基于强化学习的动态环境下机器人接触力跟踪变导纳控制

Yufei Zhou, Tianyu Liu, Jingkai Cui, Yanhui Li, Mingchao Zhu
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引用次数: 1

摘要

在执行任务时,操纵器通常需要与环境接触。保持机械手末端执行器与环境接触力的稳定性是至关重要的。然而,恒导纳控制方法在环境未标定的情况下无法保持动态力跟踪的稳定性。提出了一种基于强化学习的可变导纳控制算法,该算法通过强化学习代理调节导纳控制的阻尼参数。仿真实验表明,在存在环境位置估计误差的情况下,该方法在斜面和正弦面上均能保持动态接触力跟踪的稳定性。与传统的常系数导纳控制相比,自适应导纳控制算法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Variable Admittance Control for Robotic Contact Force Tracking in Dynamic Environment Based on Reinforcement Learning
The manipulators usually need to contact with the environment when executing the tasks. Maintaining the stability of the contact force between the manipulator end-effector and the environment is very crucial. However, constant admittance control method cannot maintain the stability of dynamic force tracking if the environment is uncalibrated. A variable admittance control algorithm based on reinforcement learning is proposed, which adjusts the damping parameter of admittance control through reinforcement learning agent. Through the simulation experiments, it is found that this method can maintain the stability of dynamic contact force tracking on a sloped surface and a sine surface when an estimation error of the environmental position exists. Compared with the traditional admittance control with constant coefficients, the adaptive admittance control algorithm performs better.
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