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Model predictive control-based fault detection and reconstruction algorithm for longitudinal control of autonomous driving vehicle using multi-sliding mode observer

机译:基于模型预测控制的故障检测与使用多滑动模式观测器自主驱动车辆纵向控制的故障检测与重建算法

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This paper presents a model predictive control-based fault detection and reconstruction algorithm for longitudinal control of autonomous driving using a multi-sliding mode observer. In order to secure the safe longitudinal control of a vehicle, a numbers of factors must be ensured, such as the reliability of the longitudinal information, the data on the forward object from the environment sensor, and the acceleration of the ego vehicle. Thus, we propose a reasonable failure detection scheme for the acceleration signal of the host vehicle and the relative values of the front object of the radar. In order to identify the faults of the radar and the vehicle acceleration sensor related to the automated longitudinal control, the multiple sliding mode observer and prediction of model predictive control (MPC) algorithm are applied. The relative acceleration is reconstructed by applying a sliding mode observer (SMO) with clearance and relative speed measurements. The upper and lower limits of longitudinal acceleration were computed by analyzing human driving data under the preceding vehicle and reconstructed acceleration. A proper acceleration range can be defined precisely based on several reconstructed upper and lower bounds by using a multiple sliding mode observer with stored prediction data of relative values, making it possible to effectively identify the fault of the host vehicle's acceleration sensor. By applying MPC for this study, optimal control input and prediction of relative states can be obtained that are more reasonable than those using the linear prediction model. The proposed fault detection algorithm can identify the abnormal state of the environment sensors by using the accumulated past sensor data. By comparing the stored prediction of relative states with the stored data on current states for a given period, the signal faults of the longitudinal target information can be detected from environment sensors. With these fault indices of states, the final fault diagnoses of sensors can be determined by assessing confidence through statistical analysis of 27 sets of normal driving data. In order to obtain a reasonable performance evaluation, this study uses actual driving data and a 3D full vehicle model constructed in the MATLAB/Simulink environment. The test results reveal that the proposed algorithm can successfully detect the fault of the radar and acceleration sensor of the automated driving vehicle.
机译:本文介绍了一种基于模型预测控制的故障检测和重构算法,用于使用多滑模式观测器自主驾驶纵向控制。为了确保车辆的安全纵向控制,必须确保多种因素,例如纵向信息的可靠性,来自环境传感器的前向对象上的数据,以及自我车辆的加速度。因此,我们提出了一种合理的故障检测方案,用于主车辆的加速信号和雷达的前对象的相对值。为了识别雷达的故障和与自动纵向控制相关的雷达和车辆加速度传感器,应用了多个滑动模式观察者和模型预测控制(MPC)算法的预测。通过利用具有间隙和相对速度测量的滑动模式观察者(SMO)来重建相对加速度。通过分析前车下的人的驾驶数据并重建加速来计算纵向加速度的上限和下限。通过使用多个滑动模式观测器具有具有相对值的存储预测数据的多个滑动模式观察者,可以基于多个重建的上限和下限来精确地定义适当的加速度范围,使得可以有效地识别主车辆的加速度传感器的故障。通过对本研究应用MPC,可以获得比使用线性预测模型的最佳状态的最佳控制输入和预测。所提出的故障检测算法可以通过使用累积的过去传感器数据来识别环境传感器的异常状态。通过将相对状态的存储预测与给定时期的当前状态上的存储数据进行比较,可以从环境传感器中检测纵向目标信息的信号故障。利用这些状态的故障指数,通过评估通过27组正常驱动数据的统计分析来评估置信度,可以确定传感器的最终故障诊断。为了获得合理的性能评估,本研究使用实际驾驶数据和在Matlab / Simulink环境中构建的3D全车型。测试结果表明,该算法可以成功地检测自动驾驶车辆的雷达和加速度传感器的故障。

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