Next Article in Journal
Car-Sharing Systems in Smart Cities: A Review of the Most Important Issues Related to the Functioning of the Systems in Light of the Scientific Research
Next Article in Special Issue
Blockchain in the Construction Industry between 2016 and 2022: A Review, Bibliometric, and Network Analysis
Previous Article in Journal
Involvement of Local Authorities in the Protection of Residents’ Health in the Light of the Smart City Concept on the Example of Polish Cities
Previous Article in Special Issue
Smart Contracts for Managing the Chain-of-Custody of Digital Evidence: A Practical Case of Study
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Review

A Bibliometric Analysis of Research on the Convergence of Artificial Intelligence and Blockchain in Smart Cities

1
CERAG, Grenoble INP, Université Grenoble Alpes, 38000 Grenoble, France
2
IAE de Poitiers, Université de Poitiers, 86000 Poitiers, France
3
Grenoble IAE, Université Grenoble Alpes, 38000 Grenoble, France
*
Author to whom correspondence should be addressed.
Smart Cities 2023, 6(2), 764-795; https://doi.org/10.3390/smartcities6020037
Submission received: 30 January 2023 / Revised: 25 February 2023 / Accepted: 27 February 2023 / Published: 2 March 2023
(This article belongs to the Special Issue The Convergence of 5G and IoT in a Smart City Context)

Abstract

:
Smart cities aim to enhance the quality of life for citizens by integrating information technology in various aspects of daily life. This paper focuses on recent innovations in the integration of two prominent technologies, artificial intelligence (AI) and blockchain, to manage complex interactions between smart connected devices, individuals, government agencies, and the private sector. By conducting a systematic scientometric analysis and visualization of 505 articles published between 2017 and 2023, we uncover the social, conceptual, and intellectual structures of the literature in this field through co-authorship, co-word, and co-citation networks. Our analysis identifies key insights, research hotspots, specialties, and emerging trends by examining important nodes in the bibliometric networks. The findings of this study can be of interest to both academics and practitioners working in the fields of AI, blockchain, and smart cities.

1. Introduction

Modern cities worldwide are undergoing significant changes to promote a clean, sustainable, and secure environment by implementing smart infrastructures, intelligent services, and greater accessibility for residents, especially vulnerable groups [1]. The primary objective of these smart cities is to improve daily life in urban areas by integrating information technologies into routine activities [2]. Meeting critical needs, such as e-government, urban mobility, healthcare, water management, waste management, clean energy production and consumption, energy saving, payment, housing, safety, and accessibility, requires the adoption of new digital technologies. Two emerging technologies that can facilitate the management of these complex interactions between citizens, government agencies, and the private sector are artificial intelligence (AI) and blockchain. AI enables computing machines to learn, infer, and adapt based on data [3], while blockchain is an immutable, public digital ledger distributed among networked peers [4]. With blockchain, any transaction recorded must be cryptographically signed and verified by all nodes for consensus [5].
In such an ecosystem, a vast amount of data is collected from sensors, networked devices, individuals, organizations, and other sources. To provide a sustainable environment, this data must be properly processed and analyzed. The integration of AI technology into smart city environments aims to improve decision-making skills and enhance the delivery of public and urban services [2]. However, implementing smart ecosystems poses significant security and privacy challenges [1,6,7]. Blockchain has the ability to overcome many of these challenges. The data within a block is virtually impossible to alter due to cryptographic hashing [7] and the linkage between subsequent blocks, which requires generating hashes for all those blocks. A consensus mechanism is another factor that prevents changes in blocks as the generated/changed blocks must be accepted by all network nodes. Hence, blockchain securely manages various entities such as smart contracts, smart assets, digital identities, etc., in a distributed network. The combination of blockchain and AI in the context of smart cities addresses a range of issues, including authentication, digital signature, validation, smart contracts, decentralization, secure sharing, and explainable AI.
Researchers have conducted surveys in particular fields of smart cities regarding the convergence of AI and blockchain. The study by Singh et al. [8] on Internet of things (IoT) networks is a breakthrough in this field, aiming to transform sustainable ecosystems using a new network architecture in smart cities. The researchers provide a comprehensive overview of security issues, problems, and key factors affecting the convergence of blockchain and AI in the formation of a sustainable smart society based on the IoT network. Kiruthika and Ponnuswamy [2] see the primary goal of combining AI, blockchain, and IoT in smart cities as utilizing a technical solution to process and analyze a large amount of data collected from people, devices, and other IoT sources through AI methods. They suggest that the second goal of this fusion is to ensure data security when processed by AI and to manage various entities such as smart contracts, smart assets, and the digital identity of people using blockchain. Gupta et al. [9], on the other hand, conduct similar research on the fusion of AI, blockchain, and 5G technologies, not exactly aimed at using them in smart cities but exploring the possibility of applying the results.
In order to develop innovative solutions, several scholars have proposed integrating AI and blockchain in the context of smart cities. Sharma et al. [7] present a blockchain-based IoT framework that integrates AI and blockchain for IoT applications. They evaluate the performance of their proposed architecture using qualitative and quantitative measurements. Rajawat et al. [10] propose a framework based on AI and blockchain to improve the security of biomedical and healthcare data, which are subsets of smart cities. The integration of blockchain and AI for IoT applications enables the use of AI in digital signature, authentication, distributed ledger, smart contracts, and data security within a decentralized network [7], thereby addressing critical challenges in the context of smart cities.
In an analysis of the concurrent application of AI and blockchain in the context of smart cities, Badidi [1] conducts a systematic review of 150 articles to explore the transformative potential of edge AI and blockchain. The author addresses the current challenges faced by smart cities and examines the multiple applications of edge AI and blockchain in the fields of smart mobility and smart energy. This includes relevant research efforts related to vehicle detection, counting, speed identification, traffic congestion, trustworthy communications, trading between vehicles, and smart energy trading. In a similar vein, Singh et al. [11] review the extensive literature on safety issues and challenges that affect the use of blockchain in the development of sustainable smart societies. They focus on solutions to blockchain security issues and important concepts for developing smart transportation techniques based on AI and blockchain.
To the best of our knowledge, there are few bibliometric studies on the convergence of AI and blockchain in the context of smart cities. These studies provide limited insight into the evolution of this field and only cover a few applied areas of this convergence. In light of this, our research aims to identify the potential and areas of interest for the integration of AI and blockchain in smart cities and to provide a state-of-the-art overview of these two technologies using scientometric visualization. The remainder of this paper is structured as follows: Section 2 outlines our data retrieval strategy and process, discusses our research questions, and describes our methodology. Section 3 presents descriptive statistics and a geographic analysis of the literature on the integration of AI and blockchain in smart cities, as well as the results of our social structure, conceptual structure, and intellectual structure analyses. In Section 4, we discuss the significance of our results by comparing them with those of other studies in this field. Finally, Section 5 provides our concluding remarks.

2. Materials and Methods

In recent years, there has been a growing interest among scholars in exploring the potential applications of AI and blockchain for smart cities. However, to gain a better understanding of the evolution of research in this area and identify potential future research directions and opportunities, it is necessary to investigate the history of research through scientometric analysis of high-quality scientific literature. Such an analysis can help identify the distribution of studies on the subject and shed light on promising avenues for future research. The framework SALSA (Search, Appraisal, Synthesis and Analysis) [12] is the primary methodology used in this study to conduct a systematic review of relevant research. Systematic reviews are essential in reducing the likelihood of bias and ensuring that a comprehensive body of knowledge on the chosen subject is accurately identified [13]. By following a systematic approach, this study can evaluate all available research related to a set of research questions.
This study outlines a systematic process to define the research questions, identify a suitable database, determine the search terms, select analytical software, extract relevant data, and analyze the findings. These steps are illustrated in Figure 1 and elaborated further in the subsequent paragraphs.

2.1. Research Questions

To ensure a comprehensive and focused analysis, a bibliometric review should be guided by clear research questions. Therefore, this paper is organized around the following research questions, aimed at providing an overview of the convergence of AI and blockchain in smart cities:
  • What is the current state of research on the fusion of AI–blockchain in smart cities?
  • What are the most influential and productive publications in this field?
  • Who are the main contributors and collaborators in this research area?
  • What are the main themes and concepts related to this integration?
  • What are the geographic distribution and collaborative networks of researchers working in this field?
  • What are the potential future research directions and opportunities in this area?

2.2. Data Source

The Web of Science Core Collection (WoSCC) is the primary source of data for this study, as it covers a vast amount of high-quality scientific literature across a range of disciplines. It is widely regarded as one of the most appropriate databases for bibliometric analysis of scientific publications [14]. Out of the ten indices available in the WoSCC, which includes information from a vast number of scholarly journals, books, book series, conferences, and more, three indices are selected as the primary data sources: Science Citation Index Expanded (SCI–Expanded), Social Sciences Citation Index (SSCI), and Emerging Sources Citation Index (ESCI). To ensure comprehensive coverage of the research topic and to reduce publication bias, three secondary data sources are also used, including Conference Proceedings Citation Index—Science (CPCI–S), Conference Proceedings Citation Index—Social Science & Humanities (CPCI–SSH), and Book Citation Index—Science (BKCI–S). This approach allows for a more complete representation of the literature, encompassing journal articles, conference papers, and book chapters.

2.3. Data Collection

To avoid any bias caused by database updates, a separate search was conducted on 21 December 2022 to retrieve the literature. The query string, which is provided in Appendix B, contains the principal terms ‘artificial intelligence,’ ‘blockchain,’ and ‘smart city,’ as well as their relevant keywords. To identify related keywords for each of these three domains, we examine the scope and subjects covered by the most frequently cited journals in each area, based on their impact factor or CiteScore.
The most cited journals in the AI and machine learning field, i.e., The IEEE Transactions on Pattern Analysis and Machine Intelligence, Foundations and Trends® in Machine Learning, and The IEEE Transactions on Cognitive Communications and Networking, offer related keywords that help scope out this area. Meanwhile, Frontiers in Blockchain, The Journal of the British Blockchain Association, and Ledger were consulted to identify blockchain-related keywords. To extract the keywords related to smart cities, the journals of Smart Cities, IET Smart Cities, and City and Environment Interactions were analyzed.
Only original articles, review articles, proceeding papers, and book chapters are considered in this study. We retrieve a list of all relevant papers from the WoSCC, which includes titles, keywords, author information, abstracts, and references, and save them in plain text format. These data are then analyzed using CiteSpace [15] and Bibliometrix [16].

2.4. Data Extraction

The selected documents are imported into CiteSpace and Bibliometrix for further data analysis. The extracted data includes general information such as annual number of publications, citation frequency, original countries, authors, journals, and institutions. Journal impact factor is obtained from the Journal Citation Reports (JCR) 2021 (available at: http://thomsonreuters.com/journal-citation-reports, accessed on 25 December 2022), which is widely used for rating a journal’s performance in its field. The h-index is another important indicator used to assess the scientific production and academic impact of researchers, countries, institutions, or journals [17,18]. The processed information extracted from the two software tools includes necessary data for drawing diagrams and describing networks and their clusters. This information includes the number of publications for both authors and sources, their average annual citation count, the h-index calculated internally for each, the number of keywords, the results of the cluster naming algorithms, and indicators for assessing the adequacy and novelty of the topic clusters.

