首页> 外文会议>International Symposium on Biomechanics in Sports vol.2; 20050822-27; Beijing(CN) >NEURAL NETWORK USED FOR THE PREDICTION OF JOINT TORQUE FROM GROUND REACTION FORCE DURING COUNTER-MOVEMENT JUMP AND SQUAT JUMP
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NEURAL NETWORK USED FOR THE PREDICTION OF JOINT TORQUE FROM GROUND REACTION FORCE DURING COUNTER-MOVEMENT JUMP AND SQUAT JUMP

机译:神经网络,用于在反运动跳跃和蹲跳过程中根据地面反应力预测关节扭矩

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摘要

The purpose of this study was to develop an artificial neural network (ANN) for predicting the joint torque of lower limb using solely the ground reaction force (GRF) parameters for counter-movement jump (CMJ) and squat jump (SJ). Ten sport students performed CMJ and SJ on force plate, meanwhile the kinematic data were recorded and the joint torque were calculated as experimental data by inverse dynamics. We used a fully-connected, feed-forward network comprised of one input layer, one hidden layer and one output layer trained by back propagation using Steepest Descent Method. The input parameters of ANN were relevant time variables of GRF measurement and the output parameters were joint torque. The results revealed that the ANN model fitted the experimental data well indicating that the model developed in this study is feasible in the assessment of joint torque for CMJ and SJ.
机译:这项研究的目的是开发一个人工神经网络(ANN),仅使用地面反作用力(CMJ)和下蹲跳动(SJ)的地面反作用力(GRF)参数来预测下肢的关节扭矩。 10名体育专业学生在力板上进行了CMJ和SJ运动,同时记录了运动学数据,并通过逆动力学计算了联合扭矩作为实验数据。我们使用了一个完全连接的前馈网络,该网络由一个输入层,一个隐藏层和一个输出层组成,并使用最速下降法进行反向传播训练。 ANN的输入参数是GRF测量的相关时间变量,输出参数是关节扭矩。结果表明,人工神经网络模型很好地拟合了实验数据,表明本研究开发的模型对于评估CMJ和SJ的联合扭矩是可行的。

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