Human-Robot Interaction System Design for Manipulator Control Using Reinforcement Learning

Z. Ding, C. Song, Jianhua Xu, Yi-geng Dou
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Abstract

In this article, a novel human-robot interaction (HRI) system is presented and applied in the robotic arm coordinated operation control task. The presented HRI system includes two parts, the impedance model controller and the robotic arm controller, which allows the operator to manipulate the robotic arm to accomplish the given task with minimal human effort. First, the model-based reinforcement learning (RL) method is applied in the impedance model for operator adaptation. The impedance model controller can transform human input into the specific signal for the manipulator. Second, a novel adaptive manipulator controller is designed. In contrast to existing controllers, a velocity-free filter is implemented in our controller, which is developed to replace the manipulator actuator’s speed signal. The effectiveness of the presented HRI system is verified by the simulation based on real manipulator parameters.
基于强化学习的机械手控制人机交互系统设计
本文提出了一种新型人机交互系统,并将其应用于机械臂协调操作控制任务中。提出的HRI系统包括阻抗模型控制器和机械臂控制器两部分,使操作者能够以最小的人力操纵机械臂完成给定的任务。首先,将基于模型的强化学习(RL)方法应用于阻抗模型中进行算子自适应。阻抗模型控制器可以将人的输入转化为机械手的特定信号。其次,设计了一种新型的自适应机械手控制器。与现有的控制器相比,我们的控制器中实现了一个无速度滤波器,用于取代机械手执行器的速度信号。基于真实机械手参数的仿真验证了所提HRI系统的有效性。
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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