015387Applications of fuzzy logic in renewable energy systems—A review
Vasquez-Cantely and Nagy [17] 2019381Reinforcement learning for demand response: A review of algorithms and modeling techniques
Elsheikh et al. [22]2019379Modeling of solar energy systems using artificial neural network: A comprehensive review
Yarlagadda et al. [23]2018337Boosting Fuel Cell Performance with Accessible Carbon Mesopores
Table 2. Parameters of the study.
Table 2. Parameters of the study.
ParameterValue
DatabaseScopus
Years of AnalysisFrom 2013 to 2022
Data Retrieval23 August 2023
Search StringIt is derived using an iterative construction method, which will be elaborated upon in the subsequent section.
Inclusion CriteriaArticles published in peer-reviewed journals and conference proceedings, specifically those in English.
Exclusion CriteriaNone
Table 3. Collected keywords to design the search string.
Table 3. Collected keywords to design the search string.
Sustainable Energy (SE)Artificial
Intelligence (AI)
Total
Journals classified in quartiles Q1 and Q2.103100203
Publications between 2013 and 2022274,764123,362398,126
Keywords334,527203,443516,244
Table 4. Annual performance metrics.
Table 4. Annual performance metrics.
YearDocumentsCitationsAverage Citations per DocumentAverage Citations per Document per Year
201357319,17833.473.35
201472323,61232.663.63
201573424,72533.694.21
201697730,94931.684.53
2017111133,91730.535.09
2018152346,05330.246.05
2019225656,20124.916.23
2020267857,90321.627.21
2021344845,92513.326.66
2022469227,5185.865.86
Table 5. Performance metrics for the top 20 most productive and top 20 most cited authors.
Table 5. Performance metrics for the top 20 most productive and top 20 most cited authors.
AuthorRank
OCC
Rank
GCS
OCCGCSLCSH-IndexG-IndexM-Index
Javaid N *1185012901291872.25
Vale Z28237690381451.4
Mekhilef S *353216732832182.1
Hannan MA *4173012632271972.11
Ismail B/1518073017425730.7
Chen Z/26 *692513951821771.7
Blaabjerg F730241048991673.2
Lipu MSH833239771921372.17
HongWen H *942217013761472.33
Wang J/107 *10122213812051571.67
Rezk H116422755951362.17
Dash PK1273227181061261.71
Catalao JPS1378226951201251.5
Chen Z/721412422602711151.1
Yang Q/201537622400641041.67
Hu X/8 *16102113932081671.78
Khatib T1767217461131361.44
Wang F/301834209692001171.38
Hussain A/31944208701651362.17
Salcedo-Sanz S205720812121661.5
Xiong R2411922803351781.89
Liu H/602521920364671591.88
He H/63461716281551371.3
Shamshirband S/14281614752261581.67
Wang Z/4543201612382231271.33
Liu T/256151513542871381.62
Li Y-F/211331218234241191.38
Dong ZY114111213882161271.33
Wang HZ1757101588350961.29
Chen Z/552431991241184861
Mi X-W4101671272300771.17
Peng JC5981361378299660.86
Liu YT8721451366299550.71
OCC: occurrences; GCS: global citation score; LCS: local citation score. * Authors simultaneously belong to the top 20 most frequent and top 20 most cited authors.
Table 6. Performance metrics for the top 20 most productive and top 20 most cited affiliations.
Table 6. Performance metrics for the top 20 most productive and top 20 most cited affiliations.
AffiliationRank
OCC
Rank
GCS
OCCGCSLCSH IndexG IndexM Index
North China Electric Power Univ (CHN) *122967904106444114.4
Islamic Azad Univ (IRN) *23206661337043114.3
Tsinghua Univ (CHN) *34203658264942114.2
Min of Education (CHN) *46187576054841104.1
Huazhong Univ of Sci and Technol (CHN) *55176621670747114.7
Beijing Inst of Tech (CHN) *611627200118045114.5
N Inst of Technol (IND) *71515628952852982.9
Zhejiang Univ (CHN) *81614728752293083.
Chongqing Univ (CHN) *99130481259542104.2
Southeast Univ (CHN)103211121162472582.5
Shanghai Jiao Tong Univ (CHN) *111710628371963183.
