轮式移动车辆的最优控制

M. Gómez, T. Martínez, S. Sánchez, D. Meziat
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引用次数: 5

摘要

本文所描述的工作目标是开发一种基于Cell-Mapping技术的特定最优控制技术,并结合Q-learning强化学习方法来控制轮式移动车辆。这种方法管理4个状态变量,因为执行的是动态模型,而不是可以用更少的变量完成的运动学模型。这种新的解决方案可以应用于非线性连续系统,其中强化学习方法具有多个约束。重点介绍了新的技术组合,并将其应用于最优控制问题,取得了令人满意的结果。由于该算法是根据接收到的经验实时估计车辆模型,因此对车辆参数的任何变化都具有很强的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Control Applied to Wheeled Mobile Vehicles
The goal of the work described in this paper is to develop a particular optimal control technique based on a Cell-Mapping technique in combination with the Q-learning reinforcement learning method to control wheeled mobile vehicles. This approach manages 4 state variables due to a dynamic model is performed instead of a kinematics model which can be done with less variables. This new solution can be applied to non-linear continuous systems where reinforcement learning methods have multiple constraints. Emphasis is given to the new combination of techniques, which applied to optimal control problems produce satisfactory results. The proposed algorithm is very robust to any change involved in the vehicle parameters because the vehicle model is estimated in real time from received experience.
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