2.5. Data Visualization and Analysis

The Bibliometrix R-package is utilized for conducting descriptive statistical analysis of the extracted data. Charts are drawn using MS Excel. Furthermore, scientific literature visualization networks are constructed using CiteSpace. These networks consist of researchers, journals, and research institutions, as well as keywords, titles, and abstracts as network nodes. These nodes are linked through co-authorship, co-citation, and co-occurrence analysis. Co-authorship analysis determines the similarity relationships between items based on the number of co-authored documents, while co-citation and co-occurrence analyses illustrate the relationship between items based on the number of times they are cited together and the number of studies where they appear together, respectively [19].

3. Results

This section presents the findings obtained from the data visualization of the total sample of 505 publications selected based on the search strategy explained in Section 2.3. The primary results of this study include bibliometric maps of co-authorship among authors and institutions, co-citation among authors, journals, and references, and co-occurrence of keyword and terms. Additionally, a dual-map overlay of journals is created to provide a comprehensive view of the interconnections among the identified journals [20]. To better understand the evolution of this field over time, descriptive statistics are presented in tabular and graphical formats.

3.1. Demographic Perspective of the Study Area

3.1.1. Basic Summary of the Sampled Publications

The forthcoming sections will present the result of a bibliometric analysis conducted on a dataset of 505 publications, comprising of 335 journal articles (66.33%), 93 conference papers (18.42%), 75 review articles (14.85%), and 2 book chapters (0.40%). Table 1 provides an overview of basic information related to this collection of publications.
In Figure 2a, the evolution of research over the years is displayed. All publications in this area were published between 2017 and 2023, with a significant increase in publications in 2021 and 2022, suggesting that it is an emerging research area gaining popularity. The comparison with findings by Hajizadeh et al. [6] on the total annual scientific production in the convergence context indicates that addressing this subject in the field of smart cities started nine years later, in 2017. Nevertheless, research in this area has grown in line with the general trend [6,21], with an average annual growth rate of 12.25%, which is higher than the 7.18% average annual changes of science and engineering articles worldwide [22]. The average citation rate per year in Figure 2a indicates that publications from 2019 were cited more than others. This trend is expected as older publications tend to have more citations than recent ones, which many readers have not yet had the opportunity to read.

3.1.2. The Most Prolific Authors

The relationship between the number of authors and the documents published in the AI–blockchain research of smart cities is depicted in Figure 2b using Lotka’s law, a bibliometric law describing the distribution of authors based on their productivity. The law is represented as xn · y = c [23], where x represents the number of publications, y represents the number of authors who published x documents, and n ranges from 1.2 to 3.5, with c varying by field [24]. The graph indicates a high correlation (R2 = 0.9318) between the number of authors and the publications, with x2.579 · y = 0.5082 representing Lotka’s law for this research domain. Notably, only 1% of the 1636 authors published more than five articles, and an adequate number of 1 to 3 authors contributed significantly (96.90%) to the research in this field.
Figure 3 measures the publication productivity of the top five authors in the subject field using four metrics. Figure 3a shows the number of publications in which each name is listed as an author. However, to account for collaboration among authors, Figure 3b presents a second measure that counts fractional publications based on the total number of authors of each paper. Figure 3a,b indicate that Tanwar S has the highest number of publications and has contributed to documents with fewer authors. Meanwhile, Gupta R’s decline from second place in Figure 3a to fifth in Figure 3b confirms that most of the author’s documents were produced with significant collaboration.
Figure 3c,d focus on the number of citations for documents produced by the authors, revealing several names not present in Figure 3a,b. Figure 3c presents the total citations of each author in this field, while Figure 3d shows the h-index of each author on this specific field, i.e., the number of papers they have published that have each been cited at least h times). Due to the authors’ varying ranks in different metrics, some names appear interchangeably in different positions. However, Tanwar S and Park JH appear in all four figures, making them stand out as highly productive authors. Kumar N’s appearance in three of the four metrics also earns the author a high ranking. These three authors can thus be considered the most prolific in the field of AI–blockchain in smart cities.

3.1.3. The Most Influential Sources

The study includes 505 publications from 251 sources (journals, proceedings, and book chapters). To determine the most impactful sources, Figure 4 provides four perspectives. The first perspective in Figure 4a shows the number of publications per source. Figure 4b displays the number of global citations given to local articles published in reference sources. The third perspective in Figure 4c gives the total local citations to local publications in a source, and the fourth is the sources’ h-index in this particular field shown in Figure 4d. Based on all four perspectives, IEEE Access with an impact factor of 3.476 is the most influential journal in the field. The IEEE Internet of Things Journal with an impact factor of 10.238 is the second most influential source in this field, ranking second after IEEE Access in all perspectives except for the number of publications, where it ranks fourth. Other sources have varying interpretations based on different perspectives and can be seen in at most two subfigures with different positions.
In addition to the benefits of identifying the most influential sources, it is also valuable to determine the core sources of knowledge in a particular research area for future studies. To achieve this, we employ Bradford’s law [25], which categorizes sources into three zones based on the number of publications, each containing roughly the same number of articles. Our analysis reveals that the core zone of the selected publications is comprised of 13 journals, including a total of 167 articles (representing 33% of the total number of publications), while the second and third zones consist of 72 and 166 sources, containing 172 and 166 publications, respectively. Table 2 presents the titles and specifications of the journals classified as the core sources. Additionally, it is worth noting that the core zone’s citations account for 39% (equivalent to 2991 citations) of the total citations.

3.1.4. The Most Influential Publications

Table 3 presents key information on the ten most cited publications globally. These studies were mainly published between 2019 and 2020, with an average of 4.7 authors per paper. Inter-institutional collaboration was prevalent, with nine out of ten publications being completed with such collaborations. Four of the publications are experimental research, while the rest are review articles, indicating the shift of the field from its initial stages to innovative solution production. Aggarwal et al. [26] with 15, and Allam and Dhunny [27], and Rathore et al. [28] both with 10 citations, are the three most cited articles locally.

3.2. Geographical Perspective of the Study Area

3.2.1. Countries’ Scientific Production and Collaboration

The scientific production of documents in this field based on the authors’ affiliation is depicted in Figure 5, which illustrates the collaborations between countries through thin and thick links, indicating the intensity of their joint document production. Developing countries lead the field, consistent with findings by Vu and Hartley [36] that emerging technologies have a greater impact on urban functionality, productivity, and livability in developing countries compared to developed countries, which have already made significant progress. Furthermore, smart cities utilizing digital technologies offer an ideal solution to address population pressures in developing countries, meeting the growing demand for infrastructure and services [37].
China has emerged as the leading producer of AI–blockchain research in the field of smart cities with 444 studies, followed by India with 338, and the United States with 156 studies, as shown in Figure 6a. These findings are consistent with the research conducted by Hajizadeh et al. [6] on countries engaged in AI–blockchain studies. While the United States had the initial lead in the scientific production in this field, as depicted in Figure 6a, it underwent a reverse process from 2019 to 2021, with a resurgence in publications in 2022.

3.2.2. The Most Relevant Affiliations

To provide researchers in the field of smart cities with a comprehensive list of potential collaborators, we present an overview of important organizations based on their publication output. Figure 6b highlights the top five institutions among the 906 organizations involved in research in this field, with Nirma University (India) and King Saud University (Saudi Arabia) being the most productive with 42 and 41 publications, respectively, followed by the University of Johannesburg (South Africa), Huazhong University of Science and Technology (China), and Qatar University (Qatar). When considering the location of the top 100 universities or institutions, China has the largest share at 17%, followed by India with 15%, and South Korea with 10%, while the majority of the remaining institutions are located in Saudi Arabia, Australia, the United States, and the United Kingdom.
Figure 6b highlights the research performance of the top five institutions in the field of AI–blockchain research in smart cities. Qatar University shows a gentle slope compared to other organizations, indicating their early entry into this field. Nirma University and King Saud University entered the field in 2019 and have since maintained a strong research output, each publishing more than 40 articles on coupling AI and blockchain in smart cities. It is noteworthy that Huazhong University of Science and Technology’s research output in this field declined in 2022 after a strong rise between 2020 and 2021. The University of Johannesburg can be considered a new entrant in this field, as they have been publishing at a favorable rate since 2021.

3.3. Social Perspective of the Study Area

3.3.1. Co-Authorship Network

This paper conducts an analysis of authors and their collaborative relationships in the field of AI–blockchain in smart cities by examining 505 pieces of related literature. The co-authorship network is generated using CiteSpace with the following parameters: a scale factor of k = 100 ( k + ) used in the calculation of the modified g-index [38] ( g 2 k i g c i ), a link retaining factor (LRF) of −1 (unlimited), and a lookback year (LBY) of −1 (unlimited) for the years 2017 to 2023. The resulting network consists of 589 nodes (authors) and 888 links (co-authorship), with the largest clusters shown in Figure 7. The thickness of the link between two nodes indicates the level of co-authorship. The three most cited authors in each cluster are highlighted, and the clusters are named using the log-likelihood ratio (LLR) algorithm [39] based on the keywords of articles published by authors in that cluster.
Out of the top five authors listed in Section 3.1.2, three authors (Tanwar S, Gupta R, and Kumari A) belong to cluster #2, which suggests that their primary focus is on blockchain. Collaboration between authors in this cluster has increased since 2022, as shown by link color. The next highest-ranked author, Kumar N, is in cluster #0, where research is focused on authentication and published mainly in 2020. Park JH is in cluster #6, not shown in Figure 7 due to a small number of co-authors. Network density in terms of collaborative relationships is low at 0.005, indicating a lack of strong connections between authors. Tanwar S has the highest degree (i.e., number of co-authorship relationships) in cluster #2 with a degree of 22, followed by Kumar N in cluster #0 with a degree of 19, Gupta R in cluster #2, and Gadekallu T in cluster #1 with a degree of 16, and Srivastava G in cluster #1 with a degree of 14.
In terms of network structure, the modularity Q of 0.938 indicates a high degree of division into loosely coupled clusters, and the mean silhouette score of 0.943 suggests high homogeneity within these clusters. However, nodes with high betweenness centrality are limited, with Kumar N (0.03), Guizani M (0.02), Tanwar S (0.01), Gadekallu T (0.01), and Srivastava G (0.01) having the highest scores, respectively. Figure 7 shows that Kumar N plays a pivotal role in connecting clusters #0, #1, #2, and #3 mainly in 2019, so that the only connection of clusters #0 and #3 is due to this author’s co-authorship with Guizani M. Guizani M is also the connecting node between clusters #3 and #2. Lastly, Pham QV is the author who establishes the link between cluster #1 and #9. The co-authorship relationships between researchers in cluster #9 and those in other clusters, particularly cluster #3, may not have been formed yet due to the novelty of publications in cluster #9.
Table A1 (see Appendix A) provides detailed characteristics of the five clusters identified in Figure 7. It is evident from the table that in cluster #0, scholars are primarily focusing on authentication mechanisms in blockchain platforms, particularly in the context of smart agriculture. Reinforcement learning, especially in the field of privacy in energy and transportation systems, is the main area of research for authors in cluster #1. The different labels proposed by latent semantic indexing (LSI) [40], mutual information (MI) [41], and LLR algorithms highlight the focus of cluster #2 on the use of blockchain in healthcare and Industry 4.0. The use of encrypted IoT in conjunction with machine learning and consortium blockchains to enhance privacy is the primary topic of interest for authors in cluster #3. Lastly, cluster #9 is solely dedicated to exploring 5G technology in smart cities.

