Smart City Gnosys

Smart city article details

Title A Survey On Intrusion Detection System In Smart City: Security Concerns
ID_Doc 5274
Authors Nandhini N.; Manikandan V.; Manavaalan G.; Elango S.; Jeevakarunya C.; Kumar P.V.
Year 2023
Published 2023 7th International Conference on Computer Applications in Electrical Engineering-Recent Advances: Sustainable Transportation Systems, CERA 2023
DOI http://dx.doi.org/10.1109/CERA59325.2023.10455491
Abstract Emergence of Internet of Things (IoT) -driven smart cities has brought both security and privacy challenges that demand effective countermeasures. Traditional cyber-security strategies are insufficient for the heterogeneity and dynamic nature of smart cities, necessitating a proactive approach to address security and privacy threats during system design and implementation. This article provides an analysis of the security threats and vulnerabilities, a complete review of security challenges, available Intrusion Detection Systems (IDS), and exemplary approaches for smart cities, categorized based on governance, socioeconomic factors, and technology. The survey examines the use of deep learning techniques for anomaly detection and intrusion detection in IoT networks. Furthermore, the integration of blockchain technology with IoT, and deep learning models towards the development of robust security measures are discussed. Developers working on creating and safeguarding smart cities can benefit significantly from the conclusions and suggestions for future studies offered in this paper. © 2023 IEEE.
Author Keywords Blockchain; IDS; Internet of Things; Intrusion Detection; Privacy; Security; Smart city


Similar Articles


Id Similarity Authors Title Published
9785 View0.945Anand R.; Jain M.; Jain L.; Narwal B.; Jaiswal A.Application Of An Intrusion Detection System In Smart Cities: A ReviewAIST 2022 - 4th International Conference on Artificial Intelligence and Speech Technology (2022)
1446 View0.933Rakha M.A.; Akbar A.; Chhabra G.; Kaushik K.; Arshi O.; Khan I.U.A Detailed Comparative Study Of Ai-Based Intrusion Detection System For Smart CitiesProceedings of International Conference on Communication, Computer Sciences and Engineering, IC3SE 2024 (2024)
17981 View0.931Himdi T.; Ishaque M.Deep Learning-Enhanced Anomaly Detection For Iot Security In Smart CitiesARPN Journal of Engineering and Applied Sciences, 19, 6 (2024)
8629 View0.926Liloja; Ranjana P.An Intrusion Detection System Using A Machine Learning Approach In Iot-Based Smart CitiesJournal of Internet Services and Information Security, 13, 1 (2023)
4773 View0.925Hazman C.; Guezzaz A.; Benkirane S.; Azrour M.A Smart Model Integrating Lstm And Xgboost For Improving Iot-Enabled Smart Cities SecurityCluster Computing, 28, 1 (2025)
17979 View0.925Chinnasamy R.; Malliga S.; Sengupta N.Deep Learning-Driven Intrusion Detection Systems For Smart Cities-A Systematic StudyIET Conference Proceedings, 2022, 26 (2022)
6993 View0.921Alhamdi M.J.M.; Lopez-Guede J.M.; AlQaryouti J.; Rahebi J.; Zulueta E.; Fernandez-Gamiz U.Ai-Based Malware Detection In Iot Networks Within Smart Cities: A SurveyComputer Communications, 233 (2025)
957 View0.921Houichi M.; Jaidi F.; Bouhoula A.A Comprehensive Study Of Intrusion Detection Within Internet Of Things-Based Smart Cities: Synthesis, Analysis And A Novel Approach2023 International Wireless Communications and Mobile Computing, IWCMC 2023 (2023)
5144 View0.919Liao H.; Murah M.Z.; Hasan M.K.; Aman A.H.M.; Fang J.; Hu X.; Khan A.U.R.A Survey Of Deep Learning Technologies For Intrusion Detection In Internet Of ThingsIEEE Access, 12 (2024)
16948 View0.919Houichi M.; Jaidi F.; Bouhoula A.Cyber Security Within Smart Cities: A Comprehensive Study And A Novel Intrusion Detection-Based ApproachComputers, Materials and Continua, 81, 1 (2024)