1. Introduction
In light of the increasing impact of climate change and high demand for energy, the global energy system has transformed from a standard and unidirectional framework to a more flexible and open model, where consumers and other stakeholders play an integral role in its design and operation. The energy industry has undergone significant transformation through the integration of ICT, leading to the establishment of a dynamic and intelligent system that enhances efficiency across energy generation, transmission, and distribution via intelligent networks known as smart grids [
1].
As stated in the Smart Grid System Report from the U.S. Department of Energy [
2], smart grids are modern electricity networks that integrate advanced digital technologies, including sensing, data processing, communication, computing, and control systems to coordinate and optimize various grid operations. By incorporating sustainable solutions like microgrids, they aim to provide a greener energy system with enhanced efficiency and improved power delivery. As such, the topology of smart grids is highly flexible and can combine multiple architectures to meet the specific needs of urban, rural, or industrial areas. These distributed networks are designed to promote resilience, energy efficiency, and the integration of renewable technologies, while enabling real-time energy management and active participation from both users and manufacturers [
3].
In Morocco, the adoption of smart grids is emphasized as a key section of the New Development Model (NMD), which aims to promote decentralized and efficient energy production for competitive electricity access across regions [
4]. Aligned with its Energy Transition Strategy for 2021–2023 and its overarching renewable energy objectives—achieving 37.2% of installed electricity capacity from renewable sources in 2021, with a target of 52% by 2030—the country established a modern smart grid research and development center, the smart grids Test Lab, in February 2023. This facility is located in the Green City of Benguerir within the Green & Smart Building Park [
5]. This center serves as a hub for testing and showcasing advanced Smart Grid technologies and is equipped with a 300 kVA microgrid.
Overall, smart grids offer substantial benefits to the energy ecosystem by utilizing ICT to improve energy distribution efficiency, enhance grid stability, and promote sustainable energy solutions. However, the distributed systems underlying smart grid operations can trigger cybersecurity risks, resulting in disruptions in infrastructure, power outages, unauthorized energy consumption, privacy violations, and other issues, as emphasized in [
6]. In addition, smart grids often integrate older infrastructure with modern systems, creating compatibility gaps and potential weaknesses for cyberattacks. Furthermore, the flexible topology, which allows components to join or leave the grid dynamically, can lead to insecure configurations if not properly managed.
On the other hand, the growing number of devices at the grid’s edge is driving an exponential increase in data generation, creating a pressing need for advanced computational capabilities and improved data processing systems to effectively handle, integrate, and analyze the information. This, in turn, enhances data security and supports decision-making, both of which are crucial for maintaining the efficiency and resilience of smart grids. Consequently, researchers have been prompted to explore innovative technologies, notably AI and blockchain, to achieve these objectives.
The adoption of AI techniques in Smart Grid systems is becoming increasingly prominent, reflecting the growing recognition of their potential, as evidenced by the increasing volume of AI research dedicated to applications on smart grids throughout the last decade. Indeed, AI techniques have made significant advancements in key tasks, such as anomaly detection [
7,
8], which helps identify irregular grid behaviors that could lead to performance issues. In addition, electric power load forecasting can be improved through the use of machine learning and deep learning model, which enable more precise predictions of future electricity demands [
9]. This capability is important for enhancing power generation, allocation and ensuring sufficient supply to meet consumer demands [
10].
Alternatively, blockchain technology provides a distributed digital ledger that guarantees safe, transparent, and immutable data storage in a peer-to-peer (P2P) network [
11]. In the energy sector, blockchains offer a reliable platform for managing transactions by ensuring immutability and transparency. Within smart grids, blockchain can optimize energy transactions by securely tracking the flow of energy between decentralized producers and consumers [
12]. Furthermore, smart contracts within the blockchain network can automatically validate and execute transactions based on predefined conditions, ensuring data integrity and preventing unauthorized access [
13]. In addition, blockchain facilitates auditing by providing access to a complete transaction history, ensuring the precision and trustworthiness of energy exchanges in smart grids. Due to its transparent and secure nature, blockchain enhances trust, accountability, and operational efficiency in energy management systems, framing it as an optimal approach to address Smart Grid challenges.
