Xiao Meng, Zhang Xuefei, Zhang Tie, Chen Shouyan, Zou Yanbiao, Wu Wen
Department of Rehabilitation, Zhujiang Hospital, Southern Medical University, Guangzhou, China.
School of Mechanical and Automotive Engineering, South China University of Technology, Guangzhou, China.
Front Neurorobot. 2024 Jan 29;18:1290853. doi: 10.3389/fnbot.2024.1290853. eCollection 2024.
To address traditional impedance control methods' difficulty with obtaining stable forces during robot-skin contact, a force control based on the Gaussian mixture model/Gaussian mixture regression (GMM/GMR) algorithm fusing different compensation strategies is proposed. The contact relationship between a robot end effector and human skin is established through an impedance control model. To allow the robot to adapt to flexible skin environments, reinforcement learning algorithms and a strategy based on the skin mechanics model compensate for the impedance control strategy. Two different environment dynamics models for reinforcement learning that can be trained offline are proposed to quickly obtain reinforcement learning strategies. Three different compensation strategies are fused based on the GMM/GMR algorithm, exploiting the online calculation of physical models and offline strategies of reinforcement learning, which can improve the robustness and versatility of the algorithm when adapting to different skin environments. The experimental results show that the contact force obtained by the robot force control based on the GMM/GMR algorithm fusing different compensation strategies is relatively stable. It has better versatility than impedance control, and the force error is within ~±0.2 N.
为了解决传统阻抗控制方法在机器人与皮肤接触过程中难以获得稳定力的问题,提出了一种基于融合不同补偿策略的高斯混合模型/高斯混合回归(GMM/GMR)算法的力控制方法。通过阻抗控制模型建立机器人末端执行器与人体皮肤之间的接触关系。为使机器人能够适应柔性皮肤环境,采用强化学习算法和基于皮肤力学模型的策略对阻抗控制策略进行补偿。提出了两种可离线训练的用于强化学习的不同环境动力学模型,以快速获得强化学习策略。基于GMM/GMR算法融合了三种不同的补偿策略,利用物理模型的在线计算和强化学习的离线策略,在适应不同皮肤环境时可提高算法的鲁棒性和通用性。实验结果表明,基于融合不同补偿策略的GMM/GMR算法的机器人力控制所获得的接触力相对稳定。它比阻抗控制具有更好的通用性,力误差在±0.2 N左右。