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首页> 外文期刊>Journal of Biomechanics >Lower extremity joint torque predicted by using artificial neural network during vertical jump.
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Lower extremity joint torque predicted by using artificial neural network during vertical jump.

机译:下肢关节扭矩在垂直跳跃过程中通过人工神经网络预测。

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摘要

The purpose of this study was to develop an artificial neural network (ANN) for predicting lower extremity joint torques using the ground reaction force (GRF) and related parameters derived by the GRF during counter-movement jump (CMJ) and squat jump (SJ). Ten student athletes performed CMJ and SJ. Force plate and kinematic data were recorded. Joint torques were calculated using inverse dynamics and ANN. We used a fully connected, feed-forward network. The network comprised of one input layer, one hidden layer and one output layer. It was trained by error back-propagation algorithm using Steepest Descent Method. Input parameters of the ANN were GRF measurements and related parameters. Output parameters were three lower extremity joint torques. ANN model fitted well with the results of the inverse dynamics output. Our observations indicate that the model developed in this study can be used to estimate three lower extremity joint torques for CMJ and SJ based on ground reaction force data and related parameters.
机译:这项研究的目的是建立一个人工神经网络(ANN),利用地面反作用力(GRF)和在反运动跳跃(CMJ)和下蹲跳跃(SJ)时由GRF导出的相关参数来预测下肢关节扭矩。 。十名学生运动员表演了CMJ和SJ。记录了测力板和运动学数据。使用逆动力学和ANN计算接头扭矩。我们使用了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。使用最速下降法通过误差反向传播算法进行了训练。人工神经网络的输入参数是GRF测量和相关参数。输出参数为三个下肢关节扭矩。人工神经网络模型非常适合逆动力学输出的结果。我们的观察表明,本研究开发的模型可用于基于地面反作用力数据和相关参数来估计CMJ和SJ的三个下肢关节扭矩。

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