Given the diverse contributions of blockchain and AI technologies in enhancing the security of smart grids, this review adopts a bibliometric approach to assess the expanding body of scientific literature on Smart Grid security, emphasizing the integration of blockchain and AI. The focus is on Morocco’s energy transition, exploring how these technologies support and fortify the country’s efforts in securing its smart grid infrastructure. This study evaluated a dataset of 9,611 manuscripts published between 2014 and 2024, with the primary objective of developing a strategic framework for utilizing advanced technologies to tackle the evolving cybersecurity challenges confronting smart grids, both globally and within Morocco.
This paper is structured as such:
Section 2 presents a summary of the existing literature on smart grid security, with a focus on the role of AI and blockchain technologies.
Section 3 outlines the methodology adapted for the bibliometric analysis, detailing the data selection criteria and the tools and strategy applied.
Section 4 presents the analysis results, highlighting Morocco’s contributions to the global research landscape.
Section 5 presents a detailed discussion of the study’s implications and potential contributions, highlighting recent advancements in AI and blockchain technologies for securing smart grids. Finally,
Section 6 summarizes the key findings and highlights opportunities for further research.
2. Related Work
This section presents an overview of recent bibliometric studies that focus on the application of AI and blockchain technologies in smart grid security. It highlights major contributions, methodological approaches, and limitations that shape the current state of research in this evolving field as presented in
Table 1.
Within the past decade, researchers have extensively explored the use of AI and blockchain solutions for securing smart grids, and it is essential to examine the existing literature to highlight the limitations and opportunities within this field. This section provides a detailed exploration of recent bibliometric studies in this area as presented in
Table 1.
Study [
14] emphasized the role of AI in optimizing grid operations and enhancing cybersecurity, highlighting its ability to predict energy demand and detect anomalies in real time. The authors suggested that machine learning models, such as Long Short-Term Memory (LSTM) networks, can effectively analyze time-series data to anticipate and mitigate disruptions in energy distribution. This finding shows the capability of AI to enhance grid reliability and performance.
In [
15], the authors explored the implementation of deep learning models for detecting anomalies, particularly in identifying threats like False Data Injection (FDI) attacks. The study emphasized that Conditional Deep Belief Networks (CDBNs) excel in recognizing patterns in complex datasets, making them suitable for detecting sophisticated cyber threats. However, the computational demands of these models remain a challenge, especially in resource-constrained environments.
The bibliometric analysis [
16] highlights the role of AI in renewable energy infrastructures and its integration with smart grid technology. The authors stated that AI models improve accuracy in predicting solar radiation and wind speed, which are essential for optimizing energy generation and distribution in smart grids. Furthermore, the study demonstrates the use of AI in enhancing the stability of smart grids under varying operational conditions. Nevertheless, region-specific conditions such as unique climate conditions have been identified as potential limitations that can cause detection failures in AI models.
Table 1.
Summary of recent bibliometric reviews on smart grid security, AI, and blockchain.
Table 1.
Summary of recent bibliometric reviews on smart grid security, AI, and blockchain.
Study | Database (s) | of Articles | Time Span | Strengths and Limitations |
---|
artificial intelligence in smart grids: A bibliometric analysis and scientific mapping study (2023) [14] | Scopus, WoS | 1926 | 2005–2022 | - +
Inclusion of various descriptive statistics (e.g., annual scientific production, impactful authors, affiliations, countries) and thematic evolution provides a holistic view of the field. - +
Highlights challenges such as international collaboration gaps, low cross-country studies. - –
Exclusion of the gray literature, industry reports, and non-indexed journals could limit the findings’ applicability.
|
Big Data and artificial intelligence Application in Energy Field: A Bibliometric Analysis (2022) [15] | SCI-E, SSCI (WoS) | 3842 | 2001–2020 | - +
Divided research evolution into three distinct stages to provide historical context and to help understand shifts in research priorities. - +
Broad time span covering the evolution of big data, AI, and energy search over 20 years. - –
The bibliometric analysis is limited to specific indices (SCI-E and SSCI), potentially missing interdisciplinary contributions.
|
artificial intelligence in renewable energy: A comprehensive bibliometric analysis (2022) [16] | WoS | 469 | 1985–2022 | - +
Use of multiple tools for bibliometric analysis enhances the depth of analysis. - +
Retrieved publications across a very broad timeframe of 39 years to provide an in-depth historical context. - –
Limited dataset size. - –
Reliance solely on the Web of Science Core Collection, excluding relevant publications in other databases.
