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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Anomaly Detection for Cooperative Adaptive Cruise Control in Autonomous Vehicles Using Statistical Learning and Kinematic Model
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Anomaly Detection for Cooperative Adaptive Cruise Control in Autonomous Vehicles Using Statistical Learning and Kinematic Model

机译:使用统计学习和运动型模型对自治车辆合作自适应巡航控制的异常检测

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摘要

This paper focuses on Cooperative Adaptive Cruise Control (CACC) in autonomous vehicles. In CACC, vehicles regulate their speed according to a preceding "leader" vehicle in the lane, forming a platoon. In a benign environment, CACC reduces fuel consumption, maximizes road capacity, and ensures traffic safety. However, CACC is vulnerable to various security threats. In this paper, we consider one of the critical threats, where the platoon leader is compromised, and forges acceleration information sent to platoon members. Such attack would lead to traffic instability and potential collisions. First, we propose information sharing in CACC model to allow vehicles and fixed infrastructure to sense and share information about platoon leaders, hence improves the reliability and supports the detection of anomalous behavior. Then, we propose a real-time anomaly detection mechanism that combines statistical learning with the physics laws of kinematics. Specifically, we propose Generalized Extreme Studentized Deviate with Sliding Chunks (GESD-SC) approach, which is applied at each vehicle in the platoon to detect anomalies in real-time based on the vehicle's own speeding decisions. Kinematic model is also utilized to detect unexpected deviations using the leader's information, communicated directly and observed by the leader's neighboring vehicle(s) and/or supporting infrastructure. Combining kinematic model with GESD-SC has shown to be effective in detecting falsification attacks in CACC. Furthermore, we analyze the time performance, and show that the proposed technique outperforms existing method in detection accuracy and processing time.
机译:本文重点介绍自动车辆中的合作自适应巡航控制(CACC)。在CACC中,车辆根据车道中的前面的“领导者”车辆调节其速度,形成一个排。在良性环境中,CACC降低了燃油消耗,最大化了道路容量,并确保了交通安全。但是,CACC容易受到各种安全威胁的影响。在本文中,我们考虑了一个关键威胁之一,其中排列的威胁受到损害,并促进发送到排到排的加速信息。这种攻击将导致交通不稳定和潜在的碰撞。首先,我们提出了在CACC模型中共享的信息共享,以允许车辆和固定基础设施感觉和分享有关排压力的信息,因此提高了可靠性并支持检测异常行为。然后,我们提出了一个实时异常检测机制,将统计学习与运动学的物理定律结合起来。具体而言,我们提出了广泛的极端学生偏离,滑块(GESD-SC)方法,该方法应用于排在排中的每个车辆中,以基于车辆自身的超速决策来实时检测异常。运动模型还用于使用领导者的信息直接传达并由领导者的相邻车辆和/或支持基础设施观察的意外偏差。将运动模型与GESD-SC结合起来,已经有效地检测CACC中的伪造攻击。此外,我们分析时间性能,并表明所提出的技术在检测准确度和处理时间方面优于现有方法。

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