Drewing Nadine, Ahmadi Arjang, Xiong Xiaofeng, Sharbafi Maziar Ahmad
Department of Human Science, Institute of Sport, Technical University of Darmstadt, 64289 Darmstadt, Germany.
SDU Biorobotics, The Mærisk Mc-Kinney Møller Institute, University of Southern Denmark (SDU), 5230 Odense, Denmark.
Biomimetics (Basel). 2024 Nov 1;9(11):665. doi: 10.3390/biomimetics9110665.
The use of wearable assistive devices is growing in both industrial and medical fields. Combining human expertise and artificial intelligence (AI), e.g., in human-in-the-loop-optimization, is gaining popularity for adapting assistance to individuals. Amidst prevailing assertions that AI could surpass human capabilities in customizing every facet of support for human needs, our study serves as an initial step towards such claims within the context of human walking assistance. We investigated the efficacy of the Biarticular Thigh Exosuit, a device designed to aid human locomotion by mimicking the action of the hamstrings and rectus femoris muscles using Serial Elastic Actuators. Two control strategies were tested: an empirical controller based on human gait knowledge and empirical data and a control optimized using Reinforcement Learning (RL) on a neuromuscular model. The performance results of these controllers were assessed by comparing muscle activation in two assisted and two unassisted walking modes. Results showed that both controllers reduced hamstring muscle activation and improved the preferred walking speed, with the empirical controller also decreasing gastrocnemius muscle activity. However, the RL-based controller increased muscle activity in the vastus and rectus femoris, indicating that RL-based enhancements may not always improve assistance without solid empirical support.
可穿戴辅助设备在工业和医疗领域的应用都在不断增加。将人类专业知识与人工智能(AI)相结合,例如在人在回路优化中,在使辅助适应个体方面越来越受欢迎。在普遍认为人工智能在为人类需求定制支持的各个方面可能超越人类能力的情况下,我们的研究是在人类行走辅助背景下朝着此类主张迈出的第一步。我们研究了双关节大腿外骨骼套装的功效,该设备旨在通过使用串联弹性驱动器模仿腘绳肌和股直肌的动作来辅助人类运动。测试了两种控制策略:一种基于人类步态知识和经验数据的经验控制器,以及一种在神经肌肉模型上使用强化学习(RL)进行优化的控制。通过比较两种辅助行走模式和两种非辅助行走模式下的肌肉激活情况来评估这些控制器的性能结果。结果表明,两种控制器都降低了腘绳肌的肌肉激活并提高了首选步行速度,经验控制器还降低了腓肠肌的活动。然而,基于RL的控制器增加了股四头肌和股直肌的肌肉活动,这表明在没有坚实经验支持的情况下,基于RL的增强可能并不总是能改善辅助效果。