Univ of Chinese Acad of Sciences (CHN) *121310530522292793.38
Aalborg Univ (DNK) *131810427782062892.8
Shandong Univ (CHN)1496991160812062.
Wuhan Univ of Technol (CHN)15369820281372873.11
Tianjin Univ (CHN) *16209625583052582.5
Univ of Tehran (IRN) *17119537012543593.5
Univ of California (USA)18239424242102582.5
Nanyang Technological Univ (SGP) *191093409835234113.4
N Univ of Singapore (SGP) *20128631463942792.7
Univ of Malaya (MYS)22884487359840114.
Univ of Sci and Technol of China (CHN)23783533031034114.25
City Univ of Hong Kong (HKG)311472297253428102.8
Shenzhen Univ (CHN)65194925714532183.
OCC: occurrences; GCS: global citation score; LCS: local citation score. * Affiliations simultaneously belonging to the groups of top 20 most frequent affiliations and top 20 most cited affiliations.
Table 7. Performance metrics for the top 20 most productive and top 20 most cited countries.
Table 7. Performance metrics for the top 20 most productive and top 20 most cited countries.
CountryRank
OCC
Rank
GCS
OCCGCSLCSH IndexG IndexM Index
China*116221144,19718,2381491814.9
India*23248831,678259575127.5
United States*32180550,07853291051610.5
Iran*4484723,672178777137.7
United Kingdom*5580321,037203773137.3
South Korea*6672318,017187163136.3
Malaysia*7958214,828160363126.3
Canada*8855715,984177263136.3
Australia*9749817,394167365136.5
Saudi Arabia*101248510,11274849114.9
Spain*111048112,59886758125.8
Turkey*121946881599094594.5
Taiwan*13134409351102848104.8
Italy*141143711,022117555125.5
Egypt*1518424856661647104.7
Germany*1615418894574947124.7
France*1714399914690249134.9
Algeria*1820380766093044114.4
Morocco192937834753822772.7
Indonesia203033030092812372.3
Singapore2417235876189751125.1
Hong Kong25162108800105752115.2
OCC: occurrences; GCS: global citation score; LCS: local citation score. * Countries simultaneously belonging to the groups of top 20 most frequent countries and top 20 most cited countries.
Table 8. Performance metrics for the top 20 most frequent and top 20 most cited sources.
Table 8. Performance metrics for the top 20 most frequent and top 20 most cited sources.
AffiliationRank
OCC
Rank
GCS
OCCGCSLCSH IndexG IndexM Index
ENERGIES *1571315,379174857115.7
ENERGY *2240822,846267283138.3
IEEE ACCESS *3640411,586162154119
APPL ENERGY *4133223,675335487158.7
RENEW ENERGY *5426616,080219574137.4
J PHYS CONF SER611824840642730.78
ENERGY CONVERS MANAGE *7322216,997266581148.1
ENERGY REP83416318531302165.25
APPL SCI *92016228483952573.12
INT J HYDROGEN ENERGY *101414746434273993.9
J ENERGY STORAGE *111812931514562783.86
IOP CONF SER EARTH ENVIRON SC1214512630753830.8
J CLEAN PROD *1310117553063945105.62
INT J ENERGY RES144111315451712372.3
SOL ENERGY *157110623072547114.7
INT J ELECTR POWER ENERGY SYS *1611107541051744104.4
J POWER SOURCES *179105589974942124.2
J MATER CHEM A *1817903190263493.78
J RENEWABLE SUSTAINABLE ENERG19478813132142162.1
IEEE POWER ENERGY SOC GEN MEE208188667971551.5
IEEE TRANS SMART GRID30872593960142124.2
ENERGY BUILD311272517845441114.1
IEEE TRANS IND INF371566408736833103.3
APPL SOFT COMPUT J52194729913333093
IEEE TRANS IND ELECTRON581343488351430113
IEEE TRANS SUSTAINABLE ENERGY611643351136526112.89
OCC: occurrences; GCS: global citation score; LCS: local citation score. * Affiliations simultaneously belonging to the groups of top 20 most frequent affiliations and top 20 most cited affiliations.
Table 9. Dataset coverage.
