Design of Path Tracking Controller for Autonomous Vehicles Through Bias Learning of Vehicle Dynamic Models Under Environmental Uncertainty

Lichuan Ren, Zhimin Xi
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Abstract

Path tracking error control is an important functionality in the development of autonomous vehicles when a collision-free path has been planned. Large path tracking errors could lead to collision or even out of the control of the vehicle. Vehicle dynamic models are used to minimize the vehicle path tracking error so that control strategies can be designed under different scenarios. However, the vehicle dynamic model may not truly represent the actual vehicle dynamics. Furthermore, the nominal parameter employed in the vehicle dynamic model cannot represent actual operating conditions of the vehicle under environmental uncertainty. This paper presents a learning-based bias modeling method to improve the fidelity of any baseline vehicle dynamics model so that effective path tracking controller design can be achieved through a low fidelity but high-efficiency vehicle dynamic model with the aid of a few experiments or high fidelity simulations. The state-of-the-art of machine learning models, such as Gaussian process (GP) regression, recurrent neural network (RNN), and long short-term memory (LSTM) network, are employed for bias learning and comparison. A high-fidelity vehicle simulator, CARLA, is employed to collect virtual test data and demonstrate the effectiveness of the proposed bias-learning based control strategies under environmental uncertainty.
环境不确定性下基于车辆动态模型偏差学习的自动驾驶汽车路径跟踪控制器设计
路径跟踪误差控制是自动驾驶汽车在规划无碰撞路径时的一项重要功能。较大的路径跟踪误差可能导致碰撞甚至车辆失控。利用车辆动力学模型最小化车辆路径跟踪误差,从而设计出不同场景下的控制策略。然而,车辆动力学模型可能不能真实地代表实际的车辆动力学。此外,车辆动力学模型中使用的标称参数不能代表环境不确定性下车辆的实际运行状况。本文提出了一种基于学习的偏置建模方法,以提高任意基线车辆动力学模型的保真度,从而通过少量实验或高保真度仿真,通过低保真度但高效率的车辆动力学模型实现有效的路径跟踪控制器设计。最先进的机器学习模型,如高斯过程(GP)回归、循环神经网络(RNN)和长短期记忆(LSTM)网络,被用于偏见学习和比较。利用高保真车辆模拟器CARLA收集虚拟测试数据,验证了在环境不确定性下基于偏差学习的控制策略的有效性。
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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