Design of Adaptive Gravity Compensation Controller for Upper Limb Exosuit: The Concurrent Learning-based Approach

Akriti Ghosh, Krishanu Nath, M. K. Bera, S. Laskar
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Abstract

This paper deals with the design of an adaptive gravity compensator (AGC) for an upper limb soft exosuit. An exosuit is an assistive device for a wearer that supports locomotion to reduce human effort. The human upper limb with the exosuit can be modelled as an Euler-Lagrange system actuated by the human torque and assistive torque generated using the DC motor. The gravity compensator design aims to develop an adaptive control law that drives the assistive device's actuation, enabling the wearer to lift additional payloads with reduced effort. The adaptive gravity compensator is based on an estimation algorithm which estimates the unknown parameters. Often these algorithms require the signal to be persistently exciting to ensure exactness in estimation. To relax the per-sistence of excitation conditions, a concurrent learning-based estimation algorithm is introduced with the aim of exponential convergence of the parameter estimation error. It is shown that the concurrent learning-based adaptive gravity compensator can improve the response by reducing human effort.
基于并行学习的上肢外服自适应重力补偿控制器设计
研究了一种用于上肢软性外服的自适应重力补偿器的设计。外装是穿戴者支持运动以减少人力的辅助装置。穿上外伤服的人体上肢可以建模为由人体扭矩和直流电机产生的辅助扭矩驱动的欧拉-拉格朗日系统。重力补偿器设计的目的是开发一种自适应控制律,驱动辅助装置的驱动,使佩戴者能够以更少的努力举起额外的有效载荷。自适应重力补偿器基于一种估计算法,该算法对未知参数进行估计。这些算法通常要求信号持续激励以确保估计的准确性。为了缓解激励条件的持久性,引入了一种基于并行学习的估计算法,以参数估计误差的指数收敛为目标。结果表明,基于并行学习的自适应重力补偿器可以通过减少人工操作来改善系统的响应。
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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