Smart City Gnosys

Smart city article details

Title Utilizing Deep Learning In Smart Cities For Environmental Monitoring
ID_Doc 60730
Authors Hoang D.C.; Devi S.; Koner J.; Dhandayuthapani B.; Choudhury S.K.; Sahoo D.R.
Year 2024
Published Proceedings of the 2024 International Conference on Innovative Computing, Intelligent Communication and Smart Electrical Systems, ICSES 2024
DOI http://dx.doi.org/10.1109/ICSES63760.2024.10910824
Abstract The effectiveness and dependability of services provided by smart cities are significantly impacted by the significant and difficult issue of intrusion detection. Replay attacks, which weaken security via improper authentication in a smart city network, are among the most common threats to this infrastructure. For example, replay attacks have the potential to severely damage the smart city structure, leading to the loss of crucial data and substantial monetary losses. As a result, we have developed a model based on deep learning to predict where attacks in smart cities would be replayed. The proposed approach is intriguing since it uses deep learning-based models as an application to differentiate replay assaults and increase recognition accuracy. Replay attacks are simulated on a real-world smart city dataset, and the model's performance is assessed by using this dataset. Our findings demonstrate that the suggested model may reasonably accurately discriminate between normal and assault actions. Furthermore, our suggested model performs better than both deep learning and conventional classification models, per the findings. © 2024 IEEE.
Author Keywords Deep Learning; Environmental Monitoring; IoT (Internet of Things); Smart Cities; Sustainable Urban Development


Similar Articles


Id Similarity Authors Title Published
45084 View0.969Elsaeidy, AA; Jagannath, N; Sanchis, AG; Jamalipour, A; Munasinghe, KSReplay Attack Detection In Smart Cities Using Deep LearningIEEE ACCESS, 8 (2020)
19242 View0.923Iqbal M.W.; Issa G.F.; Yousif M.; Atif M.Detection And Replay Of Distributed Denial Of Service Attacks In Smart Cities Using A Hybrid Deep Learning Approach2nd International Conference on Business Analytics for Technology and Security, ICBATS 2023 (2023)
16941 View0.889Chen, DL; Wawrzynski, P; Lv, ZHCyber Security In Smart Cities: A Review Of Deep Learning-Based Applications And Case StudiesSUSTAINABLE CITIES AND SOCIETY, 66 (2021)
3350 View0.888Sharma V.; Seetharaman T.; Mohammed Essam K.; Alkhayyat A.A Novel Explainable Artificial Intelligence-Based Deep Reinforcement Learning For Secured Smart City ApplicationsLecture Notes in Networks and Systems, 787 LNNS (2023)
6741 View0.885Rashid M.M.; Kamruzzaman J.; Mehedi Hassan M.; Imam T.; Wibowo S.; Gordon S.; Fortino G.Adversarial Training For Deep Learning-Based Cyberattack Detection In Iot-Based Smart City ApplicationsComputers and Security, 120 (2022)
33336 View0.885Alduraibi A.M.A.; Kachout M.Intrusion Detection In Smart Cities: Leveraging Long Short-Term Memory Networks For Enhanced CybersecurityProceedings of 2025 4th International Conference on Computing and Information Technology, ICCIT 2025 (2025)
17907 View0.884Liloja; Ranjana P.Deep Learning Methodology For Detecting Breaches To Improve Security In Smart Cities2023 IEEE International Conference on Research Methodologies in Knowledge Management, Artificial Intelligence and Telecommunication Engineering, RMKMATE 2023 (2023)
1446 View0.881Rakha 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)
17979 View0.876Chinnasamy R.; Malliga S.; Sengupta N.Deep Learning-Driven Intrusion Detection Systems For Smart Cities-A Systematic StudyIET Conference Proceedings, 2022, 26 (2022)
8629 View0.875Liloja; 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)