3.3.2. Co-Authors’ Institutions Network

A network of co-authors’ institutions is created to explore the core institutions and cooperation relationships in the field of AI–blockchain in smart cities. We set up CiteSpace parameters as follows: k = 100, LRF = −1, and LBY = −1, resulting in a network of 504 nodes and 804 links, with node size indicating centrality score and the thickness of connections indicating the frequency of cooperation between institutions. The largest clusters are shown in Figure 8, with a modularity Q of 0.829 indicating proper clustering and a mean silhouette score of 0.942 indicating high homogeneity. However, the low network density of 0.006 suggests weak relationships between organizations in this field. The largest cluster consists of 34 organizations, representing less than 7% of the total network nodes. Critical institutions in the network can be identified from Figure 8. Two institutions, King Saud University in cluster #3 with centrality of 0.22 and Taif University in cluster #0 with centrality of 0.11, have betweenness centrality greater than 0.1 and are located at structural holes. King Saud University connects cluster #3 to clusters #0, #1, #2, #8, and #9 through links with 35 other academic institutions, while Taif University connects cluster #0 to clusters #3, #5, and #6 through links with 15 other academic institutions.

3.4. Conceptual Perspective of the Study Area

3.4.1. Co-Occurring Keywords Network

Keywords are condensed representations of academic publications that provide high-level summaries of the content, increasing visibility and understanding of the study’s core and focus [42]. Co-word analysis is a method that utilizes the co-occurrence of keywords to reveal the conceptual structure of a research field. In this study, the configuration parameters for CiteSpace are set as k = 100, LRF = −1, LBY = −1. In addition, the minimum number of links per node is set as e = 1, and a pathfinder algorithm is used to prune the merged co-occurrence network map. The clusters detected in the network of co-occurring keywords, with 504 nodes, 961 links, and density of 0.008, are shown in Figure 9. The size of nodes indicates their centrality, and the color of linkages shows when two keywords first appeared in the same paper. The modularity Q of 0.887 and the mean silhouette score of 0.964 indicate proper clustering and high homogeneity of the clusters.
In Figure 9, keywords with over 10 repetitions are shown in addition to the identified clusters. Despite cluster #0 being the largest, the most frequent keyword belongs to cluster #8, which centers on peer-to-peer computing. Internet of Things ranks first in frequency with 104 occurrences since 2019, followed by smart city and artificial intelligence with 73 and 55 occurrences, respectively, since 2018. However, the importance of keywords is not solely based on their frequency, but also on their betweenness centrality in the network. Table A2 (Appendix A) compares the subject names proposed by three algorithms: LSI, MI, and LLR for naming clusters. Cluster #8 contains the oldest co-occurring words that have been observed as related keywords in several articles since 2019. The largest cluster (#0) concentrates on biomedical monitoring and the application of edge learning in this field, while the smallest one (#20) focuses on the digitization and smartening of agriculture for the fourth revolution.
Table 4 lists the top ten keywords with the highest centrality, and all nodes have a centrality greater than 0.1. The keyword with highest centrality (0.63) is smart grid in cluster #1, which connects this cluster to cluster #3, #4, and #6 through co-occurrence with differential privacy, neighboring energy trading, consortium blockchain, blockchain, electric vehicle, and adaptive charging scheme. The remaining 21 keywords that co-occur with smart grid are all located in cluster #1, acting as connection points between this cluster and clusters #3, #8, #14, and #18.
Categorizing the most frequent keywords into five categories of blockchain, AI, smart cities, security, and IoT, as illustrated in Figure 10, the blockchain category has the highest occurrence, appearing in 35% of the publications. It is followed by the AI keywords, such as artificial intelligence, machine learning, and related methods, which appear in 19% of the publications. In comparison, the topic of smart cities appears in fewer publications than the other categories, indicating a comparatively lower level of interest.

3.4.2. Keyword Burst Analysis

Significant increases in the frequency of keywords during a relatively short period of time usually reflect research foci and are therefore of particular interest to the scientific community as indicators to identify emerging research trends [43]. Table 5 shows the result of keyword burst detection to identify research hotspots of the AI–blockchain integration in the field of smart cities. From Table 5, seven keywords with bursts of at least one year are detected. In chronological order, the keyword bursts have been changing over the years from 2019 to 2023, indicating a dynamic research landscape in this field.
Furthermore, the sigma composite metric, which measures scientific novelty by analyzing the combined strength of the structural and temporal properties of nodes, can identify keywords that likely represent new ideas [44]. As shown in Table 5, the first five keywords have burst among researchers at some point in the past years, making them research hotspots during the corresponding periods. Federated learning and collaborative work began to burst in 2022 and continue to be research hotspots currently. Given its relatively high centrality (0.11) and moderate co-occurrence with other keywords (degree of 11), we believe that federated learning has a greater potential to emerge as a research trend in integration with blockchain-related topics in the field of smart cities.

3.4.3. Text Processing of Terms

The WoS dataset provides four text fields for each bibliographic record: title, abstract, author keywords, and keywords plus. To better define the concept [45], we analyze the first two unstructured text fields (i.e., title and abstract) in addition to the keywords studied in Section 3.4.1 since they contain a higher frequency of relevant terms than keywords [46]. CiteSpace is configured with parameters k = 50, LRF = −1, LBY = −1, and e = 1, as well as a pathfinder algorithm that prunes the co-occurrence merged network map. The resulting network includes 557 terms in 15 clusters connected through 2016 links, with a density of 0.013, modularity Q of 0.844, and the weighted mean silhouette of 0.918. Figure 11 displays this network and identifies clusters, where node size indicates frequency and color spectrum represents repetition in different years.
Cluster #0 on digital agriculture is the largest with 105 nodes and a silhouette score of 0.823. The nodes with the highest frequency (88) and centrality (0.30) are artificial intelligence in cluster #6 and adaptive service level agreement in cluster #2. The most recent bursting term in this field is smart factories in cluster #2 (focused on the energy market), which started bursting in 2022 with a strength of 2.28 and a sigma of 1.00. Smart factories is connected to the Industrial Internet, which in turn is connected to the IoT system and data management in the network.

3.5. Intellectual Perspective of the Study Area

3.5.1. Author Co-Citation Network

An author co-citation network is utilized to identify areas of expertise that are widely recognized by research communities in the field of AI–blockchain in smart cities. Co-citation occurs when two references are cited by a third reference. The articles retrieved from WoS in this field cite 25,963 publications with one or more authors, as shown in Table 1. To perform this analysis, CiteSpace parameters are set to k = 25, LRF = −1, LBY = −1, and e = 1. The merged network is pruned using a pathfinder algorithm, resulting in a network of 453 nodes and 1192 links. A node’s size represents the number of citations an author has received, while the thickness of the link between two nodes indicates how many times two authors have been cited together in the same articles. A network density of 0.012 indicates that strong co-citation relationships have yet to be formed in this field.
Figure 12 presents the main clusters identified in this author co-citation network. The network has a high modularity Q of 0.825 and a high mean silhouette score of 0.931. The LLR algorithm is used to name the clusters based on the keywords of the articles that have cited at least two nodes of the network simultaneously. Figure 12 also displays the three most cited authors in each cluster. To investigate the connections between different clusters, nodes with a high betweenness centrality score can be examined. However, in this network, only 13 nodes have a centrality greater than or equal to 0.1.
The co-cited authors in this field include Nakamoto S in cluster #2 (59 co-citations since 2018), Sharma PK in cluster #3 (48 co-citations since 2019), and Ferrag MA in cluster #6 (45 co-citations since 2019). The most influential nodes in terms of betweenness centrality are Allam Z (0.24, 2018) in cluster #2, Kim M (0.20, 2021) in cluster #4, and Grieves M (0.17, 2021) in cluster #0. Allam Z provides scientific references for multi-disciplinary publications focusing on smart grids combined with topics such as cyber physical systems, energy internet, energy exchange, and sustainability by co-citing with scholars in clusters #1, #5, #7, and #13. Kim M contributes to the preparation of documents focusing on urban planning in combination with the topics of reinforcement learning, energy exchange, and sustainability along with the publications of authors in clusters #0, #7, and #13. Grieves M links cluster #0 with clusters #1, #2, and #3, focusing on combining reinforcement learning with topics such as cyber physical systems, smart grids, and authentication.

3.5.2. Journal Co-Citation Network

A journal co-citation network is generated to analyze the source of publications and detect the most representative cited journals in the field of AI–blockchain integration in smart cities. CiteSpace is configured with parameters k = 25, LRF = −1, LBY = −1, and e = 1, and a pathfinder algorithm is used to prune the merged network. Figure 13 shows the resulting network, which has 491 nodes and 1100 links with a density of 0.009. Larger nodes indicate more references to the source, and thicker links between two nodes indicate more times the two sources are cited together. While the frequencies of the nodes confirm the findings shown in Figure 4b and the order of the journals, the betweenness centrality scores largely differ from this order.
Figure 13 illustrates the main clusters identified in the journal co-citation network analysis of AI–blockchain integration in smart cities. The modularity Q is 0.822 and the weighted mean silhouette score is 0.929. Additionally, the three most cited sources within each cluster are presented. Clusters are named using the LLR algorithm, which takes into account the keywords of the articles that cite at least two network nodes simultaneously. Cluster #0 is the largest cluster in the network, consisting of 68 sources, followed by clusters #1 and #2 with 46 and 38 sources, respectively. These three clusters together make up 31% of the sources in this field. The three most frequently cited sources in terms of journal co-citation are IEEE Access (330, 2017), IEEE Internet of Things Journal (269, 2018), and IEEE Transactions on Industrial Informatics (205, 2018). IEEE Access is in cluster #4, which mainly focuses on servers and microgrids. IEEE Internet of Things Journal is in cluster #19, where urban planning is the main focus. IEEE Transactions on Industrial Informatics is in cluster #3. Documents that refer to sources within this cluster are generally in the field of smart grids.
Table 6 lists the top ten sources with the greatest betweenness centrality based on co-citation analysis. The sources include journals and conference proceedings, with most of them located in clusters #4 and #0. These clusters focus on topics such as servers, microgrids, and anomaly detection.

