Smart City Gnosys

Smart city article details

Title Federated Learning With Differential Privacy For Resilient Vehicular Cyber Physical Systems
ID_Doc 26368
Authors Olowononi F.O.; Rawat D.B.; Liu C.
Year 2021
Published 2021 IEEE 18th Annual Consumer Communications and Networking Conference, CCNC 2021
DOI http://dx.doi.org/10.1109/CCNC49032.2021.9369480
Abstract Vehicular cyber physical systems (VCPS) will play a vital role in the quest to develop intelligent transportation systems (ITS) and smart cities around the world. Consequently, researchers in academia, industry and government continue to leverage on emerging technologies like software defined networking (SDN), blockchain, cloud computing and machine learning (ML) to improve the overall efficiency of these intelligent systems. Recently, mobile edge computing (MEC) has been used to enhance content caching and efficient resource allocation and therefore advance the development of data-intensive and delay-constrained applications that improve the driving experience in VCPS. Security and privacy concerns that endanger the safety of lives and infrastructure necessitate the need to use federated learning (FL), a distributed ML algorithm that employs learning at the edge to ensure that data remains at the different vehicles and thus enhance greater efficiency. In this paper therefore, we propose the use of FL, together with differential privacy to improve the resiliency of VCPS to adversarial attacks in connected vehicles. © 2021 IEEE.
Author Keywords Differential privacy; Federated learning; Resiliency in vehicular CPS


Similar Articles


Id Similarity Authors Title Published
22682 View0.873Valente R.; Senna C.; Rito P.; Sargento S.Embedded Federated Learning For Vanet EnvironmentsApplied Sciences (Switzerland), 13, 4 (2023)
47747 View0.871Shivaanivarsha N.; Swetha J.; Lashmi V.L.R.; Yaswanth Rao G.S.Securing Intelligent Vehicular Networks Using Ai-Driven Federated Learning2025 International Conference on Computing and Communication Technologies, ICCCT 2025 (2025)
42595 View0.865Soares K.; Shinde A.A.; Patil M.Ppfedsl: Privacy Preserving Split And Federated Learning Enabled Secure Data Sharing Model For Internet Of Vehicles In Smart CityInternational Journal of Computer Networks and Applications, 12, 2 (2025)
26364 View0.863Liu D.; Cui E.; Shen Y.; Ding P.; Zhang Z.Federated Learning Model Training Mechanism With Edge Cloud Collaboration For Services In Smart CitiesIEEE International Symposium on Broadband Multimedia Systems and Broadcasting, BMSB, 2023-June (2023)
32142 View0.862Gupta D.; Moni S.S.; Tosun A.S.Integration Of Digital Twin And Federated Learning For Securing Vehicular Internet Of Things2023 Research in Adaptive and Convergent Systems RACS 2023 (2023)
26356 View0.86Valente R.; Senna C.; Rito P.; Sargento S.Federated Learning Framework To Decentralize Mobility Forecasting In Smart CitiesProceedings of IEEE/IFIP Network Operations and Management Symposium 2023, NOMS 2023 (2023)
21171 View0.856Wang X.; Hu A.; Jia J.; Du J.; Ning Y.; Zhu Y.Dual-Layer Fl And Blockchain Empowered High Accurate Edge Training FrameworkSmart Innovation, Systems and Technologies, 350 SIST (2024)
46998 View0.855Mishra S.K.; Kumar N.S.; Rao B.; Brahmendra; Teja L.Role Of Federated Learning In Edge Computing: A SurveyJournal of Autonomous Intelligence, 7, 1 (2024)
12606 View0.854Singh S.K.; Park L.; Park J.H.Blockchain-Based Federated Approach For Privacy-Preserved Iot-Enabled Smart Vehicular NetworksInternational Conference on ICT Convergence, 2022-October (2022)
26330 View0.853Janaki G.; Umanandhini D.Federated Learning Approaches For Decentralized Data Processing In Edge ComputingProceedings of the 5th International Conference on Smart Electronics and Communication, ICOSEC 2024 (2024)