Lu Yue, Lin Zixuan, Li Yahui, Lv Jinwang, Zhang Jiaji, Xiao Cong, Liang Ye, Chen Xujiao, Song Tao, Chai Guohong, Zuo Guokun
Cixi Biomedical Research Institute, Wenzhou Medical University, Ningbo, China.
Ningbo Institute of Materials Technology and Engineering, Chinese Academy of Sciences, Ningbo, China.
Front Robot AI. 2024 Oct 14;11:1404814. doi: 10.3389/frobt.2024.1404814. eCollection 2024.
It has been proven that robot-assisted rehabilitation training can effectively promote the recovery of upper-limb motor function in post-stroke patients. Increasing patients' active participation by providing assist-as-needed (AAN) control strategies is key to the effectiveness of robot-assisted rehabilitation training. In this paper, a greedy assist-as-needed (GAAN) controller based on radial basis function (RBF) network combined with 3 degrees of freedom (3-DOF) potential constraints was proposed to provide AAN interactive forces of an end-effect upper limb rehabilitation robot. The proposed 3-DOF potential fields were adopted to constrain the tangential motions of three kinds of typical target trajectories (one-dimensional (1D) lines, two-dimensional (2D) curves and three-dimensional (3D) spirals) while the GAAN controller was designed to estimate the motor capability of a subject and provide appropriate robot-assisted forces. The co-simulation (Adams-Matlab/Simulink) experiments and behavioral experiments on 10 healthy volunteers were conducted to validate the utility of the GAAN controller. The experimental results demonstrated that the GAAN controller combined with 3-DOF potential field constraints enabled the subjects to actively participate in kinds of tracking tasks while keeping acceptable tracking accuracies. 3D spirals could be better in stimulating subjects' active participation when compared to 1D and 2D target trajectories. The current GAAN controller has the potential to be applied to existing commercial upper limb rehabilitation robots.
事实证明,机器人辅助康复训练能够有效促进中风后患者上肢运动功能的恢复。通过提供按需辅助(AAN)控制策略来提高患者的主动参与度是机器人辅助康复训练有效性的关键。本文提出了一种基于径向基函数(RBF)网络并结合三自由度(3-DOF)势约束的贪婪按需辅助(GAAN)控制器,以提供上肢末端康复机器人的AAN交互力。所提出的三自由度势场用于约束三种典型目标轨迹(一维(1D)直线、二维(2D)曲线和三维(3D)螺旋线)的切向运动,而GAAN控制器旨在估计受试者的运动能力并提供适当的机器人辅助力。对10名健康志愿者进行了联合仿真(Adams-Matlab/Simulink)实验和行为实验,以验证GAAN控制器的效用。实验结果表明,结合三自由度势场约束的GAAN控制器能使受试者在保持可接受跟踪精度的同时积极参与各种跟踪任务。与一维和二维目标轨迹相比,三维螺旋线在激发受试者的主动参与方面效果更好。当前的GAAN控制器有应用于现有商用上肢康复机器人的潜力。