3.5.3. Document Co-Citation Network

To identify relevant literature on AI–blockchain convergence in smart cities and visualize research gaps, we conduct a document co-citation analysis using CiteSpace with parameters set as k = 25, LRF = −1, LBY = −1, and e = 1, and pruned the network using a pathfinder algorithm. The resulting network consists of 376 nodes and 1117 links with a density of 0.016, as shown in Figure 14. Considering that in our analysis the betweenness centrality of nodes is more important than their co-citation frequency, in Figure 14 we consider the size of nodes as a proxy for their centrality score. Furthermore, we show the top ten publications in terms of centrality with a score greater than 0.1 in the figure, in their respective clusters. The modularity Q of 0.838 and weighted mean silhouette of 0.922 indicates proper clustering and high homogeneity of the clusters, respectively. In addition, Table A3 in Appendix A provides details of the clusters and the topics covered by them.
The clusters in Figure 14 and Table A3 have similar titles to those shown in Figure 7, Figure 8, Figure 9, Figure 11, Figure 12 and Figure 13, indicating that most of the research areas in the field of AI–blockchain in smart cities have already been explored. However, cluster #4 covers completely new ideas related to the 6G network and the 5th industrial revolution based on blockchain, making it an important trend to watch. Cluster #7 focuses on the key agreement protocol, which is an authentication protocol that allows communication parties to agree on a key that influences the outcome. On the other hand, cluster #15 covers volunteer computing, a distributed computing topic that involves providing processing power or storage from personal devices to assist processes that require significant computing power. While not a new trend in the field, volunteer computing has been around since the 1990s [47,48] and is seen as an enabler for edge computing [49].
Figure 15 presents a timeline view of the clusters, illustrating the origin, evolution, and time span of each cluster. The members of each cluster are shown in chronological order along the horizontal axis, while the clusters are displayed vertically from top to bottom according to their size. The disappearance of a cluster in recent years may indicate that researchers prefer to explore new research directions rather than focusing on the vanished domain. From this perspective, it appears that the co-citation of publications in clusters #1, #3, and #14 (i.e., encrypted IoT, consortium blockchain, and healthcare) has ceased since 2020 and earlier, and instead, the new trend is to co-cite publications included in clusters #0 and #2 (i.e., smart grids and federated learning).
Table 7 lists the top ten nodes in the network, ranked according to centrality. As evident from the table, most of these documents are found in clusters #0 and #1, with each cluster containing three documents that focus on smart grids and the IoT. Cluster #9, which is related to urban planning, is ranked next with two highly central nodes. We further analyze the first three articles listed in Table 7. Li et al. [50] has been co-cited with publications in clusters #1, #2, #3, #5, and #7, with the highest number of co-citations coming from cluster #1, indicating that the integration of federated learning and IoT is a popular topic among scholars citing this article. Novo [51] has been co-cited with publications in cluster #0, #1, #4, and #5, with the highest number of co-citations coming from cluster #1, indicating that the integration of smart grids and IoT is a popular topic among scholars citing this article. Christidis and Devetsikiotis [52] have been co-cited with publications in cluster #1, #2, #3, #5, and #7, with the highest number of co-citations coming from cluster #3, indicating that the integration of consortium blockchain and IoT is a popular topic among scholars citing this article.

3.5.4. Bursts in the Network of Document Co-Citations

We detect citation bursts to determine whether and when the number of citations of a particular reference has significantly increased and if a particular connection has been strengthened within a short period of time [39]. In other words, we seek to identify statistically significant fluctuations during a short time interval within the overall time period in documents’ citations. Table 8 presents the top 12 references with the strongest citation bursts lasting more than two years between 2017 and 2023, which can be regarded as major milestones in the development and evolution of the AI–blockchain convergence in smart cities. Additionally, by examining of the combined strength of the structural and temporal properties of nodes, sigma identifies publications that likely represent new ideas [44] and measures nodes’ scientific novelty.
According to Table 8, the focus of key milestones from 2017 to 2023 can be summarized as follows:
  • Reviews: There are four reviewed works, including one book and three literature reviews. The book by Swan [59] explores how the blockchain is becoming a new disruptive computing paradigm beyond its traditional uses for currency (Blockchain 1.0) and smart contracts (Blockchain 2.0). Tschorsch and Scheuermann [63] examine the fundamental structures and insights at the core of the Bitcoin protocol, proposing key ideas that are applicable to various fields. Yli-Huumo et al. [60] review 41 scientific articles through a systematic mapping study, finding that less than 20% of the articles focus on smart contracts and licensing. The authors recommend future research directions and highlight security and privacy concerns as the most important issues in the blockchain field. Li et al. [67] conduct a systematic review of blockchain security threats, analyzing actual attacks on popular blockchain systems and suggesting future directions in this field;
  • Conceptual designs: Wood [56] presents a design document outlining the implementation of Ethereum using blockchain technology, which allows for secure transactions and acts as a transactional singleton machine with a shared state. The document covers the system design, implementation issues, potential benefits, and expected obstacles. Dorri et al. [66] propose a blockchain-based architecture as a solution to address security and privacy concerns in a smart vehicular ecosystem, including location tracking and remote hijacking. The architecture leverages wireless remote software updates and dynamic vehicle insurance fees to demonstrate its effectiveness against common security attacks. Sharma et al. [64] introduce Block-VN, a blockchain-based vehicular network architecture designed for smart cities. They demonstrate the architecture’s security and reliability, and its potential to build a distributed transportation management system. They also analyze the evolution of vehicular networking with network-centric and vehicular information paradigms, and provide design principles and service scenarios for Block-VN;
  • Experimental studies: Several research articles propose blockchain-based solutions to address various security challenges in IoT and smart grid systems. Following on from their previous work [68], presenting a lightweight blockchain for use in the IoT with the elimination of proof-of-work and the concept of coins, in this article, Dorri et al. [65] present a blockchain-based smart home framework that supports confidentiality, integrity, and availability of communications while minimizing overheads. Sharma et al. [62] propose a secure distributed architecture for IoT (called DistBlockNet) using software-defined networking and blockchain to securely verify versions, validate, and download the latest flow rule table for IoT forwarding devices. Aitzhan and Svetinovic [61] implement a proof-of-concept for decentralized energy trading that enables anonymous negotiation of energy prices and secure transactions without trusted third parties. Li et al. [58] employ consortium blockchain technology to implement a secure energy trading system for P2P trading scenarios and propose a credit-based payment scheme to reduce transaction confirmation delays. Gai et al. [30] present a consortium blockchain-based approach to protect the privacy of energy trading users in the smart grid without restricting trading functions. These proposed solutions demonstrate the potential of blockchain technology to enable secure, decentralized transactions without the need for trusted intermediaries. These efforts provide important progress in the development of secure and trustworthy systems in these domains, which are critical for the success of future smart cities and industries.

3.5.5. Dual-Map Overlay Analysis

Our study utilizes a dual-map overlay technique [20] to analyze citation patterns at a disciplinary level in smart cities’ AI–blockchain research. The technique groups over 10,000 journals (according to JCR) into regions that represent publications and citation activities at a domain-level, providing a comprehensive view of how the field references intellectual sources. The resulting map, displayed in Figure 16, shows clusters of citing (left side) and cited (right side) journals, with trajectories indicating the frequency and strength of interconnections between them (the parameter of snap to centroids set as radius > 500). Using this map, we identify patterns of how published articles in the field reference other intellectual sources. Our analysis reveals a single dominant citation path in the dataset, with citing region #1 (mathematics, systems, mathematical) citing primarily to cited regions #1 (systems, computing, computer), #12 (economics, economic, political), and #18 (history, philosophy, records). Despite the literature of citing region #1 being supported by literature from almost all of the cited regions, only one significant relationship is recognized, with a z-score of 5.833 and f-value of 1114. Overall, our study provides a valuable insight into the citation patterns of smart cities’ AI–blockchain research, which can be useful for researchers and practitioners in the field.
Figure 16 shows the main red path in addition to three secondary paths. The first secondary path includes purple links between citing region #5 (physics, materials, chemistry) and cited region #1, while the second path consists of dark blue links between citing region #10 (economics, economic, political) and three cited regions: #1, #7 (psychology, education, health), and #12 (economics, economic, political). The third path comprises light blue links between citing region #6 (psychology, education, health) and two cited regions: #1 and #5 (health, nursing, medicine). These paths suggest that the research in AI–blockchain applications in smart cities has a multidisciplinary nature and involves domains such as economics, healthcare, and physics. However, they also reveal that the primary focus of both the source and destination journals is computer science.

4. Discussion

The integration of AI and blockchain has gained significant attention from both practitioners and academics [6]. In the context of smart cities, more stakeholders are recognizing the potential of this fusion to achieve sustainable development goals in urban digital ecosystems. Lotka’s law analysis on our dataset shows a strong correlation between the number of authors and the number of publications. Bradford’s law assessment identifies 13 core journals in this field. Our research results demonstrate the higher productivity of developing countries in this area. This could be attributed to the fact that smart city development is seen as an effective solution to alleviate the population pressure in developing countries and address their increasing demand for services and infrastructure [37].
This study identifies the social, conceptual, and intellectual perspectives of the field, revealing that authors lack strong collaborative relationships. Kumar N and Guizani M are in structural holes, while the most productive researchers are Tanwar S, Gupta R, and Kumar N, and King Saud University and Taif University are crucial institutions. Blockchain is the most interesting area for researchers to engage in co-authorship, and institutional collaboration focuses on urban planning. Federated learning is considered a future research hotspot, and combining blockchain and federated learning is a future trend, as previously mentioned by Hajizadeh et al. [6]. Nakamoto S, Sharma PK, and Ferrag MA are the top three highly cited authors, while Allam Z, Kim M, and Grieves M are the leading researchers in terms of centrality scores. The top three productive journals are IEEE Access, IEEE Internet Things J, and IEEE Trans Ind Inform, while the top three influential sources include the Commun ACM, IEEE T Knowl Data En, and Appl Energ. The trend in AI–blockchain integration has shifted toward encrypted IoT and urban planning, leading to new research fronts in this area. Overall, this study provides valuable insights into the current state and future directions of the field.
According to previous research by Hajizadeh et al. [6], potential future directions for AI–blockchain–IoT integration include: (i) collaborative machine learning models for secure and decentralized information sharing between intrusion detection system participants, (ii) collaborative attack mitigation models that utilize resources from other nodes to share the burden and mitigate attacks, and (iii) a trusted signature database that uses blockchain to create a trusted database of attack signatures, where a group of IoT nodes are connected to the blockchain [69]. Furthermore, Laouar et al. [70] and Yigitcanlar et al. [71] suggest that the digital transformation and sustainability of cities through the use of AI and blockchain technologies is the central topic of discussion in the urban planning and development community.
In Table 9, we present the completed body of knowledge proposed by Fitsilis and Kokkinaki [72] on the emerging research field of AI–blockchain convergence in smart cities. We use cluster titles extracted from various perspectives to describe the focus of the literature on specific areas of interest. This body of knowledge provides insights into the state of research in this field and serves as a guide for future studies. It highlights the essential attributes of AI–blockchain convergence in smart cities and emphasizes the close association between this convergence and the practical issues in smart cities practice. The practical applications of AI–blockchain convergence are evident in various domains, such as smart factories, smart agriculture, smart healthcare, smart grids, and electric vehicles, among others. We hope that this body of knowledge will be useful for researchers and practitioners in the field and inspire further research in this emerging area.
In Table 9, the areas of interest related to AI–blockchain convergence are spread across all components of the smart field, indicating that the literature is attempting to address all concerns related to this convergence. In addition to covering all blockchain-related issues and most AI methods and algorithms, the high proportion of technical terms in Table 9 demonstrates the significant role of IoT and 5G in facilitating AI–blockchain convergence for smart cities. The recent advancements in these two technologies, coupled with the need for suitable communication networks to support connected objects in smart cities, have made them indispensable components of this field. Researchers in this area must consider these technologies to build effective AI–blockchain solutions for smart cities. We hope that this table will aid researchers in gaining a comprehensive understanding of the scope of this field and provide a foundation for future research directions.
Our work differs from that of other scholars (e.g., Singh et al. [8], Kiruthika and Ponnuswamy [2], and Gupta et al. [9]) in that we do not focus on one technology (e.g., IoT or 5G) as the foundation for the convergence of AI and blockchain. Instead, we analyze all relevant publications to identify other enablers and emerging trends in this field.

