Varotto C, Sawacha Z, Gizzi L, Farina D, Sartori M
IEEE Int Conf Rehabil Robot. 2017 Jul;2017:364-368. doi: 10.1109/ICORR.2017.8009274.
This work aims at estimating the musculoskeletal forces acting in the human lower extremity during locomotion on rough terrains. We employ computational models of the human neuro-musculoskeletal system that are informed by multi-modal movement data including foot-ground reaction forces, 3D marker trajectories and lower extremity electromyograms (EMG). Data were recorded from one healthy subject locomoting on rough grounds realized using foam rubber blocks of different heights. Blocks arrangement was randomized across all locomotion trials to prevent adaptation to specific ground morphology. Data were used to generate subject-specific models that matched an individual's anthropometry and force-generating capacity. EMGs enabled capturing subject- and ground-specific muscle activation patterns employed for walking on the rough grounds. This allowed integrating realistic activation patterns in the forward dynamic simulations of the musculoskeletal system. The ability to accurately predict the joint mechanical forces necessary to walk on different terrains have implications for our understanding of human movement but also for developing intuitive human machine interfaces for wearable exoskeletons or prosthetic limbs that can seamlessly adapt to different mechanical demands matching biological limb performance.
这项工作旨在估计在崎岖地形上行走时作用于人体下肢的肌肉骨骼力。我们采用人类神经肌肉骨骼系统的计算模型,这些模型由多模态运动数据提供信息,包括足-地反作用力、三维标记轨迹和下肢肌电图(EMG)。数据来自一名健康受试者,该受试者在使用不同高度的泡沫橡胶块模拟的崎岖地面上行走。在所有行走试验中,障碍物的排列是随机的,以防止受试者适应特定的地面形态。这些数据被用于生成与个体人体测量学和力量产生能力相匹配的个体特异性模型。肌电图能够捕捉在崎岖地面上行走时受试者特定和地面特定的肌肉激活模式。这使得在肌肉骨骼系统的正向动力学模拟中能够整合实际的激活模式。准确预测在不同地形上行走所需的关节机械力的能力,不仅有助于我们理解人类运动,还有助于开发直观的人机界面,用于可穿戴外骨骼或假肢,使其能够无缝适应不同的机械需求,匹配生物肢体的性能。