探索网络攻击对自适应巡航控制车辆的能源影响

Tianyi Li, Benjamin Rosenblad, Shian Wang, Mingfeng Shang, Raphael E. Stern
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引用次数: 1

摘要

具有驾驶员辅助功能的自动驾驶汽车(AVs)的出现,如自适应巡航控制(ACC)和其他自动驾驶功能,为交通系统带来了光明的未来。然而,这些新出现的特性也带来了网络攻击的可能性。选定数量的ACC车辆可能会受到损害,导致异常驾驶,从而导致整个网络的拥堵和燃料消耗影响。在本研究中,我们首先介绍了针对ACC车辆的两种候选攻击类型:对车辆控制命令的恶意攻击和对传感器测量的虚假数据注入攻击。然后,我们研究了这些候选攻击在不同交通条件下的能量影响,包括自由流和拥堵状态,以了解流量对这些候选攻击的敏感程度。具体而言,采用广泛使用的VT-Micro模型对汽车能耗进行量化。我们发现,针对ACC或部分自动化车辆的候选攻击可能只会对受损车辆的燃油消耗产生不利影响,并且可能不会导致整个车队的排放量显著增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Energy Impacts of Cyberattacks on Adaptive Cruise Control Vehicles
The emergence of automated vehicles (AVs) with driver-assist features, such as adaptive cruise control (ACC) and other automated driving capabilities, promises a bright future for transportation systems. However, these emerging features also introduce the possibility of cyberattacks. A select number of ACC vehicles could be compromised to drive abnormally, causing a network-wide impact on congestion and fuel consumption. In this study, we first introduce two types of candidate attacks on ACC vehicles: malicious attacks on vehicle control commands and false data injection attacks on sensor measurements. Then, we examine the energy impacts of these candidate attacks on distinct traffic conditions involving both free flow and congested regimes to get a sense of how sensitive the flow is to these candidate attacks. Specifically, the widely used VT-Micro model is adopted to quantify vehicle energy consumption. We find that the candidate attacks introduced to ACC or partially automated vehicles may only adversely impact the fuel consumption of the compromised vehicles and may not translate to significantly higher emissions across the fleet.
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