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在疲劳监测框架内对长距离跑步过程中的地面反作用力进行连续估计:基于卡尔曼滤波的模型-数据融合方法。

Continuous estimation of ground reaction force during long distance running within a fatigue monitoring framework: A Kalman filter-based model-data fusion approach.

机构信息

College of Engineering and Mathematical Sciences, Department of Civil and Environmental Engineering, University of Vermont, Burlington, VT 05405, USA.

College of Engineering and Mathematical Sciences, Department of Civil and Environmental Engineering, University of Vermont, Burlington, VT 05405, USA.

出版信息

J Biomech. 2021 Jan 22;115:110130. doi: 10.1016/j.jbiomech.2020.110130. Epub 2020 Nov 14.

Abstract

Estimation of ground reaction forces in runners has been limited to laboratory environments by means of instrumented treadmills, in-ground force plates and optoelectronic systems. Recent advances in estimation techniques using wearable sensors for kinematic analysis and sports performance could enable estimation outside the laboratory. This paper proposes a state-input-parameter estimation framework to continuously estimate the vertical ground reaction force waveform during running. By modeling a runner as a single degree of freedom mass-spring-damper with acceleration measurements at the sacrum a state-space formulation can be applied using Newtonian methods. A dual-Kalman filter is employed to estimate the unmeasured system input which feeds through to an unscented Kalman filter to estimate system dynamics and unknown model parameters (e.g. spring stiffness). For validation, 14 subjects performed three one-minute running trials at three different speeds (self-selected slow, comfortable, and fast) on a pressure-sensor-instrumented treadmill. The estimated vertical ground reaction force waveform parameters; peak vertical ground reaction force (RMSE=6.1-7.2%,ρ=0.95-0.97), vertical impulse (RMSE=8.5-13.0%,ρ=0.50-0.60), loading rate (RMSE=24.6-39.4%,ρ=0.85-0.93), and cadence RMSE<1%,ρ=1.00 were compared against the instrumented treadmill measurements. The proposed state-input-parameter estimation framework could monitor personalized vertical ground reaction force metrics for potential biofeedback applications. The feedback mechanism could provide information about the vertical ground reaction force characteristics to the runner as they are running to provide knowledge of both desirable and undesirable loading characteristics experienced.

摘要

通过使用可穿戴传感器进行运动学分析和运动表现的估计技术的最新进展,利用可穿戴传感器进行运动学分析和运动表现的估计技术的最新进展,使得在实验室之外进行估计成为可能。本文提出了一种状态-输入-参数估计框架,以连续估计跑步过程中的垂直地面反作用力波形。通过将跑步者建模为具有加速度测量的单自由度质量-弹簧-阻尼器在骶骨上,可以使用牛顿方法应用状态空间公式。采用双卡尔曼滤波器估计未测量的系统输入,该输入通过无迹卡尔曼滤波器估计系统动态和未知模型参数(例如弹簧刚度)。为了验证,14 名受试者在压力传感器安装的跑步机上以三种不同速度(自我选择的慢、舒适和快)进行了三次一分钟跑步试验。估计的垂直地面反作用力波形参数; 峰值垂直地面反作用力(RMSE=6.1-7.2%,ρ=0.95-0.97),垂直冲量(RMSE=8.5-13.0%,ρ=0.50-0.60),加载率(RMSE=24.6-39.4%,ρ=0.85-0.93)和步频 RMSE<1%,ρ=1.00)与仪器跑步机测量值进行了比较。所提出的状态-输入-参数估计框架可以监测个性化的垂直地面反作用力指标,用于潜在的生物反馈应用。反馈机制可以为跑步者提供垂直地面反作用力特征的信息,以便他们在跑步时了解理想和不理想的加载特征。

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