5. Conclusions

The growing number of publications on AI–blockchain integration in smart cities indicates increasing academic attention to this research area. However, few studies have conducted a systematic scientometric visualization of the literature in this area. The main objective of this study is to fill this gap by a bibliometric analysis of 505 papers published from 2017 to 2023 using co-authorship analysis, co-word analysis, and co-citation analysis. Our study provides descriptive statistics of each component of the bibliographic information and uncovers collaborative relationships, key concepts, research foci, leading scholars, influential sources, emerging trends, and primary milestones in the development and evolution of the subject area. We present this article as an overview of the convergence of AI and blockchain in smart cities to the academic community and practitioners in this field. Based on our results, we suggest several related topics for further research, which include federated learning, encrypted IoT, and urban planning. These topics are emerging trends identified by the bursting analysis.
Although we have made all efforts to increase the quality of our analysis, we recognize several limitations. First, our search was limited to publications listed on WoS. Second, the predominance of quantitative methods in bibliometric analysis makes the content or quality of publications uninterpretable [73]. This may have led to the inclusion of some publications in the analysis which in fact deal with a topic other than the convergence of AI and blockchain in smart cities. Finally, there may exist articles that do not contain the search term but are nevertheless focused on the topic, and vice versa.

Author Contributions

Conceptualization, M.A. and M.H.; methodology, M.A. and M.H.; software, M.A.; validation, P.R.; formal analysis, M.A. and M.H.; investigation, M.A. and M.H.; resources, M.A.; data curation, M.A.; writing—original draft preparation, M.A.; writing—review and editing, M.H. and P.R.; visualization, M.A.; supervision, M.A. and P.R.; project administration, M.A. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

The data presented in this study are openly available in Mendeley Data at doi: 10.17632/gpjscgzgyd.1.

Acknowledgments

We express our sincere gratitude to the reviewers for their invaluable comments and suggestions that significantly enhanced the quality of this paper. Their feedback helped us refine our research questions, clarify our methodology, and strengthen the interpretation of our results. We are truly grateful for their time and expertise in providing such insightful critiques. Paper editing was performed with the assistance of ChatGPT, an artificial intelligence language model developed by OpenAI [74].

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Table A1 provides information on the clusters detected in the study, including the number of authors assigned to each cluster, the homogeneity of clustering measured by silhouette values, the average year of publication by authors of that cluster, and a list of keywords identified by natural language processing algorithms, including LSI, MI, and LLR. These algorithms offer qualitative information on the research focus of each cluster. Silhouette values closer to 1 indicate higher precision in clustering [75]. LSI is a linear document indexing method that generates low-dimensional representations of terms based on word co-occurrence. Mutual information measures mutual dependence between terms. LLR, on the other hand, provides the ratio between the probability of observing a keyword in both the input and the background corpus, assuming equal and different probabilities [76] and is considered to have better results than other methods by many researchers (e.g., Niu et al. [77], Su et al. [78], and Zhang et al. [79]).
Table A1. Summary of the largest co-authorship clusters in the subject field.
Table A1. Summary of the largest co-authorship clusters in the subject field.
Cluster IDSizeSilhouetteMean (year)LSIMILLR
0270.9582020smart agriculture; blockchain technology; communication infrastructureblockchain platforms (1.19) a; temperature measurement (1.19); hyperledger (1.19)authentication (8.21, 0.005) b; federated learning (2.76, 0.1); smart agriculture (2.5, 0.5)
1240.8542021reinforcement learning; privacy learning; energy systemsprivacy learning (0.64); intelligent transportation (0.64); vehicular internet of things (0.64)reinforcement learning (5.91, 0.05); privacy preservation (5.91, 0.05); intrusion detection system (5.91, 0.05)
2220.9652020medical services; data models; biological system modelinghealthcare informatics (0.67); fault detection (0.67); fourth industrial revolution (0.67)blockchains (5.79, 0.05); healthcare informatics (2.87, 0.1); fourth industrial revolution (2.87, 0.1)
3190.9882019consortium blockchain; differential privacy; neighboring energy tradingencrypted internet of things (0.2); privacy protection (0.2); consortium blockchain (0.2)encrypted internet of things (4.66, 0.05); consortium blockchain (4.66, 0.05); machine learning (4.66, 0.05)
980.98520225g services; 5g internet; 5g networks5g internet of things (0.1); 5g networks (0.1); 5g services (0.1)5g networks (5.73, 0.05); 5g services (5.73, 0.05); machine learning (5.73, 0.05)
a (mutual information score); b (log-likelihood ratio, p-level).
Table A2 presents a comparison of the cluster names proposed by three algorithms (LSI, MI, and LLR) for the co-occurrence of keywords.
Table A2. Summary of the largest keywords’ co-occurrence clusters in the subject field.
Table A2. Summary of the largest keywords’ co-occurrence clusters in the subject field.
Cluster IDSizeSilhouetteMean (year)LSIMILLR
0370.9882020medical services; biomedical monitoring; image edge detectionInternet of Medical Things (0.33) a; edge computing (0.33); automobiles (0.33)biomedical monitoring (15.11, 0.001) b; image edge detection (10.06, 0.005); smart buildings (10.06, 0.005)
1360.9632020artificial intelligence; cloud computing; edge computingev mobility (0.48); modern transportation system (0.48); power grids (0.48)artificial intelligence (19.92, 0.000); cloud computing (16.1, 0.000); smart grids (11.43, 0.001)
2350.9252020cloud computing; smart factory; manufacturing supply chaindigital manufacturing (0.1); edge analytics (0.1); production planning (0.1)smart factory (13.96, 0.001); industry 4.0 (10.21, 0.005); precision agriculture (8.54, 0.005)
3320.9482021computational modeling; differential privacy; mobile-edge computingdigital twins (0.28); aerial computing (0.28); intelligent reflecting surface (0.28)computational modeling (13.35, 0.001); differential privacy (10.55, 0.005); autonomous systems (10.55, 0.005)
4300.9692020consortium blockchain; commercial egg bank; membership feedata trading (0.21); smart grid communication technologies (0.21); privacy protection (0.21)consortium blockchain (17.39, 0.000); demand response (13, 0.001); machine learning (9.55, 0.005)
5290.9712021iot security; iot applications; cybersecuritycybernetics (0.11); cybersecurity lifecycle (0.11); cyber-physical security (0.11)iot security (13.42, 0.001); internet of vehicles (13.42, 0.001); anomaly detection (8.02, 0.005)
6270.9832020electric vehicles; smart grids; modern power systemautomated services in microgrids (0.15); adaptive charging scheme (0.15); power generation (0.15)electric vehicles (19.04, 0.000); power trading (12.67, 0.001); dematel method (8.94, 0.005)
7260.9852021computation offloading; cloud computing; machine learningenergy finance (0.19); electric variables measurement (0.19); automation (0.19)computation offloading (17.82, 0.000); resource management (16.38, 0.000); renewable energy (8.15, 0.005)
8230.9542019peer-to-peer computing; urban sustainability; system analysisblockchain defined networks (0.51); intelligence networking (0.51); descriptive systematic review (0.51)peer-to-peer computing (12.78, 0.001); smart city (11.11, 0.001); smart contract (10.36, 0.005)
9200.9782020heuristic algorithms; vehicle dynamics; logic gatesintelligent transportation (0.06); heuristic algorithms (0.06); logic gates (0.06)predictive models (11.67, 0.001); energy prediction (11.67, 0.001); heuristic algorithms (7.69, 0.01)
10200.9562021energy internet; to-peer computing; smart gridsinternet (0.07); iov edge computing (0.07); instruction sets (0.07)energy transition (15.04, 0.001); peer-to-peer energy trading (15.04, 0.001); energy internet (11.27, 0.001)
11200.9682020deep learning; smart city; iot-oriented infrastructureconvolutional neural networks (0.2); point biserial correlation (0.2); identity (0.2)deep learning (21.52, 0.000); smart city (17.63, 0.000); fog computing (14.31, 0.001)
12190.9502021digital transformation; green revolution; fourth industrial revolutionprivate network (0.07); ecological shift (0.07); food fraud (0.07)digital transformation (22.63, 0.000); smart agriculture (16, 0.000); ecological shift (7.5, 0.01)
13180.9502020consensus mechanism; process models; smart communitiesblockchain (0.04); bayes methods (0.03); decentralized consensus decision-making (0.03)consensus mechanism (18.22, 0.000); bayes methods (9.05, 0.005); decentralized consensus decision-making (9.05, 0.005)
14171.0002021smart cities; real-time systems; intelligent sensorsdata integrity (0.53); integrity (0.53); network architecture (0.53)internet of things (16.24, 0.000); edge computing (5.29, 0.05); network slicing (4.98, 0.05)
15170.8972021reinforcement learning; recommender systems; data managementdistributed ledger technology (0.06); federated learning (0.06); reinforcement learning (0.06)reinforcement learning (25.92, 0.000); supply chain (15.34, 0.000); recommender systems (15.34, 0.000)
16161.0002020federated learning; machine learning; network architecturesnonorthogonal multiple access (0.14); healthcare networks (0.14); medical imaging (0.14)federated learning (24.05, 0.000); data privacy (13.27, 0.001); nonorthogonal multiple access (6.4, 0.05)
17150.9962020optimization approach; energy negotiation; reinforcement learningblockchain (0.04); stochastic processes (0.03); energy negotiation (0.03)optimization (12.71, 0.001); stochastic processes (9.05, 0.005); energy negotiation (9.05, 0.005)
18150.9732020deep learning; edge devices; occupancy detectionrobotics (0.11); big data analysis (0.11); searching and indexing (0.11)data fusion (13.42, 0.001); big data (10.32, 0.005); robotics (6.69, 0.01)
19120.93120205g mobile communication; artificial intelligence; 5g networksqueueing models (0.08); risk prediction (0.08); 5g networks (0.08)5g mobile communication (12.35, 0.001); quality of service (12.35, 0.001); queueing models (7.19, 0.01)
20110.9642021intrusion detection system; deep learning approaches; smart agricultureagriculture 4.0 (0.04); digital agriculture (0.04); deep learning approaches (0.04)agriculture 4.0 (8.37, 0.005); digital agriculture (8.37, 0.005); deep learning approaches (8.37, 0.005)
a (mutual information score); b (log-likelihood ratio, p-level).
Table A3 compares the topics proposed by three algorithms, LSI, MI, and LLR, for naming the clusters identified in the documents’ co-citation network analysis.
Table A3. Summary of the largest documents’ co-citation clusters in the subject field.
Table A3. Summary of the largest documents’ co-citation clusters in the subject field.
Cluster IDSizeSilhouetteMean (year)LSIMILLR
0620.8472017cloud computing; edge computing; smart agriculturefourth industrial revolution (1.03) a; research and development (1.03); gateways (1.03)smart grids (6.65, 0.01) b; autonomous systems (6.21, 0.05); smart farming (6.21, 0.05)
1410.9252015smart cities; data privacy; data modelsencrypted internet of things (0.35); ipc key technology (0.35); blockchain defined networks (0.35)encrypted internet of things (4.84, 0.05); ipc key technology (4.84, 0.05); blockchain defined networks (4.84, 0.05)
2380.9672019federated learning; intelligent transportation systems; local differential privacyintelligent transportation (0.47); resource allocation (0.47); deep reinforcement learning (0.47)federated learning (11.95, 0.001); reinforcement learning (6.89, 0.01); computational modeling (6.36, 0.05)
3380.9022015smart grids; artificial intelligence; telecommunication networksurban sustainability (0.64); group signature (0.64); predictive analysis (0.64)consortium blockchain (11.64, 0.001); demand response (7.75, 0.01); smart grids (6.67, 0.01)
4270.9722019data privacy; 6g mobile communication; long term evolutionbeyond 5g (0.35); healthcare informatics (0.35); nonorthogonal multiple access (0.35)6g mobile communication (9.67, 0.005); industry 5.0 (9.67, 0.005); blockchain (8.35, 0.005)
5250.8972017edge computing; cloud computing; industrial internetdistributed databases (0.45); software-defined networking (0.45); deep reinforcement learning (0.45)computation offloading (8.85, 0.005); recommender systems (8.85, 0.005); distributed databases (4.42, 0.05)
6210.9392019deep learning; iot-oriented infrastructure; vehicular adMulti-access edge computing (0.12); artificial intelligence (0.12); video analytics (0.12)cyber physical systems (13.05, 0.001); iot-oriented infrastructure (13.05, 0.001); smart city (9.31, 0.005)
7210.9462013blockchain technology; smart agriculture; bibliometric analysiswireless networks (0.2); temperature measurement (0.2); security and privacy (0.2)key agreement (11.5, 0.001); authentication (9.47, 0.005); security (6.4, 0.05)
91712018smart cities; smart services; smart mobilitydistributed storage (0.24); smart services (0.24); smart sensors (0.24)urban planning (10.86, 0.001); e-governance (10.86, 0.001); iot (8.66, 0.005)
1470.962011artificial intelligence; cloud computing; edge computingconvolutional neural networks (0.22); health data (0.22); electronic health records (0.22)healthcare (11.17, 0.001); convolutional neural networks (5.57, 0.05); decentralized governance (5.57, 0.05)
1550.9792019smart meters; smart grids; energy managementblockchain (0.05); volunteer computing (0.04); drones (0.04)volunteer computing (8.14, 0.005); drones (8.14, 0.005); routing (8.14, 0.005)
a (mutual information score); b (log-likelihood ratio, p-level).

