联网车辆网络安全的机器学习和区块链技术

Jameel Ahmad, Muhammad Umer Zia, Ijaz Haider Naqvi, Jawwad Nasar Chattha, Faran Awais Butt, Tao Huang, Wei Xiang
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引用次数: 1

摘要

未来的联网和自动驾驶汽车(cav)必须确保其日常道路功能免受网络攻击,以确保乘客和车辆的安全。本文全面回顾了对传感器的网络安全攻击和多模态传感器融合的威胁。随后将对车内和车间通信的网络攻击进行全面回顾。除了分析CAV系统的传统网络安全威胁和对策外,还对现代机器学习,联邦学习和区块链方法进行了详细的回顾,以保护CAV。机器学习和数据挖掘辅助入侵检测系统以及处理这些挑战的其他对策在相关部分的末尾进行了详细阐述。在最后一部分中,确定了研究的挑战和未来的方向。本文可分为:商业、法律和道德问题>安全与隐私技术机器学习技术;物联网
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Machine learning and blockchain technologies for cybersecurity in connected vehicles
Abstract Future connected and autonomous vehicles (CAVs) must be secured against cyberattacks for their everyday functions on the road so that safety of passengers and vehicles can be ensured. This article presents a holistic review of cybersecurity attacks on sensors and threats regarding multi‐modal sensor fusion. A comprehensive review of cyberattacks on intra‐vehicle and inter‐vehicle communications is presented afterward. Besides the analysis of conventional cybersecurity threats and countermeasures for CAV systems, a detailed review of modern machine learning, federated learning, and blockchain approach is also conducted to safeguard CAVs. Machine learning and data mining‐aided intrusion detection systems and other countermeasures dealing with these challenges are elaborated at the end of the related section. In the last section, research challenges and future directions are identified. This article is categorized under: Commercial, Legal, and Ethical Issues > Security and Privacy Technologies > Machine Learning Technologies > Internet of Things
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