Table 9. Dataset coverage.
YearDocumentsDocuments with N/AUsable
Documents
Selected
Threshold
CoverageUsed
Documents
2013573116457390.8%415
2014723130593590.2%535
201573495639490.6%579
2016977134843590.4%762
20171111166945491.0%860
201815232271296491.4%1185
201922562931963690.1%1768
202026783592319491.3%2116
202134484343014591.0%2742
202246925314161590.9%3784
Table 10. Clusters obtained for each year of the period of analysis.
Table 10. Clusters obtained for each year of the period of analysis.
YearClusterNumber of
Keywords
PercentageMain Keywords
201312729.3%GENETIC_ALGORITHMS; PARTICLE_SWARM_OPTIMIZATION; DISTRIBUTED_GENERATION; WIND_ENERGY; DATA_MINING
22325.0%ARTIFICIAL_NEURAL_NETWORKS; RADIAL_BASIS_FUNCTION_NETWORK; WIND_SPEED; BIODIESEL; PEMFC
31819.6%MPPT; FUZZY_LOGIC_CONTROL; PHOTO_VOLTAIC; FUZZY_LOGIC; PHOTO_VOLTAIC_SYSTEM
41718.5%ELECTRIC_AND_HYBRID_VEHICLES; SUPPORT_VECTOR_MACHINES; SMART_GRID; MICRO_GRID; ENERGY_MANAGEMENT
577.6%WIND_TURBINES; DIFFERENTIAL_EVOLUTION; EVOLUTIONARY_ALGORITHMS; PARAMETER_PREDICTION; SOLAR_CELLS
201412233.8%ARTIFICIAL_NEURAL_NETWORKS; GENETIC_ALGORITHMS; WIND_ENERGY; SUPPORT_VECTOR_MACHINES; WIND_TURBINES
21624.6%DISTRIBUTED_GENERATION; SMART_GRID; MICRO_GRID; ENERGY_EFFICIENCY; ADAPTIVE_NEURO_FUZZY_INFERENCE_SYSTEM
31523.1%PARTICLE_SWARM_OPTIMIZATION; ELECTRIC_AND_HYBRID_VEHICLES; ENERGY_MANAGEMENT; LITHIUM_BATTERIES; STATE_OF_CHARGE
41218.5%MPPT; FUZZY_LOGIC; FUZZY_LOGIC_CONTROL; PHOTO_VOLTAIC_SYSTEM; PHOTO_VOLTAIC
201512631.7%GENETIC_ALGORITHMS; FUZZY_LOGIC; SMART_GRID; MICRO_GRID; DISTRIBUTED_GENERATION
22125.6%ARTIFICIAL_NEURAL_NETWORKS; WIND_TURBINES; WIND_ENERGY; WIND_SPEED_FORECASTING; SOLAR_RADIATION
31518.3%ELECTRIC_AND_HYBRID_VEHICLES; SUPPORT_VECTOR_MACHINES; ENERGY_MANAGEMENT; CHARGING_STRATEGIES; Q_LEARNING
41417.1%PARTICLE_SWARM_OPTIMIZATION; FUZZY_LOGIC_CONTROL; MPPT; PHOTO_VOLTAIC; DIFFERENTIAL_EVOLUTION
567.3%PHOTO_VOLTAIC_SYSTEM; PI_CONTROL; FIREFLY_ALGORITHMS; ANT_COLONY_OPTIMIZATION; INTELLIGENT_CONTROL
201613032.6%ARTIFICIAL_NEURAL_NETWORKS; SUPPORT_VECTOR_MACHINES; WIND_TURBINES; WIND_SPEED_FORECASTING; SOLAR_RADIATION
22426.1%PARTICLE_SWARM_OPTIMIZATION; MICRO_GRID; SMART_GRID; ELECTRIC_AND_HYBRID_VEHICLES; ENERGY_MANAGEMENT
31920.7%FUZZY_LOGIC_CONTROL; MPPT; PHOTO_VOLTAIC; FUZZY_LOGIC; DISTRIBUTED_GENERATION
