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Cascaded evolutionary multiobjective identification based on correlation function statistical tests for improving velocity analyzes in swimming

机译:基于相关函数统计检验的级联进化多目标辨识提高游泳速度分析

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By using biomechanical analyses applied to sports many researchers are providing important information to coaches and athletes in order to reach better performance in a shorter time. In swimming, these kinds of analyses are being used to evaluate, to detect and to improve the skills of high level athletes. Recently, evolutionary computing theories have been adopted to support swim velocity profile identification. Based on velocity profiles recognition, it is possible to identify distinct characteristics and classify swimmers according to their abilities. In this way, this work presents an application of Radial Basis Function Neural Network (RBF-NN) associated to a proposed cascaded evolutionary procedure composed by a genetic and Multiobjective Differential Evolution (MODE) algorithms as optimization method for searching the best fitness within a set of parameters to configure the RBF-NN. The main goal and novelty of the proposed approach is to enable, through the adoption of cascaded multiobjective optimization, the use of correlation based tests in order to select both the model lagged inputs and the associated parameters in a supervised fashion. Finally, the real data of a Brazilian elite female swimmer in crawl and breaststroke styles obtained into a 25 meters swimming pool have been identified by the proposed method. The soundness of the approach is illustrated with the adherence to the model validity tests and the values of the multiple correlation coefficients between 0.95 and 0.93 for two tests for both breaststroke and crawl strokes, respectively.
机译:通过使用应用于体育运动的生物力学分析,许多研究人员正在向教练和运动员提供重要信息,以便在较短的时间内达到更好的表现。在游泳中,这些分析用于评估,检测和提高高水平运动员的技能。最近,进化计算理论已被采用来支持游泳速度轮廓识别。基于速度轮廓识别,可以识别不同的特征并根据游泳者的能力对其进行分类。通过这种方式,这项工作提出了与拟议的由遗传和多目标差分进化(MODE)算法组成的级联进化过程相关的径向基函数神经网络(RBF-NN)的应用,作为在一组内搜索最佳适应度的优化方法。配置RBF-NN的参数。所提出方法的主要目标和新颖性是通过采用级联多目标优化来实现基于相关性的测试,以便以监督方式选择模型滞后输入和相关参数。最后,通过拟议的方法已经确定了巴西精英女子游泳运动员在25米长的游泳池中获得的蛙泳和蛙泳风格的真实数据。坚持模型有效性测试,并分别针对蛙泳和爬泳两个测试,在0.95和0.93之间的多重相关系数值说明了该方法的正确性。

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