|
blockchain in smart grids: A Bibliometric Analysis and Scientific Mapping Study (2024) [17] | Scopus, WoS | 1041 | 2015–2022 | - +
Article presents evidence of the growing interest in the topic, with a 127.9% annual growth rate in research publications. - –
Limited time frame of 7 years means that recent breakthroughs are not fully captured. - –
Dominance of conference papers (424) compared to journal articles (383).
|
blockchain technology in the smart city: A bibliometric review (2021) [18] | Scopus | 148 | 2016–2020 | - +
Introduces theoretical frameworks like SET and TCE. - +
Suggests managerial implications for practitioners and government officials. - –
Very limited time frame of 4 years. - –
Very limited dataset of 148 publications.
|
blockchain and energy: A bibliometric analysis and review (2021) [19] | WoS | 166 | 2008–2019 | - +
Comprehensive methodology through the use of co-citation analysis and exploratory factor analysis to identify six distinct research streams. - –
Very limited dataset. - –
Reliance on Web of Science as the sole database.
|
Proposed study | Scopus | 9611 | 2014–2024 | - +
A set of bibliometric tools (e.g., Bibliometrix R, VOSviewer) were used for analysis. - +
Usage of an exhaustive and large dataset to ensure the robustness of findings. - +
Includes visual representations of data, such as trends in publication types and citation networks to enhance comprehension. - –
Reliance on a single database (Scopus) may limit the comprehensiveness of the dataset.
|
Blockchain technology has also gained significant attention for its role in decentralizing energy management systems. A bibliometric analysis [
17] examined blockchain’s potential in data integrity and storage. The study highlights how distributed ledger technologies could ensure data authenticity and prevent unauthorized access, making blockchain a robust solution for smart grid cybersecurity. However, scalability issues and latency introduced by consensus mechanisms, such as Proof-of-Work, were identified as significant challenges to adopting these technologies.
In the bibliometric study [
18], authors explored how blockchain technology presents important potential for smart grids by enhancing efficiency, security, and decentralization. Authors argued that blockchain technology allows for deploying Peer-to-Peer platforms for energy trading, allowing decentralized energy producers (e.g., households with solar panels) to trade excess energy directly with consumers. Nonetheless, the study emphasized that blockchain’s current limitations in handling large-scale transactions need to be addressed.
In another study [
19], researchers reviewed the use of blockchain for securing energy transactions, focusing on its ability to provide tamper-proof records through smart contracts. The authors argued that blockchain enables secure and transparent energy trading, reducing reliance on centralized authorities. Despite its advantages, the study noted issues associated with excessive energy consumption and integration complexity.
Notably, while AI and blockchain have been extensively studied as separate technologies, their combined potential to revolutionize smart grid management remains an area of emerging research with significant opportunities for innovation. Regardless, bibliometric studies on this topic often rely on limited datasets or employ conventional methods, leading to inconsistent conclusions and clustering outputs. These limitations suggest that a more comprehensive bibliometric analysis, encompassing a larger dataset and employing advanced visualization tools, is necessary to bridge existing gaps. From these perspectives, the present study seeks to offer a detailed bibliometric overview of the adoption of AI and blockchain for smart grid security, by analyzing 9611 articles from the Scopus database through advanced tools. It seeks to advance the understanding of these technologies and their integration, ultimately contributing to the design of more robust and environmentally friendly smart grid systems.
3. Materials and Methods
A Bibliometric analysis is a systematic and quantitative method used to evaluate the literature in a research field by examining publication trends, citation relationships, and thematic trends. This approach provides researchers with knowledge of the dynamics of scientific knowledge within a given domain, facilitating the identification of key contributors, influential works, and emerging topics [
20]. The present bibliometric analysis aims to comprehensively explore and evaluate the scope of research on AI and blockchain technologies for smart grid security. The steps of our process are outlined as follows:
Formulating the research questions relevant to the study.
Highlighting the selected data source.
Constructing the search query and collecting data.
Summarizing and synthesizing the findings of the study.
The papers reviewed in this study are sourced from reputable and renowned publishers, such as MDPI, IEEE, Elsevier, and Springer. These publishers are widely acknowledged for their significant contributions to scientific research and are known for publishing high-quality work across various disciplines.
3.1. Research Questions
For a comprehensive and concise analysis, a bibliometric study should be structured around clearly defined research questions. This study focuses on the following questions, aimed at examining the role of AI and blockchain in securing smart grids:
- 1.
What is the present state of research regarding the application of AI and blockchain in smart grids?
- 2.
