Machine Learning based intrusion detection systems for connected autonomous vehicles: A survey

被引:0
|
作者
Jay Nagarajan
Pegah Mansourian
Muhammad Anwar Shahid
Arunita Jaekel
Ikjot Saini
Ning Zhang
Marc Kneppers
机构
[1] University of Windsor,
[2] Telus Communications Inc.,undefined
关键词
CAN Bus; Intra-vehicle network; Inter-vehicle network; Intrusion Detection System (IDS); Connected Autonomous Vehicles (CAV); Security threats; Machine learning;
D O I
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中图分类号
学科分类号
摘要
Connected and Autonomous Vehicles (CAVs) expect to dramatically improve road safety and efficiency of the transportation system. However, CAVs can be vulnerable to attacks at different levels, e.g., attacks on intra-vehicle networks and inter-vehicle networks. Those malicious attacks not only result in loss of confidentiality and user privacy but also lead to more serious consequences such as bodily injury and loss of life. An intrusion detection system (IDS) is one of the most effective ways to monitor the operations of vehicles and networks, detect different types of attacks, and provide essential information to mitigate and remedy the effects of attacks. To ensure the safety of CAVs, it is extremely important to detect various attacks accurately in a timely fashion. The purpose of this survey is to provide a comprehensive review of available machine learning (ML) based IDS for intra-vehicle and inter-vehicle networks. Additionally, this paper discusses publicly available datasets for CAV and offers a summary of the many current testbeds and future research trends for connected vehicle environments.
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页码:2153 / 2185
页数:32
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