Smart City Gnosys

Smart city article details

Title Deep Learning-Based Intrusion Detection System For Internet Of Vehicles
ID_Doc 17956
Authors Ahmed I.; Jeon G.; Ahmad A.
Year 2023
Published IEEE Consumer Electronics Magazine, 12, 1
DOI http://dx.doi.org/10.1109/MCE.2021.3139170
Abstract The growth of the Internet of Things (IoT) has resulted in several revolutionary applications, such as smart cities, cyber-physical systems, and the Internet of vehicles (IoV). Within the IoV infrastructure, vehicles are comprised of various electronic intelligent sensors or devices used to obtain data and communicate the necessary information with their surroundings. One of the major concerns about the implementation of these sensors or devices is data vulnerability; thus, it is necessary to present a solution that provides security, trust, and privacy to communicating entities and to secure vehicle data from malicious entities. In modern vehicles, the controller area network (CAN) is a fundamental scheme for controlling the interaction among different in-vehicle network sensors. However, not enough security features are present that support data encryption, authorization, and authentication mechanisms to secure the network from cyber or malicious intrusions such as denial of service and fuzzy attacks. An intrusion detection system is presented in this work based on the deep learning architecture to protect the CAN bus in vehicles. The VGG architecture is used and trained for different network intrusion patterns in order to detect malicious attacks. The experiments are performed using the CAN-intrusion-dataset. The experimental findings demonstrate that the presented deep learning system significantly reduces the false positive rate (FPR) compared to the conventional machine learning techniques. The overall accuracy of the system is 96% with FPR of 0.6%. © 2012 IEEE.
Author Keywords


Similar Articles


Id Similarity Authors Title Published
17821 View0.894Choudhary D.; Pahuja R.Deep Learning Approach For Encryption Techniques In Vehicular NetworksWireless Personal Communications, 125, 1 (2022)
47813 View0.886Jain R.; Tihanyi N.; Ferrag M.A.Securing Tomorrow’S Smart Cities: Investigating Software Security In Internet Of Vehicles And Deep Learning TechnologiesLecture Notes in Intelligent Transportation and Infrastructure, Part F99 (2025)
58842 View0.882Aleisa 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)
46820 View0.88Xiao J.; Wu H.; Li X.Robust And Self-Evolving Ids For In-Vehicle Network By Enabling Spatiotemporal InformationProceedings - 21st IEEE International Conference on High Performance Computing and Communications, 17th IEEE International Conference on Smart City and 5th IEEE International Conference on Data Science and Systems, HPCC/SmartCity/DSS 2019 (2019)
17825 View0.867Kadheem Hammood B.A.; Sadiq A.T.Deep Learning Approaches For Iot Intrusion Detection SystemsIraqi Journal of Science, 65, 11 (2024)
44548 View0.863Bangui H.; Buhnova B.Recent Advances In Machine-Learning Driven Intrusion Detection In Transportation: SurveyProcedia Computer Science, 184 (2021)
33032 View0.863Dawoud A.; Sianaki O.A.; Shahristani S.; Raun C.Internet Of Things Intrusion Detection: A Deep Learning Approach2020 IEEE Symposium Series on Computational Intelligence, SSCI 2020 (2020)
8516 View0.862Sousa B.; Magaia N.; Silva S.An Intelligent Intrusion Detection System For 5G-Enabled Internet Of VehiclesElectronics (Switzerland), 12, 8 (2023)
9648 View0.861Alsoufi M.A.; Razak S.; Siraj M.M.; Nafea I.; Ghaleb F.A.; Saeed F.; Nasser M.Anomaly-Based Intrusion Detection Systems In Iot Using Deep Learning: A Systematic Literature ReviewApplied Sciences (Switzerland), 11, 18 (2021)
4466 View0.861Tiwari 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)