Robust optimal control for uncertain wheeled mobile robot based on reinforcement learning: ADP approach

Hoa Van Doan, Nga Thi-Thuy Vu
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Abstract

This paper presents a robust optimal control approach for the wheel mobile robot system, which considers the effects of external disturbances, uncertainties, and wheel slipping. The proposed method utilizes an adaptive dynamic programming (ADP) technique in conjunction with a disturbance observer. Initially, the system's state space model is formulated through the utilization of kinematic and dynamic models. Subsequently, the ADP method is employed to establish an online adaptive optimal controller, which solely relies on a single neural network for the purpose of function approximation. The utilization of the disturbance observer in conjunction with the compensation controller serves to alleviate the effects of disturbances. The Lyapunov theorem establishes the stability of the complete closed-loop system and the convergence of the weights of the neural network. The proposed approach has been shown to be effective through simulation under the effect of the disturbances and the change of the desired trajectory.
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基于强化学习的不确定轮式移动机器人鲁棒最佳控制:ADP 方法
本文针对轮式移动机器人系统提出了一种鲁棒优化控制方法,该方法考虑了外部干扰、不确定性和轮子打滑的影响。所提出的方法利用了自适应动态编程(ADP)技术和干扰观测器。首先,利用运动学和动力学模型建立系统的状态空间模型。随后,采用 ADP 方法建立在线自适应优化控制器,该控制器仅依靠一个神经网络进行函数逼近。干扰观测器与补偿控制器的结合使用可减轻干扰的影响。李雅普诺夫定理确定了完整闭环系统的稳定性和神经网络权重的收敛性。通过仿真证明,在干扰和期望轨迹变化的影响下,所提出的方法是有效的。
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