Iterative learning-based path control for robot-assisted upper-limb rehabilitation

被引:0
作者
Kamran Maqsood
Jing Luo
Chenguang Yang
Qingyuan Ren
Yanan Li
机构
[1] University of Sussex,Department of Engineering and Design
[2] Changsha University of Science and Technology,The School of Electrical and Information Engineering
[3] University of the West of England,The Bristol Robotics Laboratory
[4] Zhejiang University,The State Key Laboratory of Industrial Control Technology
来源
Neural Computing and Applications | 2023年 / 35卷
关键词
Adaptive impedance control; Trajectory learning; Path control; Human–robot interaction; Robot-assisted rehabilitation;
D O I
暂无
中图分类号
学科分类号
摘要
In robot-assisted rehabilitation, the performance of robotic assistance is dependent on the human user’s dynamics, which are subject to uncertainties. In order to enhance the rehabilitation performance and in particular to provide a constant level of assistance, we separate the task space into two subspaces where a combined scheme of adaptive impedance control and trajectory learning is developed. Human movement speed can vary from person to person and it cannot be predefined for the robot. Therefore, in the direction of human movement, an iterative trajectory learning approach is developed to update the robot reference according to human movement and to achieve the desired interaction force between the robot and the human user. In the direction normal to the task trajectory, human’s unintentional force may deteriorate the trajectory tracking performance. Therefore, an impedance adaptation method is utilized to compensate for unknown human force and prevent the human user drifting away from the updated robot reference trajectory. The proposed scheme was tested in experiments that emulated three upper-limb rehabilitation modes: zero interaction force, assistive and resistive. Experimental results showed that the desired assistance level could be achieved, despite uncertain human dynamics.
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页码:23329 / 23341
页数:12
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