Interoperability Benefits and Challenges in Smart City Services: Blockchain as a Solution

Article


Biswas, S., Yao, Z., Yan, L., Alqhatani, A., Bairagi, A. K., Asiri, F. and Masud, M. 2023. Interoperability Benefits and Challenges in Smart City Services: Blockchain as a Solution. Electronics. 12 (4), p. Art. 1036. https://doi.org/https://doi.org/10.3390/electronics12041036
AuthorsBiswas, S., Yao, Z., Yan, L., Alqhatani, A., Bairagi, A. K., Asiri, F. and Masud, M.
Abstract

The widespread usage of smart devices with various city-centric services speeds up and improves civic life, in contrast to growing privacy and security concerns. Security issues are exacerbated when e-government service providers trade their services within a centralised framework. Due to security concerns, city-centric centralised services are being converted to blockchain-based systems, which is a very time-consuming and challenging process. The interoperability of these blockchain-based systems is also more challenging due to protocol variances, an excessive amount of local transactions that raise scalability and rapidly occupy memory. In this paper, we have proposed a framework for interoperability across various blockchain-based smart city services. It also summarises how independent service providers might continue self-service choices (i.e., local transactions) without overloading the blockchain network and other organisations. A simulated interoperability network is used to show the network’s effectiveness. The experimental outcomes show the scalability and memory optimization of the blockchain network.

KeywordsBlockchain; Security and Privacy; Distributed Ledger Technology; IoT
JournalElectronics
Journal citation12 (4), p. Art. 1036
ISSN2079-9292
Year2023
PublisherMDPI
Publisher's version
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File Access Level
Anyone
Digital Object Identifier (DOI)https://doi.org/https://doi.org/10.3390/electronics12041036
Publication dates
Online19 Feb 2023
Publication process dates
Accepted13 Feb 2023
Deposited22 Jun 2023
FunderDeanship of Scientific Research, Najran University
Copyright information© 2023, The Author(s)
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