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Wavelet neural network approach applied to biomechanics of swimming

机译:小波神经网络方法应用于游泳的生物力学

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An artificial neural network (ANN) consists of a number of interconnecting artificial neurons and employs mathematical or computational models for information processing. ANNs are suitable for handling large amounts of dynamic, noisy and nonlinear data. On the other hand, the wavelet theory provides a multi-resolution approximation for discriminate functions. The combination of the wavelet transforms theory with the basic concept of ANNs leads to new mapping networks called wavelet neural networks (WNNs) or wavenets, which are proposed as an alternative to feedforward ANNs for approximating arbitrary nonlinear functions. Generalized from radial basis function ANNs, WNNs are in fact feed-forward neural networks with one hidden layer, radial wavelets as activation functions in the hidden nodes and a linear output layer. The contribution of this paper is to evaluate the WNNs to model a parathlete swimmer behavior. The parathlete swimmer swims the breaststroke style using biomechanics data generated by the software tool called SWUMSUIT, which was developed in Tokyo Technological Institute in Japan. The forecasted results clearly show that WNN has good prediction properties. The proposed WNN modeling approach can benefit disabled swimmers (parathletes) to gain competitive advantage by studying the biomechanics involved in the sport and considering the help of simulations systems.
机译:人工神经网络(ANN)包括许多互连的人工神经元,并采用用于信息处理的数学或计算模型。 ANNS适用于处理大量动态,嘈杂和非线性数据。另一方面,小波理论提供了用于区分功能的多分辨率近似。小波变换理论与ANNS的基本概念的组合导致新的映射网络称为小波神经网络(WNN)或波形,这被提出为用于近似任意非线性功能的前馈ANN的替代方案。从径向基函数ANN广泛化,WNNS实际上是具有一个隐藏层的前馈神经网络,径向小波作为隐藏节点中的激活功能和线性输出层。本文的贡献是评估WNNS以模拟爬行物游泳运动行为。 Parathlete Swimmer使用由软件工具产生的生物力学数据游泳蛙泳风格,这些数据是在日本东京技术研究所开发的软件工具产生的生物力学数据。预测结果清楚地表明WNN具有良好的预测特性。拟议的WNN建模方法可以通过研究体育中涉及的生物力学并考虑模拟系统的帮助来利用残疾的游泳者(ParAllles)来获得竞争优势。

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