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用于编码关节动力学的生物力学模型:在仿生大腿假肢控制中的应用。

A biomechanical model for encoding joint dynamics: applications to transfemoral prosthesis control.

机构信息

Institute of Biomedical Engineering and Faculty of Kinesiology, University of New Brunswick, Fredericton, New Brunswick, Canada.

出版信息

J Appl Physiol (1985). 2012 May;112(9):1600-11. doi: 10.1152/japplphysiol.01251.2011. Epub 2012 Jan 26.

Abstract

This paper presents and tests a framework for encoding joint dynamics into energy states using kinematic and kinetic knee joint sensor data and demonstrates how to use this information to predict the future energy state (torque and velocity requirements) of the joint without a priori knowledge of the activity sequence. The intended application is for enhancing micro-controlled prosthetics by making use of the embedded sensory potential of artificial limbs and classical mechanical principles of a prosthetic joint to report instantaneous energy state and most probable next energy state. When applied to the knee during preferred and fast speed walking in 8 human subjects (66 preferred-speed trials and 50 fast-speed trials), it was found that joint energy states could be consistently sequenced (75% consensus) according to mechanical energy transference conditions and subsequences appeared to reflect the stability and energy dissipation requirements of the knee during gait. When simple constraints were applied to the energy transfer input conditions (their signs), simulations indicated that it was possible to predict the future energy state with an accuracy of >80% when 2% cycle in advance (∼20 ms) of the switch and >60% for 4% (∼40 ms) in advance. This study justifies future research to explore whether this encoding algorithm can be used to identify submodes of other human activity that are relevant to TFP control, such as chair and stair activities and their transitions from walking, as well as unexpected perturbations.

摘要

本文提出并测试了一种使用运动学和动力学膝关节传感器数据将关节动力学编码为能量状态的框架,并演示了如何在没有活动序列先验知识的情况下,利用这些信息来预测关节的未来能量状态(扭矩和速度要求)。预期的应用是通过利用人工假肢的嵌入式传感潜力和假肢关节的经典机械原理来增强微控制假肢,以报告关节的瞬时能量状态和最可能的下一个能量状态。当应用于 8 名人类受试者在正常速度和快速速度行走时的膝关节(66 次正常速度试验和 50 次快速速度试验)时,发现可以根据机械能传递条件一致地对关节能量状态进行排序(75%的一致性),并且子序列似乎反映了步态期间膝关节的稳定性和能量耗散要求。当对能量传递输入条件(其符号)施加简单约束时,模拟表明,当提前 2%(约 20 毫秒)开关时,未来能量状态的预测准确率>80%,提前 4%(约 40 毫秒)时>60%。这项研究证明了未来研究的合理性,以探索这种编码算法是否可以用于识别与 TFP 控制相关的其他人类活动的子模式,例如椅子和楼梯活动及其从行走的过渡,以及意外的干扰。

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