Threat Detection for Collaborative Adaptive Cruise Control in Connected Cars

Matthew Jagielski, N. Jones, Chung-Wei Lin, C. Nita-Rotaru, Shin'ichi Shiraishi
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引用次数: 36

Abstract

We study collaborative adaptive cruise control as a representative application for safety services provided by autonomous cars. We provide a detailed analysis of attacks that can be conducted by a motivated attacker targeting the collaborative adaptive cruise control algorithm, by influencing the acceleration reported by another car, or the local LIDAR and RADAR sensors. The attacks have a strong impact on passenger comfort, efficiency and safety, with two of such attacks being able to cause crashes. We also present two detection methods rooted in physical-based constraints and machine learning algorithms. We show the effectiveness of these solutions through simulations and discuss their limitations.
互联汽车协同自适应巡航控制的威胁检测
我们研究协作自适应巡航控制作为自动驾驶汽车提供安全服务的代表性应用。我们详细分析了攻击者可以通过影响另一辆车或本地激光雷达和雷达传感器报告的加速度,以协同自适应巡航控制算法为目标进行的攻击。这些袭击对乘客的舒适度、效率和安全性都有很大的影响,其中两次袭击导致了坠机。我们还提出了两种基于物理约束和机器学习算法的检测方法。我们通过仿真证明了这些解决方案的有效性,并讨论了它们的局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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