41213.0%GENETIC_ALGORITHMS; DIFFERENTIAL_EVOLUTION; ENERGY_EFFICIENCY; MULTI_OBJECTIVE_OPTIMIZATION; ARTIFICIAL_BEE_COLONY
577.6%WIND_ENERGY; EVOLUTIONARY_ALGORITHMS; PROBABILISTIC_FORECASTING; WIND_FARM; UNCERTAINTY
201714330.1%ARTIFICIAL_NEURAL_NETWORKS; SUPPORT_VECTOR_MACHINES; LITHIUM_BATTERIES; EXTREME_LEARNING_MACHINE; SOLAR_RADIATION
23323.1%PARTICLE_SWARM_OPTIMIZATION; MICRO_GRID; ELECTRIC_AND_HYBRID_VEHICLES; SMART_GRID; ENERGY_MANAGEMENT
32819.6%MPPT; FUZZY_LOGIC_CONTROL; FUZZY_LOGIC; PHOTO_VOLTAIC; PHOTO_VOLTAIC_SYSTEM
41812.6%WIND_ENERGY; ENERGY_EFFICIENCY; DATA_MINING; DEEP_LEARNING; CLUSTERING_ALGORITHMS
5149.8%GENETIC_ALGORITHMS; WIND_TURBINES; DISTRIBUTED_GENERATION; WIND_FARM; ENERGY
674.9%ARTIFICIAL_BEE_COLONY; SOLAR_CELLS; META_HEURISTIC_ALGORITHM; GRAVITATIONAL_SEARCH_ALGORITHM; PARAMETER_PREDICTION
201815929.4%ARTIFICIAL_NEURAL_NETWORKS; SUPPORT_VECTOR_MACHINES; DEEP_LEARNING; ADAPTIVE_NEURO_FUZZY_INFERENCE_SYSTEM; WIND_SPEED_FORECASTING
23919.4%PARTICLE_SWARM_OPTIMIZATION; MPPT; FUZZY_LOGIC_CONTROL; PHOTO_VOLTAIC; FUZZY_LOGIC
33617.9%GENETIC_ALGORITHMS; SMART_GRID; ENERGY_EFFICIENCY; ENERGY_CONSUMPTION; DATA_MINING
43014.9%MICRO_GRID; ENERGY_MANAGEMENT; REINFORCEMENT_LEARNING; DISTRIBUTED_GENERATION; MULTI_OBJECTIVE_OPTIMIZATION
52411.9%ELECTRIC_AND_HYBRID_VEHICLES; LITHIUM_BATTERIES; STATE_OF_CHARGE; ENERGY_STORAGE; STATE_OF_HEALTH
6136.5%WIND_TURBINES; FAULT_DIAGNOSIS; ENERGY; FEATURE_EXTRACTION; CONDITION_MONITORING
201915630.3%SMART_GRID; GENETIC_ALGORITHMS; ELECTRIC_AND_HYBRID_VEHICLES; MICRO_GRID; ENERGY_MANAGEMENT
25228.1%DEEP_LEARNING; LONG_SHORT_TERM_MEMORY_NETWORK; SUPPORT_VECTOR_MACHINES; CONVOLUTIONAL_NEURAL_NETWORK; LITHIUM_BATTERIES
33921.1%ARTIFICIAL_NEURAL_NETWORKS; WIND_TURBINES; WIND_ENERGY; ENERGY_EFFICIENCY; ENERGY_CONSUMPTION
43820.5%MPPT; PARTICLE_SWARM_OPTIMIZATION; FUZZY_LOGIC_CONTROL; PHOTO_VOLTAIC; FUZZY_LOGIC
202017623.0%ELECTRIC_AND_HYBRID_VEHICLES; GENETIC_ALGORITHMS; SMART_GRID; MICRO_GRID; REINFORCEMENT_LEARNING
27221.8%DEEP_LEARNING; LONG_SHORT_TERM_MEMORY_NETWORK; CONVOLUTIONAL_NEURAL_NETWORK; WIND_ENERGY; SOLAR_RADIATION
36920.8%PARTICLE_SWARM_OPTIMIZATION; MPPT; PHOTO_VOLTAIC; FUZZY_LOGIC_CONTROL; PHOTO_VOLTAIC_SYSTEM
46419.3%ARTIFICIAL_NEURAL_NETWORKS; LITHIUM_BATTERIES; SUPPORT_VECTOR_MACHINES; STATE_OF_CHARGE; ENERGY_CONSUMPTION
