2022
DOI: 10.3389/fnbot.2022.1068706
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Continuous mode adaptation for cable-driven rehabilitation robot using reinforcement learning

Abstract: Continuous mode adaptation is very important and useful to satisfy the different user rehabilitation needs and improve human–robot interaction (HRI) performance for rehabilitation robots. Hence, we propose a reinforcement-learning-based optimal admittance control (RLOAC) strategy for a cable-driven rehabilitation robot (CDRR), which can realize continuous mode adaptation between passive and active working mode. To obviate the requirement of the knowledge of human and robot dynamics model, a reinforcement learn… Show more

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References 45 publications
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