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首页> 外文期刊>Journal of Biomechanics >Estimation of vertical ground reaction force during running using neural network model and uniaxial accelerometer
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Estimation of vertical ground reaction force during running using neural network model and uniaxial accelerometer

机译:利用神经网络模型和单轴加速度计垂直地反作用力估计

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摘要

Wearable technology has been viewed as one of the plausible alternatives to capture human motion in an unconstrained environment, especially during running. However, existing methods require kinematic and kinetic measurements of human body segments and can be complicated. This paper investigates the use of neural network model (NN) and accelerometer to estimate vertical ground reaction force (VGRF). An experimental study was conducted to collect sufficient samples for training, validation and testing. The estimated results were compared with VGRF measured using an instrumented treadmill. The estimates yielded an average root mean square error of less than 0.017 of the body weight (BW) and a cross-correlation coefficient greater than 0.99. The results also demonstrated that NN could estimate impact force and active force with average errors ranging between 0.10 and 0.18 of BW at different running speeds. Using NN and uniaxial accelerometer can (1) simplify the estimation of VGRF, (2) reduce the computational requirement and (3) reduce the necessity of multiple wearable sensors to obtain relevant parameters. (C) 2018 Elsevier Ltd. All rights reserved.
机译:可穿戴技术已被视为一个可粘性的替代品之一,以捕捉在不受约束的环境中的人类运动,特别是在跑步期间。然而,现有方法需要人体段的运动和动力学测量,并且可以复杂。本文研究了神经网络模型(NN)和加速度计来估计垂直地反作用力(VGRF)。进行实验研究以收集足够的样品进行培训,验证和测试。将估计的结果与使用仪表跑步机测量的VGRF进行比较。估计产生的平均根部均方误差小于体重(BW)的0.017,并且互相关系数大于0.99。结果还表明,NN可以估计冲击力和主动力,其平均误差在不同的运行速度下的BW 0.10和0.18之间。使用NN和单轴加速度计CAN(1)简化VGRF的估计,(2)减少计算要求和(3)降低多个可穿戴传感器的必要性以获得相关参数。 (c)2018年elestvier有限公司保留所有权利。

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