Smart City Gnosys

Smart city article details

Title Securing Intelligent Vehicular Networks Using Ai-Driven Federated Learning
ID_Doc 47747
Authors Shivaanivarsha N.; Swetha J.; Lashmi V.L.R.; Yaswanth Rao G.S.
Year 2025
Published 2025 International Conference on Computing and Communication Technologies, ICCCT 2025
DOI http://dx.doi.org/10.1109/ICCCT63501.2025.11019374
Abstract Analysis of Detour Index in Graph Joins and Special Graph Structures Vehicular networks are crucial for modern transportation safety and efficiency. However, in adverse weather conditions such as fog, reduced visibility severely disrupts vehicle-to-vehicle (V2V) communication, increasing the risk of chain accidents. Traditional centralized approaches for managing vehicular communication suffer from high latency, limited scalability, and data privacy concerns, making them unsuitable for real-time decision-making in dynamic environments. To address these challenges, this project proposes a Federated Learning Framework for Securing Vehicular Networks Using AI, enabling decentralized, privacy-preserving, and real-time threat detection in vehicular networks. The proposed system leverages Artificial Intelligence (AI) and Federated Learning (FL) to enhance situational awareness and predict collision risks. A deep learning-based object detection model, utilizing the YOLO algorithm, identifies obstacles, vehicles, and hazardous conditions in low-visibility environments. Edge detection techniques further improve visual clarity and detection accuracy. Federated Learning enables vehicles to collaboratively train AI models on local data without sharing raw information, ensuring data privacy and adaptability to real-world scenarios. Secure vehicle-to-vehicle (V2V) communication enhances decision-making speed, reducing latency in critical situations. By integrating AI-driven predictive analysis, federated learning, and decentralized data processing, this system significantly improves vehicular safety in challenging weather conditions. It ensures real-time hazard detection, reduces the likelihood of chain accidents, enhances data privacy, and scales effectively for large vehicular networks. This innovation marks a critical step toward intelligent, autonomous, and resilient transportation systems in smart cities. © 2025 IEEE.
Author Keywords Edge Detection; Federated Learning; V2V Communication; Vehicular Networks; YOLO Algorithm


Similar Articles


Id Similarity Authors Title Published
33323 View0.904Arya M.; Sastry H.; Dewangan B.K.; Rahmani M.K.I.; Bhatia S.; Muzaffar A.W.; Bivi M.A.Intruder Detection In Vanet Data Streams Using Federated Learning For Smart City EnvironmentsElectronics (Switzerland), 12, 4 (2023)
26308 View0.89Sepasgozar S.S.; Pierre S.Fed-Ntp: A Federated Learning Algorithm For Network Traffic Prediction In VanetIEEE Access, 10 (2022)
62097 View0.877Lin G.; Qian S.; Khattak Z.H.Xfedcav: Cyberattacks On Leader And Followers In Automated Vehicles With Cooperative Platoons Using Federated AgentsIEEE Open Journal of Intelligent Transportation Systems (2025)
44548 View0.877Bangui H.; Buhnova B.Recent Advances In Machine-Learning Driven Intrusion Detection In Transportation: SurveyProcedia Computer Science, 184 (2021)
8470 View0.875Devarajan 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)
12606 View0.875Singh 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)
7023 View0.875El-Shafai W.; Azar A.T.; Ahmed S.Ai-Driven Ensemble Classifier For Jamming Attack Detection In Vanets To Enhance Security In Smart CitiesIEEE Access, 13 (2025)
18978 View0.873Biswas M.; Banerjee S.; Das D.; Das S.; Dhibar S.; Kisku D.; Das P.; Biswas U.Design Of A Smart Road Accident Management Framework Using Federated LearningSmart Innovation, Systems and Technologies, 433 (2025)
7053 View0.873Singh R.; Kumar R.; Singh A.; Vijay R.; Khan R.L.; Ather D.Ai-Driven Vanets For Iot-Enabled Transportation SystemsCommunications in Computer and Information Science, 2308 CCIS (2025)
26368 View0.871Olowononi F.O.; Rawat D.B.; Liu C.Federated Learning With Differential Privacy For Resilient Vehicular Cyber Physical Systems2021 IEEE 18th Annual Consumer Communications and Networking Conference, CCNC 2021 (2021)