Smart City Gnosys

Smart city article details

Title Machine Learning-Inspired Intrusion Detection On Vehicular Communication For Route Planning
ID_Doc 36079
Authors Khatua S.; Das S.; Nandi A.; Kumar A.; De D.; Roy S.
Year 2025
Published Lecture Notes in Networks and Systems, 1158 LNNS
DOI http://dx.doi.org/10.1007/978-981-97-8051-8_30
Abstract The advancement of technology in the automotive industry has led to the emergence of smart cities where vehicles are interconnected through communication networks. This inter-vehicle communication (IVC) is crucial for enabling various intelligent transportation system (ITS) applications, such as traffic management, collision avoidance, and autonomous driving. The wireless communication for IVC exposes the system to security threats, including intrusion attacks. This paper presents intrusion detection techniques for IVC in smart cities, where KNN provides a more significant outcome than linear regression, logistic regression, and linear support vector machine classifiers. It finds the securing IVC and the different types of intrusion attacks. This approach additionally provides an overview of the existing intrusion detection systems (IDS) and their mechanisms for detecting and mitigating attacks in inter-vehicular communication. The paper illustrates an intrusion detection approach that leverages machine learning algorithms to analyze the network traffic and detect anomalies indicative of intrusion attempts. The proposed approach outperforms intrusion detection, where the achieved accuracy is  98.3%. © The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd. 2025.
Author Keywords Intelligent routing; Intrusion detection; IoVT; IVC; ML


Similar Articles


Id Similarity Authors Title Published
2469 View0.911Rabah N.B.; Idoudi H.A Machine Learning Framework For Intrusion Detection In Vanet CommunicationsEmerging Trends in Cybersecurity Applications (2022)
4466 View0.901Tiwari P.K.; Prakash S.; Tripathi A.; Yang T.; Rathore R.S.; Aggarwal M.; Shukla N.K.A Secure And Robust Machine Learning Model For Intrusion Detection In Internet Of VehiclesIEEE Access, 13 (2025)
33338 View0.899Ventura H.T.; Moretti R.A.; Vendramin A.C.B.K.; Pigatto D.F.Intrusion Detection In Vehicular Networks Using Machine LearningJournal of Internet Services and Applications, 16, 1 (2025)
2508 View0.899Mishra D.; Moudgi S.; Virmani D.; Faniband Y.P.; Nandyal A.B.; Sahu P.K.; Singh G.A Mathematical Framework For Enhancing Iot Security In Vanets: Optimizing Intrusion Detection Systems Through Machine Learning AlgorithmsCommunications on Applied Nonlinear Analysis, 31, 8s (2024)
8516 View0.897Sousa B.; Magaia N.; Silva S.An Intelligent Intrusion Detection System For 5G-Enabled Internet Of VehiclesElectronics (Switzerland), 12, 8 (2023)
58842 View0.895Aleisa H.N.; Alrowais F.; Allafi R.; Almalki N.S.; Faqih R.; Marzouk R.; Alnfiai M.M.; Motwakel A.; Ibrahim S.S.Transforming Transportation: Safe And Secure Vehicular Communication And Anomaly Detection With Intelligent Cyber-Physical System And Deep LearningIEEE Transactions on Consumer Electronics, 70, 1 (2024)
33323 View0.891Arya 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)
44548 View0.89Bangui H.; Buhnova B.Recent Advances In Machine-Learning Driven Intrusion Detection In Transportation: SurveyProcedia Computer Science, 184 (2021)
36054 View0.89Masmoudi O.; Idoudi H.; Mosbah M.Machine Learning-Based Intrusion Detection For Position Falsification Attack In The Internet Of VehiclesIntelligent Systems for IoE Based Smart Cities (2023)
30072 View0.889Abdallah E.E.; Aloqaily A.; Fayez H.Identifying Intrusion Attempts On Connected And Autonomous Vehicles: A SurveyProcedia Computer Science, 220 (2023)