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Characterization of In-season Elite Football Trainings by GPS Features: The Identity Card of a Short-Term Football Training Cycle

机译:通过GPS功能表征赛季精英足球训练:短期足球训练周期的身份证

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Football training periodization is widely acknowledged as crucial to obtain the best performance throughout matches and to reduce the risk of injuries. Thus, the aim of this study is to detect the in-season short-term training cycles in an Italian elite football team. 80 trainings of 26 elite football players were monitored during 23 in-season weeks by a global position system (GPS). Machine learning process and autocorrelation analyses were performed in order to detect pattern inside in-season football trainings. Extra tree random forest classifier (ETRFC) was used to create a supervised machine learning process able to describe the football trainings cycle. This analytical model allows us to produce reliable decisions and results learning from historical relationships and trends in the data. In addition, the autocorrelation analysis allows us to detect similarity between observations between the data. Based on these analysis, it was found that the in-season football trainings are characterized by a series of short-term cycles. This kind of periodization follows a sinusoidal model because the short-term cycle detected in the in-season trainings is composed of two parts with different training loads. In particular, in the days long before the match football players perform higher training loads than in the close ones. To enhance performance and reduce risk of injuries, it would be essential to provide correct stimuli in each short-term cycle per day. Thus, developing a valid method able to define the correct training loads in each training day may be central for coaches and athletic trainers to periodize correctly the football trainings.
机译:足球训练期限被广泛承认,在整个比赛中获得最佳表现并降低伤害的风险至关重要。因此,本研究的目的是检测意大利精英足球队中的季节短期训练周期。通过全球地位系统(GPS)在23周内监测80名精英足球运动员的培训。进行机器学习过程和自相关分析,以便检测季季境季节足球培训的模式。额外的树随机森林分类器(ETRFC)用于创建一个能够描述足球培训周期的监督机器学习过程。该分析模型使我们能够从数据的历史关系和趋势中产生可靠的决策和结果。此外,自相关分析允许我们检测数据之间观察之间的相似性。基于这些分析,发现季节性足球培训的特点是一系列短期循环。这种阶段遵循正弦模型,因为在季节训练中检测到的短期周期由两个具有不同训练载荷的两部分组成。特别是,在比赛前的日子里,比赛足球运动员比在关闭中的训练负荷上进行更高的训练负荷。为了提高性能并降低伤害的风险,必须在每天的每次短期周期中提供正确的刺激。因此,开发一种能够在每个训练日中定义正确训练负荷的有效方法可能是教练和运动训练师的核心,以便正确地训练足球培训。

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