Which authors have made the most significant contributions and demonstrated high productivity in this field?
- 3.
Which institutions are leading and making the most significant contributions in this field of research?
- 4.
What is the current status of research in Morocco, and what progress has been achieved in recent years?
- 5.
What are the security challenges and limitations associated with AI-based approaches in smart grids?
- 6.
How well do blockchain-based methods mitigate the limitations of AI-based security systems in smart grids?
- 7.
What are the existing challenges and limitations of approaches that integrate both AI and blockchain technologies?
- 8.
What are the potential future research avenues in this field?
3.2. Data Source
The choice of Scopus as the primary database for this bibliometric study is justified by its extensive coverage of the scholarly literature across multiple disciplines [
21], particularly African scientific publications. Indeed, a focus on Moroccan research was essential for this analysis, and, as noted by the National Center for Scientific and Technical Research (CNRST), Moroccan universities are well represented in the Scopus database [
22], making the latter an appropriate resource for conducting bibliometric studies focused on Morocco. The “advanced search” feature of Scopus was used to conduct the search, with the option of searching within the documents’ titles, abstracts, and keywords. The search was conducted on 19 December 2024.
While Scopus offers strong metadata consistency and tool compatibility (e.g., VOSviewer, Bibliometrix), we acknowledge that limiting the analysis to a single database introduces potential selection bias. Other platforms, such as Web of Science or IEEE Xplore, may contain relevant publications not indexed in Scopus. Future bibliometric research could benefit from multi-database integration to improve comprehensiveness and cross-validation of findings.
3.3. Data Collection
The search queries were constructed using keywords pertinent to the research subject, in addition to the inclusion of keywords in relation to themes of AI and blockchain due to their extensive use for improving the security and performance of smart grids [
23]. Publications were collected through the execution of a combination of search queries highlighted in
Table 2.
Figure 1 demonstrates the search strategy employed in this research.
The process begins with the identification stage, where a total of 11,371 records were retrieved from Scopus. These records were initially refined based on specific criteria, including publication years (2014–2024), document types (conference papers, articles, reviews, book chapters, and books), and language (English). After applying these criteria, 10,070 documents were deemed suitable for further screening.
In the screening phase, the records were assessed for subject relevance, leading to the exclusion of 229 records due to irrelevancy and another 138 due to missing or unavailable metadata. After this exclusion, the set had 9703 documents for eligibility assessment.
During the eligibility stage, the availability of full-text documents was evaluated. Records lacking full-text access were excluded, resulting in the removal of 92 additional entries. Eventually, 9611 records were included in the final bibliometric review.
3.4. Research Method
The study employed several bibliometric indicators that are necessary for evaluating the impact and the productivity of scholarly publications and research entities. The used indicators are listed as follows:
Citation count: The citation count refers to how many times a publication has been cited by other works, serving as a gauge of its influence and impact within the academic field [
24].
Publication count: Publication count represents the total number of works produced by a research entity within a given time period, serving as an indicator of the productivity and output [
25].
h-index: Defined by Hirsch in 2005 [
26], the h-index quantifies both the productivity and influence of a researcher’s work. It is determined as the maximum value
h, where
h signifies the number of publications by a researcher that have been cited at least
h times.
g-index: As an extension of the h-index, the g-index factors in the citation counts of highly cited works. It is defined as the highest value g, where the g most-cited papers collectively have received or more citations.
SJR (SCImago Journal Rank): SJR [
27] is an indicator of journal prestige that evaluates the citations received by articles and the quality of the citing journals. Journals are classified into quartiles according to their SJR score.
CiteScore: CiteScore [
28] evaluates the citation impact of academic journals by calculating the average number of citations per article published within a specific journal over a period of three years.
SNIP (Source-Normalized Impact per Paper): SNIP [
29] is a journal metric that evaluates impact while accounting for varying citation practices across fields, normalizing based on the citation potential inherent to each subject area.
The analysis was performed using a collection of bibliometric tools, such as Bibliometrix R, which, along with its graphical user interface (GUI) extension, biblioshiny, was utilized for comprehensive bibliometric analysis. This R-based package offers a wide range of functionalities for exploring publication trends, authorship patterns, and citation networks [
30]. In addition, Flourish was used to create our visualizations, seeing as the tool offers a range of templates and customization options for various types of charts, maps, and other types of visualizations. Lastly, VOSviewer was utilized for visualizing and analyzing bibliometric networks, particularly co-authorship and co-citation networks. This tool offers advanced network analysis capabilities, helping to identify research communities and influential publications within one or multiple fields [
31].
