A Bibliometric Analysis of Research on the Convergence of Artificial Intelligence and Blockchain in Smart Cities
Abstract
:1. Introduction
2. Materials and Methods
2.1. Research Questions
- 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
2.3. Data Collection
2.4. Data Extraction
2.5. Data Visualization and Analysis
3. Results
3.1. Demographic Perspective of the Study Area
3.1.1. Basic Summary of the Sampled Publications
3.1.2. The Most Prolific Authors
3.1.3. The Most Influential Sources
3.1.4. The Most Influential Publications
3.2. Geographical Perspective of the Study Area
3.2.1. Countries’ Scientific Production and Collaboration
3.2.2. The Most Relevant Affiliations
3.3. Social Perspective of the Study Area
3.3.1. Co-Authorship Network
3.3.2. Co-Authors’ Institutions Network
3.4. Conceptual Perspective of the Study Area
3.4.1. Co-Occurring Keywords Network
3.4.2. Keyword Burst Analysis
3.4.3. Text Processing of Terms
3.5. Intellectual Perspective of the Study Area
3.5.1. Author Co-Citation Network
3.5.2. Journal Co-Citation Network
3.5.3. Document Co-Citation Network
3.5.4. Bursts in the Network of Document Co-Citations
- 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
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Cluster ID | Size | Silhouette | Mean (year) | LSI | MI | LLR |
---|---|---|---|---|---|---|
0 | 27 | 0.958 | 2020 | smart agriculture; blockchain technology; communication infrastructure | blockchain 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) |
1 | 24 | 0.854 | 2021 | reinforcement learning; privacy learning; energy systems | privacy 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) |
2 | 22 | 0.965 | 2020 | medical services; data models; biological system modeling | healthcare 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) |
3 | 19 | 0.988 | 2019 | consortium blockchain; differential privacy; neighboring energy trading | encrypted 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) |
9 | 8 | 0.985 | 2022 | 5g services; 5g internet; 5g networks | 5g 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) |
Cluster ID | Size | Silhouette | Mean (year) | LSI | MI | LLR |
---|---|---|---|---|---|---|
0 | 37 | 0.988 | 2020 | medical services; biomedical monitoring; image edge detection | Internet 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) |
1 | 36 | 0.963 | 2020 | artificial intelligence; cloud computing; edge computing | ev 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) |
2 | 35 | 0.925 | 2020 | cloud computing; smart factory; manufacturing supply chain | digital 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) |
3 | 32 | 0.948 | 2021 | computational modeling; differential privacy; mobile-edge computing | digital 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) |
4 | 30 | 0.969 | 2020 | consortium blockchain; commercial egg bank; membership fee | data 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) |
5 | 29 | 0.971 | 2021 | iot security; iot applications; cybersecurity | cybernetics (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) |
6 | 27 | 0.983 | 2020 | electric vehicles; smart grids; modern power system | automated 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) |
7 | 26 | 0.985 | 2021 | computation offloading; cloud computing; machine learning | energy 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) |
8 | 23 | 0.954 | 2019 | peer-to-peer computing; urban sustainability; system analysis | blockchain 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) |
9 | 20 | 0.978 | 2020 | heuristic algorithms; vehicle dynamics; logic gates | intelligent 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) |
10 | 20 | 0.956 | 2021 | energy internet; to-peer computing; smart grids | internet (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) |
11 | 20 | 0.968 | 2020 | deep learning; smart city; iot-oriented infrastructure | convolutional 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) |
12 | 19 | 0.950 | 2021 | digital transformation; green revolution; fourth industrial revolution | private 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) |
13 | 18 | 0.950 | 2020 | consensus mechanism; process models; smart communities | blockchain (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) |
14 | 17 | 1.000 | 2021 | smart cities; real-time systems; intelligent sensors | data 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) |
