Power Assist Rehabilitation Robot and Motion Intention Estimation

Zulikha Ayomikun Adeola-Bello, N. Azlan
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引用次数: 2

Abstract

This article attempts to review papers on power assist rehabilitation robots, human motion intention, control laws, and estimation of power assist rehabilitation robots based on human motion intention in recent years. This paper presents the various ways in which human motion intention in rehabilitation can be estimated. This paper also elaborates on the control laws for the estimation of motion intention of the power assist rehabilitation robot. From the review, it has been found that the motion intention estimation method includes: Artificial Intelligence-based motion intention and Model-based motion intention estimation. The controllers include hybrid force/position control, EMG control, and adaptive control. Furthermore, Artificial Intelligence based motion intention estimation can be subdivided into Electromyography (EMG), Surface Electromyography (SEMG), Extreme Learning Machine (ELM), and Electromyography-based Admittance Control (EAC). Also, Model-based motion intention estimation can be subdivided into Impedance and Admittance control interaction. Having reviewed several papers, EAC and ELM are proposed for efficient motion intention estimation under artificial-based motion intention. In future works, Impedance and Admittance control methods are suggested under model-based motion intention for efficient estimation of motion intention of power assist rehabilitation robot.  In addition, hybrid force/position control and adaptive control are suggested for the selection of control laws. The findings of this review paper can be used for developing an efficient power assist rehabilitation robot with motion intention to aid people with lower or upper limb impairment.
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动力辅助康复机器人与运动意图估计
本文对近年来关于助力康复机器人、人体运动意图、控制规律以及基于人体运动意图的助力康复机器人估计等方面的研究进行了综述。本文介绍了在康复治疗中评估人体运动意图的各种方法。本文还详细阐述了动力辅助康复机器人运动意图估计的控制规律。通过综述,我们发现运动意图估计方法包括:基于人工智能的运动意图估计和基于模型的运动意图估计。控制器包括混合力/位置控制、肌电控制和自适应控制。此外,基于人工智能的运动意图估计可细分为肌电图(EMG)、表面肌电图(SEMG)、极限学习机(ELM)和基于肌电图的导纳控制(EAC)。此外,基于模型的运动意图估计可细分为阻抗和导纳控制交互。通过对多篇文献的回顾,提出了基于人工运动意图的运动意图估计方法EAC和ELM。在未来的工作中,提出了基于模型的运动意图下的阻抗和导纳控制方法,以有效地估计动力辅助康复机器人的运动意图。在控制律的选择上,提出了力/位混合控制和自适应控制。本综述的研究结果可用于开发具有运动意图的高效动力辅助康复机器人,以帮助下肢或上肢损伤者。
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