We began the study by providing an extensive overview of the dataset, which consists of the following:
Publication trends: Graphs and tables highlighting the evolution of research within the field and providing a comprehensive summary of dataset traits.
Publication types: A chart showing the distribution of document types.
Subject areas: A set of charts visualizing the distribution of publications across subject areas and the yearly volume of publications in each subject area.
The second section of our study involves employing science mapping to gain insights into the intellectual, social, and conceptual structure of research. Within this section, we focused on the following:
Most productive and highly cited authors: A table presenting the top 10 authors based on productivity, alongside the top 10 authors with the highest number of citations.
Leading journals: A study of the top 10 most productive and highly cited journals in AI and blockchain research for securing smart grids, including key performance metrics such as publication count, CiteScore, SJR, SNIP, and quartile rankings.
Prominent institutions: An analysis of the 15 most productive and highly cited institutions in AI and blockchain research for securing smart grids, along with a visualization of the co-authorship network among key organizations.
Global research trends: An analysis that highlights the leading countries in AI and blockchain research for smart grids, along with international collaboration patterns and visualization of key co-authorship networks.
Most cited papers: A study of the top 10 most cited papers on the application of AI and blockchain for securing smart grids.
Keywords Analysis: A visualization and examination of the most frequently occurring keywords in AI and blockchain studies focused on smart grids.
Moroccan research overview: An analysis of Morocco’s performance in AI and blockchain research for smart grids, including key metrics (publication count, h-index, and international collaboration rate), institutional contributions, and its ranking at the African, Arab, and international levels.
The third stage of our study applies network analysis to explore relationships among authors, institutions, and research topics. This involves a factorial approach based on correspondence analysis (CA), a statistical method that transforms categorical data into a low-dimensional space, revealing topic associations and clustering patterns.
To enhance our insights, we use the following visual tools:
Thematic Map: Categorize research themes based on centrality (importance) and density (development stage), helping identify emerging and well-established topics.
Conceptual Structure Map: Display topic relationships, showing how research themes are connected.
Topic Dendrogram: Provide hierarchical clustering of topics, highlighting their similarities and proximity.
6. Conclusions and Future Work
In conclusion, this paper presented a comprehensive bibliometric analysis on the use of AI and blockchain technologies to secure smart grids, covering 9611 documents published between 2014 and 2024, and accumulating a total of 162,283 citations. By examining data retrieved from the Scopus database, we evaluated global research efforts related to smart grid security, highlighting diverse implementations designed to enhance the resilience of smart grids. The leading contributors in this field were China (3202 publications), India (1786 publications), and the United States (1546 publications). Despite their notable production levels, these countries show limited collaboration rates below 50%, indicating potential for future international partnerships. Among the most influential publication sources are IEEE Transactions on Smart Grid and IEEE Access, which stand out for their significant citation metrics.
Our findings emphasize the growing significance of AI and blockchain in addressing the escalating threats faced by modern energy infrastructures. The evolution of research in this domain reveals a shift from fundamental threat detection algorithms toward innovative solutions such as distributed networks, peer-to-peer energy trading, and advanced load forecasting. These developments illustrate the potential for future technologies to redefine the operational and security frameworks of smart grids.
For Morocco, these insights underscore a unique opportunity to align national research efforts with its renewable energy ambitions. By adopting advanced AI and blockchain technologies, Morocco can enhance its smart grid infrastructure to meet increasing energy demands while addressing specific cybersecurity challenges. Collaborative efforts between Moroccan researchers and global institutions can provide innovative solutions that not only benefit the nation but also contribute significantly to the global advancement of secure and sustainable energy systems.
Looking ahead, future research should not only prioritize the merging of AI and blockchain technologies to address evolving cyberthreats and vulnerabilities in distributed energy systems but also explore several promising emerging approaches. For example, integrating advanced Graph Neural Networks (GNNs) with transformer-based architectures could further enhance anomaly detection accuracy and robustness. In addition, developing blockchain-based federated learning frameworks that incorporate privacy-preserving techniques such as swarm learning can enable decentralized model training with improved convergence rates and efficiency.
This bibliometric analysis provides a valuable foundation for further studies and collaborative initiatives aimed at securing smart grid systems and critical energy infrastructure as a whole through technological innovation.