通过深度强化学习,在戴着膝盖矫正器的人体肌肉骨骼模型上学习行走

Omer Kayan, H. Yalcin
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引用次数: 0

摘要

膝关节矫形器旨在通过定制来治疗膝关节的问题,以实现对关节的外部支撑,保护关节,提供生物机械平衡,消除功能障碍,减轻疼痛,增强虚弱的肌肉。由于每个病例都是不同的,所以需要个别治疗。因此,在将矫形器应用于患者之前,在模拟环境中测量矫形器的性能可以提高治疗期间的效率。肌肉骨骼模型模拟允许估计矫形器将如何影响患者的运动。本文采用模仿参考步行运动的深度强化学习(DRL)方法对该模型进行了步行学习仿真。比较了健康、未佩戴矫形器的膝关节损伤、佩戴被动矫形器和佩戴主动矫形器四种不同肌肉骨骼模型的行走性能和肌肉激活情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning to Walk on a Human Musculoskeletal Model Wearing a Knee Orthosis via Deep Reinforcement Learning
Knee orthoses aim to treat problems in the knees by customizing them in order to support the joint externally, protect the joint, provide bio-mechanical balance, eliminate dysfunctions, reduce pain, and strengthen weakened muscles. Since each case is different from each other, individual treatment is required. For this reason, measuring the performance of orthoses in a simulated environment before they are applied to the patients increases efficiency during the treatment. Musculoskeletal model simulations allow estimating how the orthosis will affect the patient's motions. In this paper, the deep reinforcement learning (DRL) method, which imitates the reference walking motion, is used in simulations for the model to learn to walk. The walking performance and muscle activation of four different musculoskeletal models that are healthy, injured in the knee but not wearing an orthosis, wearing passive orthosis, and wearing active orthosis are compared.
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