Upper extremity assist exoskeleton robot

A. M. Khan, Deok-won Yun, Jung-Soo Han, K. Shin, Chang-Soo Han
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引用次数: 7

Abstract

Need to develop human body's posture supervised robots, gave the push to researchers to think over dexterous design of exoskeleton robots. It requires to develop quantitative techniques to assess motor function and generate the command for the robots to act accordingly with complex human structure. In this paper, we focus on developing new technique for the upper limb power exoskeleton in which load is handled by the human subject and not by the robot. Main challenge along with the design complexity is to find the desired human motion intention and to develop an algorithm to assist as needed accordingly. For this purpose, we used newly developed Muscle Circumference Sensor (MCS) instead of electromyogram (EMG) sensors. MCS together with the load cells is used to estimate the desired human intention by which desired trajectory is generated. The desired trajectory is then tracked by passivity based adaptive control technique. Developed Upper limb power exoskeleton has seven degrees of freedom (DOF) in which five are passive and two are active. Active joints include shoulder and elbow, powered by electric motors and move in Sagittal plane while abduction and adduction motion in shoulder joint is provided by the passive joint. Performance of the exoskeleton is evaluated experimentally by a neurologically intact subject. The results show that after adjusting the motion intention recognition algorithm for the subject, the robot assisted effectively and the subject only felt nominal load regardless of the weight in hand.
上肢辅助外骨骼机器人
需要开发人体姿势监督机器人,促使研究人员对外骨骼机器人的灵巧设计进行思考。它需要发展定量技术来评估运动功能,并生成指令,使机器人与复杂的人体结构相适应。在本文中,我们重点开发了上肢动力外骨骼的新技术,其中负载由人体而不是机器人处理。随着设计的复杂性,主要挑战是找到所需的人体运动意图并开发相应的算法来辅助。为此,我们使用新开发的肌围传感器(MCS)代替肌电图传感器(EMG)。MCS与称重传感器一起用于估计期望的人的意图,从而产生期望的轨迹。然后利用基于无源性的自适应控制技术对目标轨迹进行跟踪。发达的上肢动力外骨骼具有7个自由度(DOF),其中5个为被动自由度,2个为主动自由度。主动关节包括肩关节和肘关节,由电动机驱动,在矢状面运动,而肩关节的外展和内收运动由被动关节提供。外骨骼的性能由神经完整的受试者进行实验评估。实验结果表明,调整受试者的运动意图识别算法后,机器人能够有效地辅助受试者,受试者只感受到标称负载,而不考虑手中的重量。
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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