Smart City Gnosys

Smart city article details

Title Secure And Transparent Traffic Congestion Control System For Smart City Using A Federated Learning Approach
ID_Doc 47595
Authors Muhammad M.H.G.; Ahmad R.; Fatima A.; Mohammed A.S.; Raza M.A.; Khan M.A.
Year 2024
Published International Journal of Advanced and Applied Sciences, 11, 7
DOI http://dx.doi.org/10.21833/ijaas.2024.07.001
Abstract This study addresses the increasing problems of traffic congestion in smart cities by introducing a Secure and Transparent Traffic Congestion Control System using federated learning. Traffic congestion control systems face key issues such as data privacy, security vulnerabilities, and the necessity for joint decision-making. Federated learning, a type of distributed machine learning, is effective because it allows for training models on decentralized data while maintaining data privacy. Furthermore, incorporating blockchain technology improves the system’s security, integrity, and transparency. The proposed system uses federated learning to securely gather and analyze local traffic data from different sources within a smart city without moving sensitive data away from its original location. This method minimizes the risk of data breaches and privacy issues. Blockchain technology creates a permanent, transparent record for monitoring and confirming decisions related to traffic congestion control, thereby promoting trust and accountability. The combination of federated learning's decentralized nature and blockchain's secure, transparent features aids in building a strong traffic management system for smart cities. This research contributes to advancements in smart city technology, potentially improving traffic management and urban living standards. Moreover, tests of the new combined model show a high accuracy rate of 97.78% and a low miss rate of 2.22%, surpassing previous methods. The demonstrated efficiency and adaptability of the model to various smart city environments and its scalability in expanding urban areas are crucial for validating its practical use in real-world settings. © 2024 The Authors. Published by IASE.
Author Keywords Blockchain technology; Data privacy; Federated learning; Smart cities; Traffic congestion control


Similar Articles


Id Similarity Authors Title Published
12359 View0.952Sharma V.; Seetharaman T.; Bd V.; Khangaonkar A.M.Blockchain And Federated Learning Enabled Smart Traffic Management System For Smart Cities4th International Conference on Intelligent Engineering and Management, ICIEM 2023 (2023)
12378 View0.915Raj V.H.; Reddy Y.M.; Danghi P.S.; Thethi H.P.; Muhsen M.; PraveenBlockchain And Machine Learning For Intelligent Traffic Management Systems In Urban PlanningProceedings - 2024 13th IEEE International Conference on Communication Systems and Network Technologies, CSNT 2024 (2024)
24076 View0.904Jiang Z.Enhancing Urban Traffic Forecasting With Scalable, Privacy-Preserving Federated Learning Approach2024 4th International Conference on Electronic Information Engineering and Computer Technology, EIECT 2024 (2024)
17023 View0.9Sefati S.S.; Craciunescu R.; Arasteh B.; Halunga S.; Fratu O.; Tal I.Cybersecurity In A Scalable Smart City Framework Using Blockchain And Federated Learning For Internet Of Things (Iot)Smart Cities, 7, 5 (2024)
3195 View0.896Hai T.; Wang D.; Seetharaman T.; Amelesh M.; Sreejith P.M.; Sharma V.; Ibeke E.; Liu H.A Novel & Innovative Blockchain-Empowered Federated Learning Approach For Secure Data Sharing In Smart City ApplicationsLecture Notes in Networks and Systems, 735 LNNS (2023)
44733 View0.895Karthick Raghunath K.M.; Rohith Bhat C.; Vinoth Kumar V.; Athiyoor Kannan V.; Mahesh T.R.; Manikandan K.; Krishnamoorthy N.Redefining Urban Traffic Dynamics With Tcn-Fl Driven Traffic Prediction And Control StrategiesIEEE Access, 12 (2024)
5652 View0.894Wang S.; Chen C.; Han B.; Zhu J.A Trusted And Decentralized Federated Learning Framework For Iot Devices In Smart CityProceedings - IEEE Congress on Cybermatics: 2024 IEEE International Conferences on Internet of Things, iThings 2024, IEEE Green Computing and Communications, GreenCom 2024, IEEE Cyber, Physical and Social Computing, CPSCom 2024, IEEE Smart Data, SmartData 2024 (2024)
8470 View0.893Devarajan G.G.; Thirunnavukkarasan M.; Amanullah S.I.; Vignesh T.; Sivaraman A.An Integrated Security Approach For Vehicular Networks In Smart CitiesTransactions on Emerging Telecommunications Technologies, 34, 11 (2023)
26321 View0.892Djenouri Y.; Michalak T.P.; Lin J.C.-W.Federated Deep Learning For Smart City Edge-Based ApplicationsFuture Generation Computer Systems, 147 (2023)
26367 View0.892Verma R.K.; Kishor K.; Galletta A.Federated Learning Shaping The Future Of Smart City InfrastructureFederated Learning for Smart Communication using IoT Application (2024)