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GPS Data Reflect Players’ Internal Load in Soccer

机译:GPS数据反映了球员在足球比赛中的内部负担

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The use of RPE as a measure of Internal load has become a common methodology used in team sports owing to its low cost. The aim of this study was to build a machine learning process able to describe the players' RPE by the external load extracted from the GPS. In this paper, we propose a multidimensional approach to assess the RPE in professional soccer which is based on GPS measurements and machine learning. By using GPS tracking technology, we collect data describing the training workload of players in a professional soccer club during a season. We show that our Ordinal predictor is both accurate and precise in medium RPE value (i.e., between 4 and 7) but it is not consistent in etreme value (i.e., below 4 and above 7). Our approach is a preliminary study that suggest that it is possible to predict players' RPE from GPS training and match data. However, these are not the only information needed to understand the players' effort perceived after a trainings or matches.
机译:由于RPE的成本较低,因此将RPE用作内部负荷的一种度量方法已成为团队运动中使用的一种常见方法。这项研究的目的是建立一个机器学习过程,该过程能够通过从GPS提取的外部负载来描述玩家的RPE。在本文中,我们提出了一种基于GPS测量和机器学习的多维方法来评估职业足球中的RPE。通过使用GPS跟踪技术,我们收集描述一个季节中专业足球俱乐部的球员训练工作量的数据。我们证明了我们的序数预测器在中等RPE值(即4至7)之间既准确又精确,但在极限值(即4以下和7以上)方面并不一致。我们的方法是一项初步研究,表明可以通过GPS训练预测比赛者的RPE并匹配数据。但是,这些并不是理解运动员在训练或比赛后的努力所需要的唯一信息。

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