外骨骼
步态
强化学习
人工智能
计算机科学
机器人学
康复机器人
步态训练
模拟
工程类
康复
机器人
物理医学与康复
物理疗法
医学
作者
Lowell Rose,Michael C. F. Bazzocchi,Goldie Nejat
出处
期刊:Robotica
[Cambridge University Press]
日期:2021-12-15
卷期号:40 (7): 2189-2214
被引量:23
标识
DOI:10.1017/s0263574721001600
摘要
Abstract Lower-body exoskeleton control that adapts to users and provides assistance-as-needed can increase user participation and motor learning and allow for more effective gait rehabilitation. Adaptive model-based control methods have previously been developed to consider a user’s interaction with an exoskeleton; however, the predefined dynamics models required are challenging to define accurately, due to the complex dynamics and nonlinearities of the human-exoskeleton interaction. Model-free deep reinforcement learning (DRL) approaches can provide accurate and robust control in robotics applications and have shown potential for lower-body exoskeletons. In this paper, we present a new model-free DRL method for end-to-end learning of desired gait patterns for over-ground gait rehabilitation with an exoskeleton. This control technique is the first to accurately track any gait pattern desired in physiotherapy without requiring a predefined dynamics model and is robust to varying post-stroke individuals’ baseline gait patterns and their interactions and perturbations. Simulated experiments of an exoskeleton paired to a musculoskeletal model show that the DRL method is robust to different post-stroke users and is able to accurately track desired gait pattern trajectories both seen and unseen in training.
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