Muscle activity prediction using wavelet neural network

Marzieh Mosafavizadeh, Ling Wang, Q. Lian, Yaxiong Liu, Jiankang He, Dichen Li, Zhongmin Jin
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引用次数: 5

Abstract

The purpose of this study was to develop a multi dimensional wavelet neural network (WNN) approach in order to predict human lower extremity muscle activities based on ground reaction forces (GRF) and joint angles. For this purpose, four healthy subjects were taken from a previous study. The proposed approach consisted of two main parts: 1) input variable selection (IVS) and 2) network training. First, mutual information (MI) method was used to determine nine inputs including three dimensional GRFs and six joint angles as WNN inputs to predict seven number of outputs. The network was trained based on batch descent gradient algorithm using inter subject data space which provided by leave-one-out (LOO) technique. The WNN predictions for the left-out subject were compared with inverse dynamics calculations based on root mean square error (RMSE) and its percentage as well as Pearson correlation analysis (p). Results showed that multi dimensional WNN was capable to model the highly nonlinear relationship between GRF and joint angles as inputs and muscle activities as outputs.
基于小波神经网络的肌肉活动预测
本研究的目的是建立一种基于地面反作用力(GRF)和关节角度的多维小波神经网络(WNN)方法来预测人类下肢肌肉的活动。为此,从先前的一项研究中选取了四名健康受试者。该方法包括两个主要部分:1)输入变量选择(IVS)和2)网络训练。首先,利用互信息(MI)方法确定了包括三维grf和6个关节角在内的9个输入作为WNN输入,预测了7个输出。利用留一(LOO)技术提供的主体间数据空间,基于批量下降梯度算法对网络进行训练。将WNN对被遗漏受试者的预测与基于均方根误差(RMSE)及其百分比以及Pearson相关分析(p)的逆动力学计算进行比较。结果表明,多维WNN能够模拟GRF与关节角度作为输入和肌肉活动作为输出之间的高度非线性关系。
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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