5216.3%MULTI_OBJECTIVE_OPTIMIZATION; SOLAR_CELLS; ARTIFICIAL_BEE_COLONY; INTEGRATED_ENERGY_SYSTEMS; SENSITIVITY_ANALYSIS
6206.0%WIND_TURBINES; FAULT_DETECTION; DOUBLY_FED_INDUCTION_GENERATOR; CONDITION_MONITORING; ANOMALY_DETECTION
792.7%OXYGEN_EVOLUTION_REACTION; ELECTROCATALYSTS; METAL_ORGANIC_FRAMEWORKS; HYDROGEN_EVOLUTION_REACTION; DENSITY_FUNCTIONAL_THEORY
202119527.6%ELECTRIC_AND_HYBRID_VEHICLES; MICRO_GRID; REINFORCEMENT_LEARNING; SMART_GRID; ENERGY_MANAGEMENT
29427.3%ARTIFICIAL_NEURAL_NETWORKS; GENETIC_ALGORITHMS; PARTICLE_SWARM_OPTIMIZATION; PHOTO_VOLTAIC; MPPT
38625.0%DEEP_LEARNING; LONG_SHORT_TERM_MEMORY_NETWORK; LITHIUM_BATTERIES; CONVOLUTIONAL_NEURAL_NETWORK; RECURRENT_NEURAL_NETWORKS
44212.2%WIND_TURBINES; SUPPORT_VECTOR_MACHINES; FAULT_DIAGNOSIS; FAULT_DETECTION; RANDOM_FOREST
5236.7%OXYGEN_EVOLUTION_REACTION; ELECTROCATALYSTS; OXYGEN_REDUCTION_REACTION; HYDROGEN_EVOLUTION_REACTION; PEROVSKITE_SOLAR_CELLS
641.2%MULTI_OBJECTIVE_OPTIMIZATION; NSGA_II; BUILDING_ENERGY_CONSUMPTION; THERMAL_COMFORT
2022113227.9%ELECTRIC_AND_HYBRID_VEHICLES; ENERGY_MANAGEMENT; GENETIC_ALGORITHMS; MICRO_GRID; SMART_GRID
210221.6%DEEP_LEARNING; LONG_SHORT_TERM_MEMORY_NETWORK; CONVOLUTIONAL_NEURAL_NETWORK; WIND_TURBINES; WIND_ENERGY
38518.0%PARTICLE_SWARM_OPTIMIZATION; MPPT; PHOTO_VOLTAIC; FUZZY_LOGIC_CONTROL; PHOTO_VOLTAIC_SYSTEM
47816.5%ARTIFICIAL_NEURAL_NETWORKS; SUPPORT_VECTOR_MACHINES; PEMFC; RANDOM_FOREST; EXTREME_GRADIENT_BOOSTING
55010.6%LITHIUM_BATTERIES; STATE_OF_CHARGE; STATE_OF_HEALTH; TRANSFER_LEARNING; REMAINING_USEFUL_LIFE
6265.5%OXYGEN_EVOLUTION_REACTION; HYDROGEN_EVOLUTION_REACTION; OXYGEN_REDUCTION_REACTION; PEROVSKITE_SOLAR_CELLS; OXYGEN_VACANCIES
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Velásquez, J.D.; Cadavid, L.; Franco, C.J. Intelligence Techniques in Sustainable Energy: Analysis of a Decade of Advances. Energies 2023, 16, 6974. https://doi.org/10.3390/en16196974

AMA Style

Velásquez JD, Cadavid L, Franco CJ. Intelligence Techniques in Sustainable Energy: Analysis of a Decade of Advances. Energies. 2023; 16(19):6974. https://doi.org/10.3390/en16196974

Chicago/Turabian Style

Velásquez, Juan D., Lorena Cadavid, and Carlos J. Franco. 2023. "Intelligence Techniques in Sustainable Energy: Analysis of a Decade of Advances" Energies 16, no. 19: 6974. https://doi.org/10.3390/en16196974

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop