Robust Sliding Mode-Based Learning Control for Lane-Keeping Systems in Autonomous Vehicles

Zhikang Ge, Zhuo Wang, X. Bai, Xiaoxiong Wang
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引用次数: 2

Abstract

In this paper, a robust sliding mode-based learning control (SMLC) scheme for lane-keeping systems (LKS) of road vehicles is proposed. It is assumed that all of signals in system satisfy Lipschitz-like condition, a robust sliding mode-based learning controller is designed to achieve the zero-error convergence of lateral position error dynamics. A new finding is that yaw angle error dynamics is able to converge to zero asymptotically on the sliding surface. Unlike many existing sliding mode control schemes, the proposed SMLC scheme does not require the bound information of unknown system parameters. More significantly, the LKS equipped with the SMLC algorithm exhibits a strong robustness against varying road conditions and external disturbances. Simulation results demonstrate that the designed SMLC scheme could exert excellent tracking performance and robustness.
基于鲁棒滑模的自动驾驶汽车车道保持系统学习控制
针对道路车辆车道保持系统,提出了一种基于滑模的鲁棒学习控制方案。假设系统中所有信号都满足类lipschitz条件,设计了基于滑模的鲁棒学习控制器,实现了横向位置误差动力学的零误差收敛。一个新的发现是,偏航角误差动力学能够在滑动面上渐近收敛到零。与许多现有的滑模控制方案不同,所提出的SMLC方案不需要未知系统参数的绑定信息。更重要的是,采用SMLC算法的LKS对不同路况和外部干扰具有较强的鲁棒性。仿真结果表明,所设计的SMLC方案具有良好的跟踪性能和鲁棒性。
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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