Blind Walking Balance Control and Disturbance Rejection of the Bipedal Humanoid Robot Xiao-Man via Reinforcement Learning

Chao Ji, Diyuan Liu, Wei Gao, Shiwu Zhang
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Abstract

Bipedal humanoid robot has the ability to both move and manipulate in complex environments, which is of great significance in the future. However, stable bipedal walking in the real world has always been a challenge in industry and even in academia. The traditional model-based methods are highly dependent on the environment, with high modeling complexity and lack of generalization. The solution based on the simplified model usually causes the problem that the control algorithms cannot adapt to complex terrain environment. This paper presents a newly designed bipedal humanoid robot, Xiao-Man. Aiming at achieving the robot’s terrain-adaptive walking behavior, a reinforcement learning based Actor-Critic network with asymmetric structure is proposed. Without using any external perception information, robust bipedal walking behavior of Xiao-Man is achieved. In the process, we also build the dataset based on the joint actuation truth data and train a joint actuator network to reduce the gap between the expected torque and the actual response torque. Experimental results show that the bipedal humanoid robot equipped with the trained control policy achieves the capability of stable walking and disturbance rejection only rely on proprioceptive information.
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通过强化学习实现双足仿人机器人 "小曼 "的盲走平衡控制和干扰抑制
双足仿人机器人具有在复杂环境中移动和操纵的能力,这在未来具有重要意义。然而,在现实世界中实现稳定的双足行走一直是工业界甚至学术界的难题。传统的基于模型的方法高度依赖环境,建模复杂度高,缺乏普适性。基于简化模型的解决方案通常会造成控制算法无法适应复杂地形环境的问题。本文介绍了一种新设计的双足仿人机器人 "小曼"。为了实现机器人的地形适应性行走行为,本文提出了一种基于强化学习的非对称结构的行为批判网络(Actor-Critic network)。在不使用任何外部感知信息的情况下,实现了 "小曼 "稳健的双足行走行为。在此过程中,我们还建立了基于关节执行真实数据的数据集,并训练关节执行器网络,以减少预期扭矩与实际响应扭矩之间的差距。实验结果表明,采用训练好的控制策略的双足仿人机器人仅依靠本体感觉信息就能实现稳定行走和干扰抑制。
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