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用于混合外骨骼坐立任务期间切换协作分配策略的迭代学习控制器

An Iterative Learning Controller for a Switched Cooperative Allocation Strategy during Sit-to-Stand Tasks with a Hybrid Exoskeleton.

作者信息

Molazadeh Vahidreza, Zhang Qiang, Bao Xuefeng, Sharma Nitin

机构信息

Department of Mechanical Engineering and Materials Science at University of Pittsburgh, Pittsburgh, PA, USA.

Joint Department of Biomedical Engineering at North Carolina State University and the University of North Carolina Chapel-Hill, Raleigh, NC, USA.

出版信息

IEEE Trans Control Syst Technol. 2022 May;30(3):1021-1036. doi: 10.1109/tcst.2021.3089885. Epub 2021 Jul 5.

Abstract

A hybrid exoskeleton that combines functional electrical stimulation (FES) and a powered exoskeleton is an emerging technology for assisting people with mobility disorders. The cooperative use of FES and the exoskeleton allows active muscle contractions via FES while robustifying torque generation to reduce FES-induced muscle fatigue. In this paper, a switched distribution of allocation ratios between FES and electric motors in a closed-loop adaptive control design is explored for the first time. The new controller uses an iterative learning neural network (NN)-based control law to compensate for structured and unstructured parametric uncertainties in the hybrid exoskeleton model. A discrete Lyapunov-like stability analysis that uses a common energy function proves asymptotic stability for the switched system with iterative learning update laws. Five human participants, including a person with complete spinal cord injury, performed sit-to-stand tasks with the new controller. The experimental results showed that the synthesized controller, in a few iterations, reduced the root mean square error between desired positions and actual positions of the knee and hip joints by 46.20% and 53.34%, respectively. The sit-to-stand experimental results also show that the proposed NN-based iterative learning control (NNILC) approach can recover the asymptotically trajectory tracking performance despite the switching of allocation levels between FES and electric motor. Compared to a proportional-derivative controller and traditional iterative learning control, the findings showed that the new controller can potentially simplify the clinical implementation of the hybrid exoskeleton with minimal parameters tuning.

摘要

一种结合功能性电刺激(FES)和动力外骨骼的混合外骨骼是一种新兴技术,用于帮助行动不便的人。FES与外骨骼的协同使用允许通过FES实现主动肌肉收缩,同时增强扭矩生成以减少FES引起的肌肉疲劳。本文首次探索了在闭环自适应控制设计中FES与电动机之间分配比例的切换分布。新控制器使用基于迭代学习神经网络(NN)的控制律来补偿混合外骨骼模型中的结构化和非结构化参数不确定性。一种使用公共能量函数的离散类李雅普诺夫稳定性分析证明了具有迭代学习更新律的切换系统的渐近稳定性。五名人类参与者,包括一名完全脊髓损伤患者,使用新控制器进行了从坐到站的任务。实验结果表明,合成控制器在几次迭代中分别将膝关节和髋关节期望位置与实际位置之间的均方根误差降低了46.20%和53.34%。从坐到站的实验结果还表明,尽管FES和电动机之间的分配水平发生了切换,但所提出的基于NN的迭代学习控制(NNILC)方法仍能恢复渐近轨迹跟踪性能。与比例-微分控制器和传统迭代学习控制相比,研究结果表明,新控制器可以在最少参数调整的情况下潜在地简化混合外骨骼的临床应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/92ef/9560042/3c0474cf3846/nihms-1798193-f0001.jpg

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