Fang Shanpu, Kinney Allison L, Reissman Megan E, Reissman Timothy
IEEE Int Conf Rehabil Robot. 2019 Jun;2019:506-511. doi: 10.1109/ICORR.2019.8779459.
Exoskeletons are human-robot interfaces that have enormous potential to assist people with everyday tasks. To improve the design of exoskeletons for use in clinical populations, it is important to further our understanding of how exoskeleton design and control parameters lead to sub-optimal effectiveness. Here we simulated the effect of three factors, gait variability, wearer-exoskeleton delays, and exoskeleton inertia, have on the predicted energy assistance provided by an exoskeleton with a finite-state controller trained on a set of stroke survivors' free walking gait data. Results indicate that larger errors between the wearer's desired ankle trajectory and the exo's estimated ankle trajectory result in statistically large reductions in the actual assistance provided. Specifically lags on the order of even 10 ms can illustrate statistically sub-optimal performance. Likewise subjects that exhibit large gait variability will have a statistical reduction in actual assistance. However, reasonably low exoskeleton inertias are not significant as a factor in terms of sensitivity to wearer assistance. Therefore, to improve cooperative control algorithms for exoskeletons and achieve true assistance based on wearer induced motion, this work implies that designers should prioritize minimizing delays and wearers should train to reduce variability in order to maximize energy savings.
外骨骼是人机接口,在协助人们完成日常任务方面具有巨大潜力。为了改进用于临床人群的外骨骼设计,进一步了解外骨骼设计和控制参数如何导致效果欠佳非常重要。在此,我们模拟了三个因素,即步态变异性、穿戴者与外骨骼之间的延迟以及外骨骼惯性,对具有有限状态控制器的外骨骼所提供的预测能量辅助的影响,该控制器是根据一组中风幸存者的自由行走步态数据进行训练的。结果表明,穿戴者期望的脚踝轨迹与外骨骼估计的脚踝轨迹之间的较大误差会导致实际提供的辅助在统计上大幅减少。具体而言,即使是10毫秒量级的滞后也会显示出统计上的欠佳性能。同样,步态变异性大的受试者实际辅助也会在统计上减少。然而,就对外骨骼辅助的敏感性而言,合理较低的外骨骼惯性并非一个重要因素。因此,为了改进外骨骼的协同控制算法并基于穿戴者引发的运动实现真正的辅助,这项研究表明,设计者应优先尽量减少延迟,而穿戴者应进行训练以减少变异性,从而实现最大程度的能量节省。