15 | 17 | 0.897 | 2021 | reinforcement learning; recommender systems; data management | distributed 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) |
16 | 16 | 1.000 | 2020 | federated learning; machine learning; network architectures | nonorthogonal 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) |
17 | 15 | 0.996 | 2020 | optimization approach; energy negotiation; reinforcement learning | blockchain (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) |
18 | 15 | 0.973 | 2020 | deep learning; edge devices; occupancy detection | robotics (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) |
19 | 12 | 0.931 | 2020 | 5g mobile communication; artificial intelligence; 5g networks | queueing 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) |
20 | 11 | 0.964 | 2021 | intrusion detection system; deep learning approaches; smart agriculture | agriculture 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) |
Cluster ID | Size | Silhouette | Mean (year) | LSI | MI | LLR |
---|---|---|---|---|---|---|
0 | 62 | 0.847 | 2017 | cloud computing; edge computing; smart agriculture | fourth 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) |
1 | 41 | 0.925 | 2015 | smart cities; data privacy; data models | encrypted 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) |
2 | 38 | 0.967 | 2019 | federated learning; intelligent transportation systems; local differential privacy | intelligent 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) |
3 | 38 | 0.902 | 2015 | smart grids; artificial intelligence; telecommunication networks | urban 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) |
4 | 27 | 0.972 | 2019 | data privacy; 6g mobile communication; long term evolution | beyond 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) |
5 | 25 | 0.897 | 2017 | edge computing; cloud computing; industrial internet | distributed 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) |
6 | 21 | 0.939 | 2019 | deep learning; iot-oriented infrastructure; vehicular ad | Multi-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) |
7 | 21 | 0.946 | 2013 | blockchain technology; smart agriculture; bibliometric analysis | wireless 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) |
9 | 17 | 1 | 2018 | smart cities; smart services; smart mobility | distributed 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) |
14 | 7 | 0.96 | 2011 | artificial intelligence; cloud computing; edge computing | convolutional 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) |
15 | 5 | 0.979 | 2019 | smart meters; smart grids; energy management | blockchain (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) |
Appendix B
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Variable | Results |
---|---|
Timespan | 2017:2023 |
Sources (journals, books, etc.) | 251 |
Documents (articles, proceeding papers, etc.) | 505 |
Annual growth rate % | 12.25 |
Document average age | 1.03 |
Average citations per documents 1 | 15.14 |
References | 25,963 |
Average references per documents 2 | 51.41 |
Authors | 1636 |
Authors of single-authored documents | 26 |
Single-authored documents | 29 |
Co-authors per documents 3 | 4.26 |
International co-authorships % 4 | 52.67 |
Source | Number of Publications | Total Citations | h-Index (Local) | Impact Factor (JCR’21) |
---|---|---|---|---|
IEEE Access | 34 | 1305 | 18 | 3.476 |
IEEE Transactions on Intelligent Transportation Systems | 20 | 178 | 9 | 9.551 |
Sensors | 18 | 87 | 6 | 3.847 |
IEEE Internet of Things Journal | 17 | 436 | 9 | 10.238 |
Sustainability | 16 | 97 | 4 | 3.251 |
Electronics | 10 | 94 | 5 | 2.690 |
Sustainable Cities and Society | 10 | 353 | 6 | 10.696 |
Applied Sciences-Basel | 9 | 32 | 3 | 2.838 |
Energies | 8 | 65 | 4 | 3.252 |
CMC-Computers Materials and Continua | 7 | 5 | 1 | 3.860 |
IEEE Transactions on Industrial Informatics | 7 | 309 | 4 | 11.648 |
Wireless Communications and Mobile Computing | 6 | 23 | 3 | 2.146 |
Computational Intelligence and Neuroscience | 5 | 7 | 2 | 3.120 |
No. | Publication | Year | Citations |
---|---|---|---|
1 | Klerkx et al. [29] | 2019 | 269 |
2 | Gai et al. [30] | 2019 | 259 |
3 | Fuller et al. [31] | 2020 | 258 |
4 | Allam and Dhunny [27] | 2019 | 241 |
5 | Shen et al. [32] | 2019 | 161 |
6 | Aggarwal et al. [26] | 2019 | 144 |
7 | Dorri et al. [33] | 2019 | 143 |
8 | Singh et al. [34] | 2020 | 138 |
9 | Singh et al. [8] | 2020 | 124 |
10 | Maddikunta et al. [35] | 2022 | 121 |
No. | Keyword | Frequency | Degree | Centrality | Year | Cluster |
