Sliding Mode Approach for Partitioned Cost Function-based Fault-Tolerant Control of Automated Driving

Sechan Oh, Hakjoo Kim, Munjung Jang, Jongmin Lee, K. Oh, K. Yi
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Abstract

This paper presents sliding mode and partitioned cost function-based fault-tolerant controller of automated driving. A proper strategy for ensuring functional safety of autonomous vehicles is needed when there exist sensor faults in acceleration information used for longitudinal autonomous driving. The data-driven fault-tolerant control algorithm proposed in this study is based on the upper-level controller decoupled with the lower-level controller. The adaptive sliding mode observer (ASMO) using recursive least squares (RLS) for reconstruction of acceleration sensor fault signal has been designed with gradient descent method. The reconstructed fault signal has been used to compute the desired acceleration for fault-tolerant longitudinal control with the Lyapunov stability condition. In order to compute the lower-level control inputs such as acceleration and brake pedal inputs, the desired and current acceleration values have been used based on the PID control law. It is assumed that the longitudinal acceleration of the preceding vehicle can be obtained using V2V communication. The performance evaluation environment has been constructed using Matlab/Simulink and CarMaker software. The evaluation results shows that the desired acceleration can be tracked reasonably by the proposed fault-tolerant control algorithm despite of existence of fault signal in longitudinal acceleration value.
基于分割代价函数的自动驾驶容错控制滑模方法
提出了一种基于滑模和分割代价函数的自动驾驶容错控制器。纵向自动驾驶使用的加速度信息中存在传感器故障时,需要采取适当的策略来保证自动驾驶车辆的功能安全。本文提出的数据驱动容错控制算法是基于上层控制器与下层控制器解耦的。采用梯度下降法设计了用于加速度传感器故障信号重构的递推最小二乘自适应滑模观测器。利用重构后的故障信号计算出具有李雅普诺夫稳定条件的纵向容错控制的期望加速度。为了计算加速度和制动踏板输入等下一级控制输入,基于PID控制律使用期望值和当前加速度值。假设前车的纵向加速度可以通过V2V通信获得。利用Matlab/Simulink和automotive软件搭建了性能评估环境。评价结果表明,在纵向加速度值存在故障信号的情况下,所提出的容错控制算法能够合理地跟踪期望加速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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