Identifying Key Training Load and Intensity Indicators in Ice Hockey Using Unsupervised Machine Learning.

Vincenzo Rago, Tiago Fernandes, Magni Mohr
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Abstract

To identify key training load (TL) and intensity indicators in ice hockey, practice, and game data were collected using a wearable 200-Hz accelerometer and heart rate (HR) recording throughout a four-week (29 days) competitive period (23 practice sessions and 8 competitive games in 17 elite Danish players (n = 427 observations). Within-individual correlations among accelerometer- (total accelerations [Acctot], accelerations >2 m·s-2 [Acc2], total accelerations [Dectot], decelerations <- 2 m·s-2 [Dec2]), among HR-derived (time >85% maximum HR [t85%HRmax], Edwards' TL and modified training impulse) TL indicators, and between acceleration- and HR-derived TL parameters were large to almost perfect (r = 0.69-0.99). No significant correlations were observed between accelerometer- and HR-derived intensity indicators. Three between- and two within-components were found. The K-means++ cluster analysis revealed five and four clusters for between- and within-loadings, respectively. The least Euclidean distance from their centroid for each cluster was reported by session-duration, Acctot, Dec2, TRIMPMOD, %t85HRmax for between-loadings, whereas session-duration, Acc2, t85HRmax and Dec2/min for within-loadings. Specific TL or intensity variables might be relevant to identify similar between-subject groups (e.g. individual player, playing positions), or temporal patterns (e.g. changes in TL or intensity over time). Our study provides insights about the redundancy associated with the use of multiple TL and intensity variables in ice hockey.

利用无监督机器学习识别冰球关键训练负荷和强度指标
为了确定冰上曲棍球的关键训练负荷(TL)和强度指标,我们在为期四周(29 天)的比赛期间,使用可穿戴式 200 赫兹加速度计和心率(HR)记录仪收集了训练和比赛数据(17 名丹麦精英球员参加了 23 次训练课和 8 场比赛(n = 427 次观察))。加速度计(总加速度 [Acctot]、加速度 >2 m-s-2 [Acc2]、总加速度 [Dectot]、减速度 -2 [Dec2])之间、心率衍生(最大心率 >85% 的时间 [t85%HRmax]、爱德华兹 TL 和修正训练冲量)TL 指标之间以及加速度和心率衍生 TL 参数之间的个体内相关性很大,几乎达到完美(r = 0.69-0.99)。在加速度计和心率衍生强度指标之间没有观察到明显的相关性。发现了三个间成分和两个内成分。K-means++ 聚类分析显示,负荷间和负荷内分别有五个和四个聚类。每个聚类的中心点与每个聚类的最小欧几里得距离分别为:负荷间的会话持续时间、Acctot、Dec2、TRIMPMOD、%t85HRmax,而负荷内的会话持续时间、Acc2、t85HRmax 和 Dec2/min。特定的 TL 或强度变量可能与识别相似的受试者群体(如球员个人、比赛位置)或时间模式(如 TL 或强度随时间的变化)有关。我们的研究为冰上曲棍球运动中使用多个 TL 和强度变量的相关冗余提供了见解。
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