Appendix B

TS = ((“artificial intelligence” OR “computer vision” OR ((image OR video OR document OR handwriting OR face OR pattern OR gesture OR semantic) NEAR/0 (understanding OR analys* OR sequence OR recognition)) OR (machine NEAR/0 (intelligence OR learning)) OR “visual search” OR “content-based retrieval” OR (Markov NEAR/0 (chain OR network)) OR “neural network” OR ((federated OR supervised OR unsupervised OR behavioral OR cognitive OR neural OR “game theor*” OR online OR reinforcement OR relational OR statistical OR distributed OR deep OR transfer OR Q OR edge) NEAR/0 learning) OR classification OR “adaptive control” OR “signal processing” OR clustering OR “data mining” OR “dimensionality reduction” OR ((choice OR graphical) NEAR/0 model) OR “independent component analysis” OR “inductive logic programming” OR ((kernel OR nonparametric OR spectral) NEAR/0 method) OR “Monte Carlo” OR “variational inference” OR “distributed reasoning” OR cognit* OR ontolog* OR “languages representation” OR “knowledge representation” OR “dynamic spectrum” OR chatbot OR “autonomous robot” OR “natural language processing” OR Bayesian OR “expert system” OR “support vector machine” OR “random forest” OR “decision tree” OR ((genetic OR learning) NEAR/0 algorithm)) AND (blockchain* OR “decentrali*ed autonomous organi*ation” OR (crypto NEAR/0 (currenc* OR asset)) OR “distributed ledger” OR “smart contract” OR “initial coin offering” OR “decentrali*ed ledger”) AND (((smart OR intelligent) NEAR/0 (city OR cities OR sensing OR grid OR infrastructure OR transport* OR mobility OR logistics OR energy OR building OR home OR construction OR aquaculture OR food OR agriculture OR governance OR people OR econom* OR health* OR clinic* OR hospital* OR tourism OR living OR communit* OR factor* OR retail OR campus)) OR ((city OR urban) NEAR/0 (roadmap OR brain OR computing OR maturity)) OR “global cities” OR “global city” OR “citizen e-service”))

