Carton-Llorente Antonio, Lozano Demetrio, Gilart Iglesias Virgilio, Jorquera Diego Marcos, Manchado Carmen
Universidad San Jorge, Autov A23 km 299, 50830 Villanueva de Gállego, (Zaragoza), Spain.
Department of Computer Science and Technology, Polytechnic School, University of Alicante, 03690 San Vicente del Raspeig, Spain.
Biol Sport. 2023 Oct;40(4):1219-1227. doi: 10.5114/biolsport.2023.126665. Epub 2023 Sep 27.
The physical demands of intermittent sports require a preparation based, by definition, on high-intensity actions and variable recovery periods. Innovative local positioning systems make it possible to track players during matches and collect their distance, speed, and acceleration data. The purpose of this study was to describe the worst-case scenarios of high-performance handball players within 5-minute periods and per playing position. The sample was composed of 180 players (27 goalkeepers, 44 wings, 56 backs, 23 centre backs and 30 line players) belonging to the first eight highest ranked teams participating in the European Men's Handball Championship held in January 2022. They were followed during the 28 matches they played through a local positioning system worn on their upper bodies. Total and high-speed distance covered (m), pace (m/min), player load (a.u.) and high-intensity accelerations and decelerations (n) were recorded for the twelve 5-min periods of each match. Data on full-time player average and peak demands were included in the analysis according to each playing position. A systematic three-phase analysis process was designed: 1) information capture of match activities and context through sensor networks, the LPS system, and WebScraping techniques; 2) information processing based on big data analytics; 3) extraction of results based on a descriptive analytics approach. The descriptive cross-sectional study of worst-case scenarios revealed an 17% increment in total distance covered and pace, with a distinct ~51% spike in high-intensity actions. Significant differences between playing positions were found, with effect sizes ranging from moderate to very large (0.7-5.1). Line players, in particular, showed a lower running pace peak (10 m/min) and wings ran longer distances at high speed (> 4.4 m/s) than the rest of the field players (~76 m). The worst-case scenario assessment of handball player locomotion demands will help handball coaches and physical trainers to design tasks that replicate these crucial match moments, thus improving performance based on a position-specific approach.
间歇性运动对身体的要求,从定义上来说,需要基于高强度动作和可变恢复期进行准备。创新的局部定位系统使在比赛期间跟踪球员并收集他们的距离、速度和加速度数据成为可能。本研究的目的是描述高水平手球运动员在5分钟时间段内以及每个比赛位置的最坏情况场景。样本由180名球员组成(27名守门员、44名边锋、56名后卫、23名中后卫和30名前锋),他们来自参加2022年1月举行的欧洲男子手球锦标赛排名前八的球队。在他们参加的28场比赛中,通过佩戴在上半身的局部定位系统对他们进行跟踪。记录每场比赛的12个5分钟时间段内的总距离和高速距离(米)、步速(米/分钟)、球员负荷(任意单位)以及高强度加速和减速次数(次)。根据每个比赛位置,将全职球员平均和峰值需求的数据纳入分析。设计了一个系统的三阶段分析过程:1)通过传感器网络、局部定位系统和网络爬虫技术捕获比赛活动和背景信息;2)基于大数据分析进行信息处理;3)基于描述性分析方法提取结果。对最坏情况场景的描述性横断面研究显示,总距离和步速增加了约17%,高强度动作显著增加了约51%。发现比赛位置之间存在显著差异,效应大小从中度到非常大(0.7 - 5.1)不等。特别是前锋的跑步步速峰值较低(约10米/分钟),边锋在高速(>4.4米/秒)下跑的距离比其他场上球员长(约76米)。对手球运动员运动需求的最坏情况场景评估将有助于手球教练和体能教练设计能够模拟这些关键比赛时刻的训练任务,从而基于特定位置的方法提高表现。