基于鲁棒传感器的异构队列车辆故障检测与估计

Muhammad Rony Hidavatullah, J. Juang, Z. Fang, Wei-Hsuan Chang
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引用次数: 3

摘要

ACES (Autonomous, Connected, Electric, Shared)的研究对安全驾驶、燃油效率、交通平顺性和社会生活质量,特别是对老龄化人口流动产生了重大影响。ACES服务之一是队列车辆,其中一组车辆通过协作自适应巡航控制(CACC)和其他安全功能一起移动。传感器和车对车(V2V)通信是成功实施队列车辆的关键部分。在这项工作中,我们主要考虑雷达和相机传感器。这些传感器提供车辆之间的相对距离和速度,这是在队列中保持车辆之间安全距离的关键。在实践中,这两种传感器都受到几个关键问题的影响,如故障、故障和传感器退化。此外,在传感器数据的传输和处理过程中,可能会由于延迟、噪声和网络攻击而出现错误。这些问题可能会影响ACES系统的安全性和稳定性。对于在CACC下作业的排管,可以解决管柱稳定性问题。因此,本文旨在通过提出的存在噪声、不确定性和摄动的故障检测和估计策略来解决传感器故障问题。该策略将参数估计和状态估计相结合。提出了一种带指数遗忘因子和卡尔曼滤波的改进扩展递推最小二乘(MERLS)算法来处理系统中的噪声。该模型由MERLS获得,并利用卡尔曼滤波根据残差检测传感器故障。当检测到传感器故障时,采用来自卡尔曼滤波的鲁棒估计作为容错控制,在保证安全性和串稳定性的前提下,保证传感器故障发生后的良好性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heterogeneous Platooning Vehicle with Robust Sensor Fault Detection and Estimation
The research on ACES, which stands for Autonomous, Connected, Electric, and Shared, brings a significant impact on safe driving, fuel efficiency, traffic smoothness, and society's quality life, especially for the aging population mobility. One of the ACES services is the platooning vehicle, where a group of vehicles moves together with the cooperative adaptive cruise control (CACC) and other safety features. Sensors and vehicle-to-vehicle (V2V) communication are a crucial part of succeeding in the implementation of platooning vehicles. In this work, we consider radar and camera sensors as the primary concern. Those sensors provide relative distance and velocity between vehicles where is the key to maintain a safe distance between vehicles during platooning. In practice, both sensors are subject to several critical issues, such as faults, malfunction, and sensor degradation. Besides, in the transmission and processing of sensor data, errors may occur due to delay, noise, and cyber-attacks. These issues may affect the safety and stability of an ACES system. For a platoon operating under CACC, the string stability may be addressed. Therefore, this paper aims to solve sensor fault issues with the proposed strategy for fault detection and estimation in the presence of noise, uncertainty, and perturbation. The proposed strategy integrates parameter estimation and the state estimation approach. The modified, extended recursive least square (MERLS) with exponential forgetting factor and Kalman filter is considered to deal with the system have noise. The model is obtained by MERLS and used by the Kalman filter to detects the sensor's fault based on the residual. When the sensor fault detected, a robust estimation from the Kalman filter is employed as fault-tolerant control that guarantees impressive performance after sensor fault occurs, subject to safety and string stability.
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