References

  1. Badidi, E. Edge AI and blockchain for smart sustainable cities: Promise and potential. Sustainability 2022, 14, 7609. [Google Scholar] [CrossRef]
  2. Kiruthika, M.; Ponnuswamy, P.P. Fusion of IoT, blockchain and artificial intelligence for developing smart cities. In Blockchain, Internet of Things, and Artificial Intelligence; Chapman and Hall/CRC: Boca Raton, FL, USA, 2021; pp. 155–177. [Google Scholar]
  3. Salah, K.; Rehman, M.H.U.; Nizamuddin, N.; Al-Fuqaha, A. Blockchain for AI: Review and open research challenges. IEEE Access 2019, 7, 10127–10149. [Google Scholar] [CrossRef]
  4. Nakamoto, S. Bitcoin: A Peer-to-Peer Electronic Cash System. 2008. Available online: https://bitcoin.org/bitcoin.pdf. (accessed on 25 February 2023).
  5. Alaeddini, M.; Dugdale, J.; Reaidy, P.; Madiès, P.; Gürcan, Ö. An Agent-Oriented, Blockchain-Based Design of the Interbank Money Market Trading System. In Agents and Multi-Agent Systems: Technologies and Applications; Springer: Berlin/Heidelberg, Germany, 2021; pp. 3–16. [Google Scholar]
  6. Hajizadeh, M.; Alaeddini, M.; Reaidy, P. Bibliometric Analysis on the Convergence of Artificial Intelligence and Blockchain. In Blockchain and Applications, 4th International Congress; Prieto, J., Benítez Martínez, F.L., Ferretti, S., Arroyo Guardeño, D., Tomás Nevado-Batalla, P., Eds.; BLOCKCHAIN 2022; Lecture Notes in Networks and Systems; Springer: Cham, Switzerland, 2023; Volume 595, pp. 334–344. [Google Scholar]
  7. Sharma, A.; Podoplelova, E.; Shapovalov, G.; Tselykh, A.; Tselykh, A. Sustainable smart cities: Convergence of artificial intelligence and blockchain. Sustainability 2021, 13, 13076. [Google Scholar] [CrossRef]
  8. Singh, S.; Sharma, P.K.; Yoon, B.; Shojafar, M.; Cho, G.H.; Ra, I.-H. Convergence of blockchain and artificial intelligence in IoT network for the sustainable smart city. Sustain. Cities Soc. 2020, 63, 102364. [Google Scholar] [CrossRef]
  9. Gupta, R.; Kumari, A.; Tanwar, S. Fusion of blockchain and artificial intelligence for secure drone networking underlying 5G communications. Trans. Emerg. Telecommun. Technol. 2021, 32, e4176. [Google Scholar] [CrossRef]
  10. Rajawat, A.S.; Bedi, P.; Goyal, S.; Shaw, R.N.; Ghosh, A.; Aggarwal, S. AI and Blockchain for Healthcare Data Security in Smart Cities; AI and IoT for Smart City Applications; Springer Nature: Singapore, 2022; pp. 185–198. [Google Scholar]
  11. Singh, J.; Sajid, M.; Gupta, S.K.; Haidri, R.A. Artificial Intelligence and Blockchain Technologies for Smart City. In Intelligent Green Technologies for Sustainable Smart Cities; Wiley: Hoboken, NJ, USA, 2022; pp. 317–330. [Google Scholar]
  12. Grant, M.J.; Booth, A. A typology of reviews: An analysis of 14 review types and associated methodologies. Health Inf. Libr. J. 2009, 26, 91–108. [Google Scholar] [CrossRef]
  13. Booth, A.; Sutton, A.; Papaioannou, D. Systematic Approaches to a Successful Literature Review; Sage: Newcastle upon Tyne, UK, 2016. [Google Scholar]
  14. Janik, A.; Ryszko, A.; Szafraniec, M. Scientific landscape of smart and sustainable cities literature: A bibliometric analysis. Sustainability 2020, 12, 779. [Google Scholar] [CrossRef] [Green Version]
  15. Chen, C. CiteSpace II: Detecting and visualizing emerging trends and transient patterns in scientific literature. JASIS 2006, 57, 359–377. [Google Scholar] [CrossRef] [Green Version]
  16. Aria, M.; Cuccurullo, C. bibliometrix: An R-tool for comprehensive science mapping analysis. J. Informetr. 2017, 11, 959–975. [Google Scholar] [CrossRef]
  17. Engqvist, L.; Frommen, J.G. The h-index and self-citations. Trends Ecol. Evol. 2008, 23, 250–252. [Google Scholar] [CrossRef] [Green Version]
  18. Alaeddini, M.; Madiès, P.; Reaidy, P.; Dugdale, J. Interbank money market concerns and actors’ strategies–A systematic review of 21st century literature. J. Econ. Surv. 2022, 1–82. [Google Scholar] [CrossRef]
  19. Leydesdorff, L.; Carley, S.; Rafols, I. Global maps of science based on the new Web-of-Science categories. Scim 2013, 94, 589–593. [Google Scholar] [CrossRef] [Green Version]
  20. Chen, C.; Leydesdorff, L. Patterns of connections and movements in dual-map overlays: A new method of publication portfolio analysis. J. Assoc. Inf. Sci. Technol. 2014, 65, 334–351. [Google Scholar] [CrossRef] [Green Version]
  21. Kumar, S.; Lim, W.M.; Sivarajah, U.; Kaur, J. Artificial intelligence and blockchain integration in business: Trends from a bibliometric-content analysis. Inf. Syst. Front. 2022, 1–26. [Google Scholar] [CrossRef] [PubMed]
  22. White, K. Publications Output: US Trends and International Comparisons; Science & Engineering Indicators 2022; National Science Board (NSB): Alexandria, VA, USA, 2021. [Google Scholar]
  23. Lotka, A.J. The frequency distribution of scientific productivity. JWasA 1926, 16, 317–323. [Google Scholar]
  24. Zhi, W.; Ji, G. Constructed wetlands, 1991–2011: A review of research development, current trends, and future directions. ScTEn 2012, 441, 19–27. [Google Scholar] [CrossRef] [PubMed]
  25. Bradford, S.C. Sources of information on specific subjects. Engineering 1934, 137, 85–86. [Google Scholar]
  26. Aggarwal, S.; Chaudhary, R.; Aujla, G.S.; Kumar, N.; Choo, K.-K.R.; Zomaya, A.Y. Blockchain for smart communities: Applications, challenges and opportunities. J. Netw. Comput. Appl. 2019, 144, 13–48. [Google Scholar] [CrossRef]
  27. Allam, Z.; Dhunny, Z.A. On big data, artificial intelligence and smart cities. Cities 2019, 89, 80–91. [Google Scholar] [CrossRef]
  28. Rathore, S.; Kwon, B.W.; Park, J.H. BlockSecIoTNet: Blockchain-based decentralized security architecture for IoT network. J. Netw. Comput. Appl. 2019, 143, 167–177. [Google Scholar]
  29. Klerkx, L.; Jakku, E.; Labarthe, P. A review of social science on digital agriculture, smart farming and agriculture 4.0: New contributions and a future research agenda. NJAS-Wagening. J. Life Sci. 2019, 90, 100315. [Google Scholar] [CrossRef]
  30. Gai, K.; Wu, Y.; Zhu, L.; Qiu, M.; Shen, M. Privacy-preserving energy trading using consortium blockchain in smart grid. IEEE Trans. Ind. Inform. 2019, 15, 3548–3558. [Google Scholar] [CrossRef]
  31. Fuller, A.; Fan, Z.; Day, C.; Barlow, C. Digital twin: Enabling technologies, challenges and open research. IEEE Access 2020, 8, 108952–108971. [Google Scholar] [CrossRef]
  32. Shen, M.; Tang, X.; Zhu, L.; Du, X.; Guizani, M. Privacy-preserving support vector machine training over blockchain-based encrypted IoT data in smart cities. IEEE Internet Things J. 2019, 6, 7702–7712. [Google Scholar] [CrossRef]
  33. Dorri, A.; Kanhere, S.S.; Jurdak, R.; Gauravaram, P. LSB: A Lightweight Scalable Blockchain for IoT security and anonymity. JPDC 2019, 134, 180–197. [Google Scholar] [CrossRef]
  34. Singh, S.K.; Rathore, S.; Park, J.H. Blockiotintelligence: A blockchain-enabled intelligent IoT architecture with artificial intelligence. Future Gener. Comput. Syst. 2020, 110, 721–743. [Google Scholar] [CrossRef]
  35. Maddikunta, P.K.R.; Pham, Q.-V.; Prabadevi, B.; Deepa, N.; Dev, K.; Gadekallu, T.R.; Ruby, R.; Liyanage, M. Industry 5.0: A survey on enabling technologies and potential applications. J. Ind. Inf. Integr. 2022, 26, 100257. [Google Scholar] [CrossRef]
  36. Vu, K.; Hartley, K. Promoting smart cities in developing countries: Policy insights from Vietnam. Telecommun. Pol. 2018, 42, 845–859. [Google Scholar] [CrossRef]
  37. Tan, S.Y.; Taeihagh, A. Smart city governance in developing countries: A systematic literature review. Sustainability 2020, 12, 899. [Google Scholar] [CrossRef] [Green Version]
  38. Egghe, L. Theory and practise of the g-index. Scim 2006, 69, 131–152. [Google Scholar] [CrossRef]
  39. Chen, C.; Ibekwe-SanJuan, F.; Hou, J. The structure and dynamics of cocitation clusters: A multiple-perspective cocitation analysis. JASIS 2010, 61, 1386–1409. [Google Scholar] [CrossRef] [Green Version]
  40. Dumais, S.T. LSA and information retrieval: Getting back to basics. In Handbook of Latent Semantic Analysis; Psychology Press: London, UK, 2007; pp. 305–334. [Google Scholar]
  41. Magerman, D.M.; Marcus, M.P. Parsing a Natural Language Using Mutual Information Statistics. In Proceedings of the AAAI, Boston, MA, USA, 29 July–3 August 1990; pp. 984–989. [Google Scholar]
  42. Ding, Y.; Chowdhury, G.G.; Foo, S. Bibliometric cartography of information retrieval research by using co-word analysis. Inf. Process. Manag. 2001, 37, 817–842. [Google Scholar] [CrossRef] [Green Version]
  43. Kenekayoro, P. Author and Keyword Bursts as Indicators for the Identification of Emerging or Dying Research Trends. J. Sci. Res. 2020, 9, 120–126. [Google Scholar] [CrossRef]
  44. Chen, C.; Chen, Y.; Horowitz, M.; Hou, H.; Liu, Z.; Pellegrino, D. Towards an explanatory and computational theory of scientific discovery. J. Informetr. 2009, 3, 191–209. [Google Scholar] [CrossRef] [Green Version]
  45. Conway, M. Mining a corpus of biographical texts using keywords. Lit. Linguist. Comput. 2010, 25, 23–35. [Google Scholar] [CrossRef]
  46. Shah, P.K.; Perez-Iratxeta, C.; Bork, P.; Andrade, M.A. Information extraction from full text scientific articles: Where are the keywords? BMC Bioinform. 2003, 4, 20. [Google Scholar] [CrossRef] [Green Version]
  47. Neary, M.O.; Brydon, S.P.; Kmiec, P.; Rollins, S.; Cappello, P. Javelin++ Scalability Issues in Global Computing. In Proceedings of the ACM 1999 Conference on Java Grande, San Francisco, CA, USA, 12–14 June 1999; pp. 171–180. [Google Scholar]
  48. Sarmenta, L.F.; Hirano, S. Bayanihan: Building and studying web-based volunteer computing systems using Java. Future Gener. Comput. Syst. 1999, 15, 675–686. [Google Scholar] [CrossRef]
  49. Mengistu, T.M.; Albuali, A.; Alahmadi, A.; Che, D. Volunteer cloud as an edge computing enabler. In International Conference on Edge Computing; Springer: Berlin/Heidelberg, Germany, 2019; pp. 76–84. [Google Scholar]
  50. Li, L.; Liu, J.; Cheng, L.; Qiu, S.; Wang, W.; Zhang, X.; Zhang, Z. Creditcoin: A privacy-preserving blockchain-based incentive announcement network for communications of smart vehicles. IEEE Trans. Intell. Transp. Syst. 2018, 19, 2204–2220. [Google Scholar] [CrossRef] [Green Version]
  51. Novo, O. Blockchain meets IoT: An architecture for scalable access management in IoT. IEEE Internet Things J. 2018, 5, 1184–1195. [Google Scholar] [CrossRef]
  52. Christidis, K.; Devetsikiotis, M. Blockchains and smart contracts for the internet of things. Ieee Access 2016, 4, 2292–2303. [Google Scholar] [CrossRef]
  53. Oezyilmaz, K.R.; Yurdakul, A. Integrating low-power IoT devices to a blockchain-based infrastructure: Work-in-progress. In Proceedings of the EMSOFT Companion, Seoul, Republic of Korea, 15–20 October 2017; pp. 13:11–13:12. [Google Scholar]
  54. Ackermann, T.; Andersson, G.; Söder, L. Distributed generation: A definition. Electr. Power Syst. Res. 2001, 57, 195–204. [Google Scholar] [CrossRef]
  55. Yin, C.; Xi, J.; Sun, R.; Wang, J. Location privacy protection based on differential privacy strategy for big data in industrial internet of things. IEEE Trans. Ind. Inform. 2017, 14, 3628–3636. [Google Scholar] [CrossRef]
  56. Wood, G. Ethereum: A secure decentralised generalised transaction ledger. Ethereum Proj. Yellow Pap. 2014, 151, 1–32. [Google Scholar]
  57. Al-Jaroodi, J.; Mohamed, N. Blockchain in industries: A survey. IEEE Access 2019, 7, 36500–36515. [Google Scholar] [CrossRef]
  58. Li, Z.; Kang, J.; Yu, R.; Ye, D.; Deng, Q.; Zhang, Y. Consortium blockchain for secure energy trading in industrial internet of things. IEEE Trans. Ind. Inform. 2017, 14, 3690–3700. [Google Scholar] [CrossRef] [Green Version]
  59. Swan, M. Blockchain: Blueprint for a New Economy; O’Reilly Media, Inc.: Sebastopol, CA, USA, 2015. [Google Scholar]
  60. Yli-Huumo, J.; Ko, D.; Choi, S.; Park, S.; Smolander, K. Where is current research on blockchain technology?—A systematic review. PLoS ONE 2016, 11, e0163477. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  61. Aitzhan, N.Z.; Svetinovic, D. Security and privacy in decentralized energy trading through multi-signatures, blockchain and anonymous messaging streams. IEEE Trans. Dependable Secur. Comput. 2016, 15, 840–852. [Google Scholar] [CrossRef]
  62. Sharma, P.K.; Singh, S.; Jeong, Y.-S.; Park, J.H. Distblocknet: A distributed blockchains-based secure sdn architecture for iot networks. IComM 2017, 55, 78–85. [Google Scholar] [CrossRef]
  63. Tschorsch, F.; Scheuermann, B. Bitcoin and beyond: A technical survey on decentralized digital currencies. IEEE Commun. Surv. Tutor. 2016, 18, 2084–2123. [Google Scholar] [CrossRef]
  64. Sharma, P.K.; Moon, S.Y.; Park, J.H. Block-VN: A distributed blockchain based vehicular network architecture in smart city. J. Inf. Process. Syst. 2017, 13, 184–195. [Google Scholar]
  65. Dorri, A.; Kanhere, S.S.; Jurdak, R.; Gauravaram, P. Blockchain for IoT security and privacy: The case study of a smart home. In Proceedings of the 2017 IEEE International Conference on Pervasive Computing and Communications Workshops (PerCom Workshops), Kona, HI, USA, 13–17 March 2017; pp. 618–623. [Google Scholar]
  66. Dorri, A.; Steger, M.; Kanhere, S.S.; Jurdak, R. Blockchain: A distributed solution to automotive security and privacy. IComM 2017, 55, 119–125. [Google Scholar] [CrossRef] [Green Version]
  67. Li, X.; Jiang, P.; Chen, T.; Luo, X.; Wen, Q. A survey on the security of blockchain systems. Future Gener. Comput. Syst. 2020, 107, 841–853. [Google Scholar] [CrossRef] [Green Version]
  68. Dorri, A.; Kanhere, S.S.; Jurdak, R. Blockchain in internet of things: Challenges and solutions. arXiv 2016, arXiv:1608.05187. [Google Scholar]
