In this paper we propose a novel observer-based method for anomaly detection in connected and automated vehicles (CAVs). The proposed method utilizes an augmented extended Kalman filter (AEKF) to smooth sensor readings of a CAV based on a nonlinear car-following motion model with time delay, where the leading vehicle's trajectory is used by the subject vehicle to detect sensor anomalies. We use the classic $\chi^2$ fault detector in conjunction with the proposed AEKF for anomaly detection. To make the proposed model more suitable for real-world applications, we consider a stochastic communication time delay in the car-following model. Our experiments conducted on real-world connected vehicle data indicate that the AEKF with $\chi^2$-detector can achieve a high anomaly detection performance.
翻译:在本文中,我们提出了一种新的基于观察员的新办法,用于探测连接车辆和自动化车辆中的异常现象。拟议办法利用扩大的卡尔曼过滤器(AEKF),根据非线性汽车跟踪运动模型,在时间上延迟,主要车辆的轨迹被主体车辆用于探测传感器异常现象。我们使用典型的美元/chi=2美元故障检测器,与拟议中的AEKF一道,用于探测异常现象。为了使拟议的模型更适合现实世界应用,我们认为,在汽车跟踪模型中,使用一种随机通信延迟时间。我们在现实世界相关车辆数据上进行的实验表明,使用$/chi ⁇ 2美元的AEKF可以实现高异常现象检测性能。