Using K-means Clustering to Create Training Groups for Elite American Football Student-athletes Based on Game Demands

Q3 Health Professions
Zachary Shelly, Reuben F. Burch, Wenmeng Tian, Lesley J. Strawderman, A. Piroli, Corey Bichey
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引用次数: 14

Abstract

Background: American football and the athletes that participate have continually evolved since the sport’s inception. The fluidity of the sport, as well as the growth of the body of knowledge pertaining to American football, requires evolving training techniques. While performance data is being garnered at very high rates by elite level sports organizations, the limiting factor to the value of data can be the limited known uses for the data. Objective: This study introduces a technique that can be used in tandem with data collected from wearable technology to better inform training decisions. Method: The K-means clustering technique was used to group athletes from two seasons worth of data from an NCAA Division 1 American football team that is in the “Power 5.” The data was obtained using Catapult Sports OPTIMEYE S5 TM in games played against only other “Power 5” programs. This data was then used to create average game demands of each student-athlete, which was then used to create training groups based upon individual game demands as previously mentioned. Results: The resultant groupings from the single-season analyses of seasons one and two showed results that were similar to traditional groupings used for training in American football, which worked as validation of the results, while also offering insights on individuals that may need to consider training in a non-traditional group based upon their game demands. Conclusion: This technique can be brought to `athletic training and be useful in any organization that is dealing with training multitudes of athletes.
基于比赛需求的k -均值聚类方法构建优秀美式橄榄球学生运动员训练组
背景:美式足球和参加这项运动的运动员自这项运动开始以来一直在不断发展。这项运动的流动性,以及与美式足球有关的知识体系的增长,需要不断发展的训练技术。虽然精英水平的体育组织正在以非常高的速度收集性能数据,但数据价值的限制因素可能是数据的有限已知用途。目的:本研究介绍了一种可以与可穿戴技术收集的数据结合使用的技术,以更好地为培训决策提供信息。方法:采用k -均值聚类技术对NCAA第1区美国足球队的两个赛季数据中的运动员进行分组,该球队在“力量5”中。数据是使用Catapult Sports OPTIMEYE S5 TM在与其他“Power 5”程序进行的游戏中获得的。然后使用这些数据来创建每个学生运动员的平均比赛需求,然后根据前面提到的个人比赛需求来创建训练组。结果:从第一和第二赛季的单赛季分析得出的分组结果与美式足球训练中使用的传统分组相似,这是对结果的验证,同时也为可能需要根据自己的比赛需求考虑非传统分组训练的个人提供了见解。结论:该技术可用于运动训练,对任何训练大量运动员的组织都很有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Kinesiology and Sports Science
International Journal of Kinesiology and Sports Science Health Professions-Physical Therapy, Sports Therapy and Rehabilitation
CiteScore
1.80
自引率
0.00%
发文量
7
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