CVGuard: Mitigating Application Attacks on Connected Vehicles

A. Abdo, Guoyuan Wu, Qi Zhu, Nael B. Abu-Ghazaleh
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Abstract

Connected vehicle (CV) applications promise to revolutionize our transportation systems, improving safety and traffic capacity while reducing environmental footprint. Many CV applications have been proposed towards these goals, with the US Department of Transportation (USDOT) recently initiating some designated deployment sites to enable experimentation and validation. While the focus of this initial development effort is on demonstrating the functionality of a range of proposed applications, recent attacks have demonstrated their vulnerability to application level attacks. In these attacks, a malicious actor operates within the application’s parameters but providing falsified information. This paper explores a framework that protects against such application-level attacks. Then, we analyze the impact of the attacks, showing that an individual attacker can have substantial effects on the safety and efficiency of traffic flow even in the presence of message security standards developed by USDOT, motivating the need for our defense. Our defense relies on physically modeling the vehicles and their interaction using dynamic models and state estimation filters as well as reinforcement learning. It combines these observations with knowledge of application rules and guidelines to capture logic deviations. We demonstrate that the resultant defense, called CVGuard, can accurately and promptly detect attacks, with low false positive rates over a range of attack scenarios for different CV applications.
CVGuard:减轻联网车辆上的应用程序攻击
互联汽车(CV)应用有望彻底改变我们的交通系统,提高安全性和交通容量,同时减少环境足迹。为了实现这些目标,已经提出了许多CV应用,美国交通部(USDOT)最近启动了一些指定的部署地点,以进行实验和验证。虽然最初的开发工作的重点是演示一系列拟议的应用程序的功能,但最近的攻击已经证明了它们对应用程序级攻击的脆弱性。在这些攻击中,恶意参与者在应用程序的参数范围内操作,但提供伪造的信息。本文探讨了一个防止此类应用程序级攻击的框架。然后,我们分析了攻击的影响,表明即使在USDOT制定的消息安全标准存在的情况下,单个攻击者也可以对流量的安全性和效率产生实质性影响,从而激发了我们防御的需要。我们的防御依赖于使用动态模型和状态估计过滤器以及强化学习对车辆及其相互作用进行物理建模。它将这些观察结果与应用程序规则和指导方针的知识结合起来,以捕获逻辑偏差。我们证明了由此产生的防御,称为CVGuard,可以准确、及时地检测攻击,在不同CV应用程序的一系列攻击场景中具有低误报率。
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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