  69. Alharbi, S.; Attiah, A.; Alghazzawi, D. Integrating Blockchain with Artificial Intelligence to Secure IoT Networks: Future Trends. Sustainability 2022, 14, 16002. [Google Scholar] [CrossRef]
  70. Laouar, M.R.; Hamad, Z.T.; Eom, S. Towards blockchain-based urban planning: Application for waste collection management. In Proceedings of the 9th International Conference on Information Systems and Technologies, Cairo, Egypt, 24–26 March 2019; pp. 1–6. [Google Scholar]
  71. Yigitcanlar, T.; Kankanamge, N.; Regona, M.; Ruiz Maldonado, A.; Rowan, B.; Ryu, A.; Desouza, K.C.; Corchado, J.M.; Mehmood, R.; Li, R.Y.M. Artificial intelligence technologies and related urban planning and development concepts: How are they perceived and utilized in Australia? J. Open Innov. Technol. Mark. Complex. 2020, 6, 187. [Google Scholar] [CrossRef]
  72. Fitsilis, P.; Kokkinaki, A. Smart cities body of knowledge. In Proceedings of the 25th Pan-Hellenic Conference on Informatics, Volos, Greece, 26–28 November 2021; pp. 155–159. [Google Scholar]
  73. Pajo, A.T.; Espiritu, A.I.; Jamora, R.D.G. Scientific impact of movement disorders research from Southeast Asia: A bibliometric analysis. Park. Relat. Disord. 2020, 81, 205–212. [Google Scholar] [CrossRef] [PubMed]
  74. OpenAI. ChatGPT [Software]. 2023. Available online: https://openai.com (accessed on 25 February 2023).
  75. Ping, Q.; He, J.; Chen, C. How many ways to use CiteSpace? A study of user interactive events over 14 months. J. Assoc. Inf. Sci. Technol. 2017, 68, 1234–1256. [Google Scholar] [CrossRef]
  76. Jurafsky, D.; Martin, J.H. Speech and Language Processing; Prentice Hall: Cliffs, NJ, USA, 2014; Volume 3. [Google Scholar]
  77. Niu, Y.; Adam, M.; Hussein, H. Connecting Urban Green Spaces with Children: A Scientometric Analysis Using CiteSpace. Land 2022, 11, 1259. [Google Scholar] [CrossRef]
  78. Su, Z.; Zhang, M.; Wu, W. Visualizing sustainable supply chain management: A systematic scientometric review. Sustainability 2021, 13, 4409. [Google Scholar] [CrossRef]
  79. Zhang, Q.; Rong, G.; Meng, Q.; Yu, M.; Xie, Q.; Fang, J. Outlining the keyword co-occurrence trends in Shuanghuanglian injection research: A bibliometric study using CiteSpace III. J. Tradit. Chin. Med. Sci. 2020, 7, 189–198. [Google Scholar] [CrossRef]
Figure 1. Methodological scheme for the research.
Figure 1. Methodological scheme for the research.
Smartcities 06 00037 g001
Figure 2. (a) Annual scientific production and average citations; (b) author productivity through Lotka’s Law.
Figure 2. (a) Annual scientific production and average citations; (b) author productivity through Lotka’s Law.
Smartcities 06 00037 g002
Figure 3. Authors’ productivity in terms of number of documents: (a) full-counted; (b) fractionalized; (c) total citations; (d) h-index.
Figure 3. Authors’ productivity in terms of number of documents: (a) full-counted; (b) fractionalized; (c) total citations; (d) h-index.
Smartcities 06 00037 g003
Figure 4. Sources’ influence in terms of: (a) number of documents; (b) number of local citations (from reference lists); (c) total citations; (d) h-index.
Figure 4. Sources’ influence in terms of: (a) number of documents; (b) number of local citations (from reference lists); (c) total citations; (d) h-index.
Smartcities 06 00037 g004
Figure 5. Scientific production in the subject area across the globe.
Figure 5. Scientific production in the subject area across the globe.
Smartcities 06 00037 g005
Figure 6. Evolution of scientific production by (a) countries; (b) organizations.
Figure 6. Evolution of scientific production by (a) countries; (b) organizations.
Smartcities 06 00037 g006
Figure 7. Largest co-authorship clusters in the subject field.
Figure 7. Largest co-authorship clusters in the subject field.
Smartcities 06 00037 g007
Figure 8. Largest co-authors’ institutions clusters in the subject field.
Figure 8. Largest co-authors’ institutions clusters in the subject field.
Smartcities 06 00037 g008
Figure 9. Largest keywords’ co-occurrence clusters in the subject field.
Figure 9. Largest keywords’ co-occurrence clusters in the subject field.
Smartcities 06 00037 g009
Figure 10. Most frequent authors’ keyword categories.
Figure 10. Most frequent authors’ keyword categories.
Smartcities 06 00037 g010
Figure 11. Largest terms’ co-occurrence clusters in the subject field.
Figure 11. Largest terms’ co-occurrence clusters in the subject field.
Smartcities 06 00037 g011
Figure 12. Largest author co-citation clusters in the subject field.
Figure 12. Largest author co-citation clusters in the subject field.
Smartcities 06 00037 g012
Figure 13. Largest source co-citation clusters in the subject field.
Figure 13. Largest source co-citation clusters in the subject field.
Smartcities 06 00037 g013
Figure 14. Largest document co-citation clusters in the subject field.
Figure 14. Largest document co-citation clusters in the subject field.
Smartcities 06 00037 g014
Figure 15. Timeline visualization of the largest document co-citation clusters in the subject field.
Figure 15. Timeline visualization of the largest document co-citation clusters in the subject field.
Smartcities 06 00037 g015
Figure 16. Domain-level citation pattern in the subject field.
Figure 16. Domain-level citation pattern in the subject field.
Smartcities 06 00037 g016
Table 1. Characteristics of the selected publications.
Table 1. Characteristics of the selected publications.
VariableResults
Timespan2017:2023
Sources (journals, books, etc.)251
Documents (articles, proceeding papers, etc.)505
Annual growth rate %12.25
Document average age1.03
Average citations per documents 115.14
References25,963
Average references per documents 251.41
Authors1636
Authors of single-authored documents26
Single-authored documents29
Co-authors per documents 34.26
International co-authorships % 452.67
1 The result of dividing the total number of citations by the number of documents. 2 The result of dividing the total number of references by the number of documents. 3 The ratio of author appearances (i.e., the total number of authors appearing in the documents, where an author appearing in two papers counts as two) to the documents. 4 The ratio of the number of documents with authors affiliated to institutions in more than one country to the total number of documents.
Table 2. The most influential sources in the subject field.
Table 2. The most influential sources in the subject field.
SourceNumber of PublicationsTotal
Citations
h-Index
(Local)
Impact Factor (JCR’21)
IEEE Access341305183.476
IEEE Transactions on Intelligent Transportation Systems2017899.551
Sensors188763.847
IEEE Internet of Things Journal17436910.238
Sustainability169743.251
Electronics109452.690
Sustainable Cities and Society10353610.696
Applied Sciences-Basel93232.838
Energies86543.252
CMC-Computers Materials and Continua7513.860
IEEE Transactions on Industrial Informatics7309411.648
Wireless Communications and Mobile Computing62332.146
Computational Intelligence and Neuroscience5723.120
Table 3. The most globally cited publications in the subject field.
Table 3. The most globally cited publications in the subject field.
No.PublicationYearCitations
1Klerkx et al. [29]2019269
2Gai et al. [30]2019259
3Fuller et al. [31]2020258
4Allam and Dhunny [27]2019241
5Shen et al. [32]2019161
6Aggarwal et al. [26]2019144
7Dorri et al. [33]2019143
8Singh et al. [34]2020138
9Singh et al. [8]2020124
10Maddikunta et al. [35]2022121
Table 4. Top ten keywords with highest betweenness centrality.
Table 4. Top ten keywords with highest betweenness centrality.
No.KeywordFrequencyDegreeCentralityYearCluster
1smart grid65270.6320181
2artificial intelligence77200.5720181
3differential privacy8100.4120193
4smart city88190.3520188
5cybersecurity20100.2920205
6blockchain283110.2820186
7distributed computing3130.2420188
8digital twin7100.2420193
9real-time system690.24202010
10consortium blockchain4130.2220194
Table 5. Keywords with burst of at least one year.
Table 5. Keywords with burst of at least one year.
No.KeywordYearStrengthBeginEndSigma2017–2023
1consortium blockchain20191.86201920191.44Smartcities 06 00037 i001
2big data20191.63201920191.28Smartcities 06 00037 i002
3security and privacy20203.52202020201.34Smartcities 06 00037 i003
4energy internet20201.57202020201.00Smartcities 06 00037 i004
5peer-to-peer network20201.57202020201.00Smartcities 06 00037 i005
6federated learning20202.29202220231.27Smartcities 06 00037 i006
7collaborative work20221.80202220231.00Smartcities 06 00037 i007
Table 6. Top ten co-cited sources with the highest betweenness centrality scores.
Table 6. Top ten co-cited sources with the highest betweenness centrality scores.
No.SourceFrequencyDegreeCentralityYearCluster
1Communications of the ACM33200.3320174
2IEEE Transactions on Knowledge and Data Engineering21180.3120190
3Applied Energy68200.2920174
42017 IEEE 24th International Conference on Web Services (ICWS 2017)3140.2520201
5IEEE Access330140.2220174
6IEEE Transactions on Smart Grid78130.2120183
7ACM Transactions on Intelligent Systems and Technology33130.2120199
82017 IEEE International Conference on Pervasive Computing and Communications Workshops (PerCom Workshops)14100.2120190
9IEEE International Conference on Systems, Man, and Cybernetics (SMC)1390.1920190
102016 IEEE 19th International Conference on Intelligent Transportation Systems (ITSC)16180.18201713
Table 7. Top ten co-cited documents with the highest betweenness centrality scores.
Table 7. Top ten co-cited documents with the highest betweenness centrality scores.
No.PublicationYearFrequencyDegreeCentralityCluster
1Li et al. [50]20189130.232
2Novo [51]20181190.180
3Christidis and Devetsikiotis [52]201631140.161
4Oezyilmaz and Yurdakul [53]20172210.141
5Ackermann et al. [54]2001260.143
6Gai et al. [30]20191240.139
7Yin et al. [55]20175100.130
8Rathore et al. [28]20195130.120
9Wood [56]20141120.119
10Al-Jaroodi and Mohamed [57]20195150.111
Table 8. Top 12 references with the strongest citation bursts.
Table 8. Top 12 references with the strongest citation bursts.
No.PublicationYearStrengthBeginEndSigma2017–2023
1Li et al. [58]20173.1201820201.06Smartcities 06 00037 i008
2Swan [59]20152.71201820201.02Smartcities 06 00037 i009
3Yli-Huumo et al. [60]20162.71201820201.01Smartcities 06 00037 i010
4Aitzhan and Svetinovic [61]20162.37201820191.05Smartcities 06 00037 i011
5Sharma et al. [62]20174.37201920201.1Smartcities 06 00037 i012
6Tschorsch and Scheuermann [63]20163.05201920201.1Smartcities 06 00037 i013
7Sharma et al. [64]20172.61201920201.1Smartcities 06 00037 i014
8Dorri et al. [65]20172.61201920201.02Smartcities 06 00037 i015
9Dorri et al. [66]20172.61201920201.03Smartcities 06 00037 i016
10Li et al. [67]20202.18201920201.21Smartcities 06 00037 i017
11Gai et al. [30]20192.44202020211.34Smartcities 06 00037 i018
12Wood [56]20142.24202020211.27Smartcities 06 00037 i019
Table 9. Smart cities body of knowledge adapted from Fitsilis and Kokkinaki [72].
Table 9. Smart cities body of knowledge adapted from Fitsilis and Kokkinaki [72].
ComponentSub-ComponentArea of Interest
Applied computing blockchains; consortium blockchain; consensus mechanism; smart contract; data fusion; big data; information retrieval; computation offloading; peer-to-peer computing; volunteer computing;
Human-centered computing 5G/6G mobile communication; wireless sensor networks; vehicular ad hoc networks; encrypted IoT; data consumer; electronic mail; sensing efficiency; electric vehicles; vehicle to grid; microgrid
Social and professional topicsComputing/technology policyprivacy preservation; optimization; IoT security; sustainability
Professional topicsnatural gas; digital transformation; industry 4.0; agriculture 4.0; healthcare; biomedical monitoring; urban planning; energy market; energy transition; energy exchange; digital finance; energy internet
Computing methodologies computational modeling; data models; predictive models; artificial intelligence; reinforcement learning; federated learning; deep learning; metaheuristics; anomaly detection
Information systemsInformation systems applicationscyber physical system; intelligent transportation system; intrusion detection system; malicious application; servers
Software and its engineeringSoftware organization and propertiesauthentication; key agreement; quality of service; task analysis
Contextual software domainssmart cities; smart factory; smart grids; smart buildings; smart healthcare system
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

Alaeddini, M.; Hajizadeh, M.; Reaidy, P. A Bibliometric Analysis of Research on the Convergence of Artificial Intelligence and Blockchain in Smart Cities. Smart Cities 2023, 6, 764-795. https://doi.org/10.3390/smartcities6020037

AMA Style

Alaeddini M, Hajizadeh M, Reaidy P. A Bibliometric Analysis of Research on the Convergence of Artificial Intelligence and Blockchain in Smart Cities. Smart Cities. 2023; 6(2):764-795. https://doi.org/10.3390/smartcities6020037

Chicago/Turabian Style

Alaeddini, Morteza, Maryam Hajizadeh, and Paul Reaidy. 2023. "A Bibliometric Analysis of Research on the Convergence of Artificial Intelligence and Blockchain in Smart Cities" Smart Cities 6, no. 2: 764-795. https://doi.org/10.3390/smartcities6020037

APA Style

Alaeddini, M., Hajizadeh, M., & Reaidy, P. (2023). A Bibliometric Analysis of Research on the Convergence of Artificial Intelligence and Blockchain in Smart Cities. Smart Cities, 6(2), 764-795. https://doi.org/10.3390/smartcities6020037

Article Metrics

Back to TopTop