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Task-oriented human-robot interaction control of a robotic glove utilizing forearm electromyography

•A myoelectric control architecture during an entire grasping task is realized by finite state machine.•Different grasping functions are included and realized by a single source of electromyography signals.•Different grasping types are classified by a novel LSTM networks.•The proposed task-oriented...

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Bibliographic Details
Published in:Journal of the Franklin Institute 2023-11, Vol.360 (16), p.11351-11370
Main Authors: Wang, Xianhe, Zhang, Haotian, Teng, Long, Tang, Chak Yin
Format: Article
Language:English
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Summary:•A myoelectric control architecture during an entire grasping task is realized by finite state machine.•Different grasping functions are included and realized by a single source of electromyography signals.•Different grasping types are classified by a novel LSTM networks.•The proposed task-oriented assistive control method is validated by experiments. Task-oriented myoelectric assistive control of a robotic glove based on forearm electromyography for practical grasping tasks is investigated in this work. Three grasping functions are considered: human intent detection of grasping tasks, grasping mode recognition, and grasping force control. Different combinations of forearm electromyographic signals are adopted for the three functions. Firstly, the overall electromyographic signal is used to trigger the whole grasping task. Secondly, a novel Long Short-Term Memory network is utilized to classify various grasping modes, including pinch grasping and palmar grasping, by analyzing eight-channel electromyographic signals. Thirdly, two-channel proportional control of grasping force using electromyographic flexor/extensor signals is adopted for the robotic glove such that the human hand can relax during the grasping task, while the robotic glove maintains the grasping force. To this end, finite state machine based hierarchical control architecture is proposed for the whole grasping task. Experiments are conducted to validate the proposed task-oriented assistive control method, and the results clearly demonstrates the potential of the proposed method in rehabilitation therapy.
ISSN:0016-0032
1879-2693
DOI:10.1016/j.jfranklin.2023.08.046