Local Update Dynamic Policy Programming in reinforcement learning of pneumatic artificial muscle-driven humanoid hand control

Yunduan Cui, Takamitsu Matsubara, Kenji Sugimoto
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引用次数: 6

Abstract

Pneumatic Artificial Muscle (PAM) is an attractive device to be used as an actuator for humanoid robots because of its high power-to-weight ratio and good flexibility. However, both the modeling and the controlling of PAM-driven robots are challenging due to the high nonlinearities of a PAM's air pressure dynamics and its mechanical structure. This paper focuses on applying Reinforcement Learning (RL) to the control of a PAM-driven robots without our knowledge of its model. We propose a new RL algorithm, Local Update Dynamic Policy Programming (LUDPP), as an extension of Dynamic Policy Programming (DPP). This algorithm exploits the nature of smooth policy update of DPP to considerably reduce the computational complexity in both time and space: at each iteration, this algorithm only updates the value function locally throughout the whole state-action space. We applied LUDPP to control one finger (2 DOFs with a 12-dimensional state-action space) of Shadow Dexterous Hand, a PAM-driven humanoid robot hand. Experimental results suggest that our method can achieve successful control of such a robot with a limited computational resource whereas other conventional value function based RL algorithms (DPP, LSPI) cannot.
气动人工肌肉驱动人形手控制强化学习中的局部更新动态策略规划
气动人造肌肉(PAM)由于其高功率重量比和良好的柔韧性,是一种很有吸引力的仿人机器人作动装置。然而,由于PAM的气压动力学及其机械结构的高度非线性,使得PAM驱动机器人的建模和控制具有挑战性。本文的重点是将强化学习(RL)应用于pam驱动机器人的控制,而不需要我们了解其模型。我们提出了一种新的RL算法,本地更新动态策略规划(LUDPP),作为动态策略规划(DPP)的扩展。该算法利用了DPP平滑策略更新的特性,大大降低了时间和空间上的计算复杂度:在每次迭代时,该算法仅在整个状态-动作空间局部更新值函数。我们将LUDPP应用于pam驱动的人形机械手Shadow Dexterous Hand的一个手指(2自由度,12维状态-动作空间)的控制。实验结果表明,我们的方法可以在有限的计算资源下成功地控制这种机器人,而其他传统的基于值函数的RL算法(DPP, LSPI)则不能。
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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