Gait Event Detection with Proprioceptive Force Sensing in a Powered Knee-Ankle Prosthesis: Validation over Walking Speeds and Slopes.

Emily G Keller, Curt A Laubscher, Robert D Gregg
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Abstract

Many powered prosthetic devices use load cells to detect ground interaction forces and gait events. These sensors introduce additional weight and cost in the device. Recent proprioceptive actuators enable an algebraic relationship between actuator torques and ground contact forces. This paper presents a proprioceptive force sensing paradigm which estimates ground reaction forces as a solution to detect gait events without a load cell. A floating body dynamic model is obtained with constraints at the center of pressure representing foot-ground interaction. Constraint forces are derived to estimate ground reaction forces and subsequently timing of gait events. A treadmill experiment is conducted with a powered knee-ankle prosthesis used by an able-bodied subject walking at various speeds and slopes. Results show accurate gait event timing, with pooled data showing heel strike detection lagging by only 6.7 ± 7.2 ms and toe off detection leading by 30.4 ± 11.0 ms compared to values obtained from the load cell. These results establish proof of concept for predicting gait events without a load cell in powered prostheses with proprioceptive actuators.

动力膝踝关节假体步态事件的本体感觉力检测:在步行速度和坡度上的验证。
许多动力假肢设备使用称重传感器来检测地面相互作用力和步态事件。这些传感器在设备中引入了额外的重量和成本。最近的本体感觉致动器能够实现致动器扭矩和地面接触力之间的代数关系。本文提出了一种本体感觉力传感范式,该范式估计地面反作用力,作为在没有称重传感器的情况下检测步态事件的解决方案。获得了一个浮体动力学模型,该模型在压力中心具有表示脚-地相互作用的约束条件。推导出约束力以估计地面反作用力以及随后步态事件的时间。一项跑步机实验是用一个身体健全的受试者以不同的速度和坡度行走时使用的电动膝踝关节假体进行的。结果显示步态事件的时间准确,汇总数据显示,与测压元件获得的值相比,脚跟撞击检测仅滞后6.7±7.2 ms,脚趾脱落检测领先30.4±11.0 ms。这些结果为在没有测压元件的情况下预测具有本体感觉致动器的动力假肢中的步态事件建立了概念验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
6.80
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