Impedance Control without Environment Model by Reinforcement Learning

Adolfo Perrusquía, Wen Yu, Xiaoou Li
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引用次数: 1

Abstract

In this paper, to balance the learning accuracy and time. We propose hybrid reinforcement learning, which is in both discrete and continuous domains. The action-state space of the is divided into two domains: discrete-time learning has less precision but is fast, continuous-time learning is slow but has better learning precision. This hybrid reinforcement learning can learn the optimal contact force, meanwhile it minimizes positional error in an unknown environment. Convergence of the learning is proven. Real-time experiments are carried out using the two degree-of-freedom (DOF) spin and tilt robot and the 6-DOF force/torque sensor to verify our methods.
基于强化学习的无环境模型阻抗控制
在本文中,要平衡学习的准确性和时间。我们提出了混合强化学习,它既适用于离散域,也适用于连续域。将动作状态空间划分为两个域:离散时间学习精度低但学习速度快,连续时间学习速度慢但学习精度好。这种混合强化学习可以学习到最优的接触力,同时使未知环境下的位置误差最小化。证明了学习的收敛性。利用二自由度旋转和倾斜机器人和六自由度力/扭矩传感器进行了实时实验,验证了我们的方法。
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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