自动赛艇项目分配:一种机器学习方法。

IF 2 3区 医学 Q3 ENGINEERING, BIOMEDICAL
Yumeng Li, Rachel M Koldenhoven, Nigel C Jiwan, Jieyun Zhan, Ting Liu
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引用次数: 0

摘要

该研究的目的是使用机器学习模型,根据赛艇运动员的人口统计数据和赛艇运动学,将他们分配到不同的赛艇项目中。来自中国国家赛艇队的55名优秀运动员参加了比赛,每人被要求在赛艇计力器上以18、26和32次/分钟的三种划桨速度划一分钟。采用惯性测量单元系统采集躯干和上臂的三维运动学,采样率为100 Hz。生成躯干和上臂节段和关节的运动范围。采用矢量编码方法对躯干段和上臂运动协调性进行分析。使用收集的人口统计学和运动学数据训练了六个有监督的机器学习模型,以分类赛艇组(即八人组和单人/双人组)。机器学习模型成功地对赛艇组进行了分类,其中表现最好的模型(决策树、极端梯度增强和随机森林)获得了很高的分类性能(准确率= 0.89-0.93)。由机器学习自动化的赛艇项目分配可以帮助教练做出更明智、更客观的决定。通过最大限度地减少主观偏见,这种方法提高了运动员选拔过程的准确性和公平性,从而有可能优化团队组成和表现结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated rowing event assignment: a machine learning approach.

The purpose of the study was to assign rowers to different rowing events based on their demographics and rowing kinematics using machine learning models. A total of 55 elite athletes from the Chinese National Rowing Team participated, each instructed to row on a rowing ergometer for one minute at three stroke rates: 18, 26, and 32 strokes/min. Trunk and upper arm 3D kinematics were collected using an inertia measurement unit system at a sampling rate of 100 Hz. Trunk and upper arm segmental and joint range of motion were generated. Trunk segments and upper arm motion coordination were analysed using the vector coding method. Six supervised machine learning models were trained using the collected demographics and kinematic data to classify rowers' groups (i.e. coxed eight and single/pair event group). The machine learning models successfully classified rowers' groups, with the top-performing models (decision tree, extreme gradient boosting, and random forest) achieving high classification performance (accurate rate = 0.89-0.93). The rowing event assignment automated by machine learning may help coaches make more informed and objective decisions. By minimising subjective biases, this approach enhances the accuracy and fairness of athlete selection processes, thereby potentially optimising team composition and performance outcomes.

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来源期刊
Sports Biomechanics
Sports Biomechanics 医学-工程:生物医学
CiteScore
5.70
自引率
9.10%
发文量
135
审稿时长
>12 weeks
期刊介绍: Sports Biomechanics is the Thomson Reuters listed scientific journal of the International Society of Biomechanics in Sports (ISBS). The journal sets out to generate knowledge to improve human performance and reduce the incidence of injury, and to communicate this knowledge to scientists, coaches, clinicians, teachers, and participants. The target performance realms include not only the conventional areas of sports and exercise, but also fundamental motor skills and other highly specialized human movements such as dance (both sport and artistic). Sports Biomechanics is unique in its emphasis on a broad biomechanical spectrum of human performance including, but not limited to, technique, skill acquisition, training, strength and conditioning, exercise, coaching, teaching, equipment, modeling and simulation, measurement, and injury prevention and rehabilitation. As well as maintaining scientific rigour, there is a strong editorial emphasis on ''reader friendliness''. By emphasising the practical implications and applications of research, the journal seeks to benefit practitioners directly. Sports Biomechanics publishes papers in four sections: Original Research, Reviews, Teaching, and Methods and Theoretical Perspectives.
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