The Vector Control Scheme for Amphibious Spherical Robots Based on Reinforcement Learning

He Yin, Shuxiang Guo, Liwei Shi, Mugen Zhou, Xihuan Hou, Zan Li, Debin Xia
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引用次数: 2

Abstract

Due to variable underwater working conditions and unfavorable environments, it is difficult to design a controller suitable for underwater robots. This paper uses the adaptive ability of reinforcement learning to propose a two-layer network framework based on reinforcement learning to realize the control of amphibious spherical robots. The upper planning layer mainly plans the total torque of the robot at each moment according to the desired position and speed. The lower control layer mainly configures the parameters of the four machine legs according to the planning instructions of the upper planning layer. Through the cooperation of the planning layer and the control layer, the adaptive motion control of the amphibious spherical robot can finally be realized. Finally, the proposed scheme was verified on a simulated amphibious spherical robot.
基于强化学习的水陆两栖球形机器人矢量控制方案
由于水下工作条件多变,环境恶劣,设计适合水下机器人的控制器难度较大。本文利用强化学习的自适应能力,提出了一种基于强化学习的两层网络框架来实现两栖球形机器人的控制。上层规划层主要根据期望的位置和速度规划机器人在每个时刻的总扭矩。下层控制层主要根据上层规划层的规划指令对四个机腿的参数进行配置。通过规划层和控制层的协同,最终实现水陆两栖球形机器人的自适应运动控制。最后,在仿真两栖球形机器人上对所提方案进行了验证。
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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