Adaptive Optimal Control of Four-Wheel Omni Robot using Reinforcement Learning

T. Khac, N. Huu, Minh Nguyen Van, Tuyen Bui Trung
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引用次数: 1

Abstract

Designing Controllers for Omni mobile robots have been widely studied, and some proposals have also mentioned that the robot model has uncertain parameters. This paper develops an optimal adaptive traction control structure based on reinforcement learning for a 4-wheel Omni robot in the condition in which a part of the model is known. An auxiliary controller with two Actor - Critic neural networks updated online was added to deal with having to create desired trajectories for all state variables in the system. Besides, the controller design also takes into account the constraint of the input signal. An example is simulated on Matlab/Simulink software to demonstrate the quality of the proposed controller.
基于强化学习的四轮全能机器人自适应最优控制
针对Omni移动机器人的控制器设计问题已经得到了广泛的研究,一些方案也提到了机器人模型具有不确定参数的问题。针对四轮Omni机器人在模型部分已知的情况下,开发了一种基于强化学习的最优自适应牵引控制结构。添加了一个带有两个在线更新的Actor - Critic神经网络的辅助控制器,以处理必须为系统中的所有状态变量创建所需轨迹的问题。此外,控制器的设计还考虑了输入信号的约束。在Matlab/Simulink软件上进行了算例仿真,验证了所提控制器的质量。
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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