---|---|---|---|---|---|---|
1 | smart grid | 65 | 27 | 0.63 | 2018 | 1 |
2 | artificial intelligence | 77 | 20 | 0.57 | 2018 | 1 |
3 | differential privacy | 8 | 10 | 0.41 | 2019 | 3 |
4 | smart city | 88 | 19 | 0.35 | 2018 | 8 |
5 | cybersecurity | 20 | 10 | 0.29 | 2020 | 5 |
6 | blockchain | 283 | 11 | 0.28 | 2018 | 6 |
7 | distributed computing | 3 | 13 | 0.24 | 2018 | 8 |
8 | digital twin | 7 | 10 | 0.24 | 2019 | 3 |
9 | real-time system | 6 | 9 | 0.24 | 2020 | 10 |
10 | consortium blockchain | 4 | 13 | 0.22 | 2019 | 4 |
No. | Keyword | Year | Strength | Begin | End | Sigma | 2017–2023 |
---|---|---|---|---|---|---|---|
1 | consortium blockchain | 2019 | 1.86 | 2019 | 2019 | 1.44 | |
2 | big data | 2019 | 1.63 | 2019 | 2019 | 1.28 | |
3 | security and privacy | 2020 | 3.52 | 2020 | 2020 | 1.34 | |
4 | energy internet | 2020 | 1.57 | 2020 | 2020 | 1.00 | |
5 | peer-to-peer network | 2020 | 1.57 | 2020 | 2020 | 1.00 | |
6 | federated learning | 2020 | 2.29 | 2022 | 2023 | 1.27 | |
7 | collaborative work | 2022 | 1.80 | 2022 | 2023 | 1.00 |
No. | Source | Frequency | Degree | Centrality | Year | Cluster |
---|---|---|---|---|---|---|
1 | Communications of the ACM | 33 | 20 | 0.33 | 2017 | 4 |
2 | IEEE Transactions on Knowledge and Data Engineering | 21 | 18 | 0.31 | 2019 | 0 |
3 | Applied Energy | 68 | 20 | 0.29 | 2017 | 4 |
4 | 2017 IEEE 24th International Conference on Web Services (ICWS 2017) | 3 | 14 | 0.25 | 2020 | 1 |
5 | IEEE Access | 330 | 14 | 0.22 | 2017 | 4 |
6 | IEEE Transactions on Smart Grid | 78 | 13 | 0.21 | 2018 | 3 |
7 | ACM Transactions on Intelligent Systems and Technology | 33 | 13 | 0.21 | 2019 | 9 |
8 | 2017 IEEE International Conference on Pervasive Computing and Communications Workshops (PerCom Workshops) | 14 | 10 | 0.21 | 2019 | 0 |
9 | IEEE International Conference on Systems, Man, and Cybernetics (SMC) | 13 | 9 | 0.19 | 2019 | 0 |
10 | 2016 IEEE 19th International Conference on Intelligent Transportation Systems (ITSC) | 16 | 18 | 0.18 | 2017 | 13 |
No. | Publication | Year | Frequency | Degree | Centrality | Cluster |
---|---|---|---|---|---|---|
1 | Li et al. [50] | 2018 | 9 | 13 | 0.23 | 2 |
2 | Novo [51] | 2018 | 11 | 9 | 0.18 | 0 |
3 | Christidis and Devetsikiotis [52] | 2016 | 31 | 14 | 0.16 | 1 |
4 | Oezyilmaz and Yurdakul [53] | 2017 | 2 | 21 | 0.14 | 1 |
5 | Ackermann et al. [54] | 2001 | 2 | 6 | 0.14 | 3 |
6 | Gai et al. [30] | 2019 | 12 | 4 | 0.13 | 9 |
7 | Yin et al. [55] | 2017 | 5 | 10 | 0.13 | 0 |
8 | Rathore et al. [28] | 2019 | 5 | 13 | 0.12 | 0 |
9 | Wood [56] | 2014 | 11 | 2 | 0.11 | 9 |
10 | Al-Jaroodi and Mohamed [57] | 2019 | 5 | 15 | 0.11 | 1 |
No. | Publication | Year | Strength | Begin | End | Sigma | 2017–2023 |
---|---|---|---|---|---|---|---|
1 | Li et al. [58] | 2017 | 3.1 | 2018 | 2020 | 1.06 | |
2 | Swan [59] | 2015 | 2.71 | 2018 | 2020 | 1.02 | |
3 | Yli-Huumo et al. [60] | 2016 | 2.71 | 2018 | 2020 | 1.01 | |
4 | Aitzhan and Svetinovic [61] | 2016 | 2.37 | 2018 | 2019 | 1.05 | |
5 | Sharma et al. [62] | 2017 | 4.37 | 2019 | 2020 | 1.1 | |
6 | Tschorsch and Scheuermann [63] | 2016 | 3.05 | 2019 | 2020 | 1.1 | |
7 | Sharma et al. [64] | 2017 | 2.61 | 2019 | 2020 | 1.1 | |
8 | Dorri et al. [65] | 2017 | 2.61 | 2019 | 2020 | 1.02 | |
9 | Dorri et al. [66] | 2017 | 2.61 | 2019 | 2020 | 1.03 | |
10 | Li et al. [67] | 2020 | 2.18 | 2019 | 2020 | 1.21 | |
11 | Gai et al. [30] | 2019 | 2.44 | 2020 | 2021 | 1.34 | |
12 | Wood [56] | 2014 | 2.24 | 2020 | 2021 | 1.27 |
Component | Sub-Component | Area 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 topics | Computing/technology policy | privacy preservation; optimization; IoT security; sustainability |
Professional topics | natural 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 systems | Information systems applications | cyber physical system; intelligent transportation system; intrusion detection system; malicious application; servers |
Software and its engineering | Software organization and properties | authentication; key agreement; quality of service; task analysis |
Contextual software domains | smart cities; smart factory; smart grids; smart buildings; smart healthcare system |
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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
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 StyleAlaeddini, 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 StyleAlaeddini, 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