Modeling preference time in middle distance triathlons

Iztok Fister, A. Iglesias, S. Deb, D. Fister, Iztok Fister
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引用次数: 2

Abstract

Modeling preference time in triathlons means predicting the intermediate times of particular sports disciplines by a given overall finish time in a specific triathlon course for the athlete with the known personal best result. This is a hard task for athletes and sport trainers due to a lot of different factors that need to be taken into account, e.g., athlete's abilities, health, mental preparations and even their current sports form. So far, this process was calculated manually without any specific software tools or using the artificial intelligence. This paper presents the new solution for modeling preference time in middle distance triathlons based on particle swarm optimization algorithm and archive of existing sports results. Initial results are presented, which suggest the usefulness of proposed approach, while remarks for future improvements and use are also emphasized.
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中距离铁人三项运动员偏好时间的建模
在铁人三项中建立偏好时间模型,意味着根据已知个人最佳成绩的运动员在特定铁人三项课程中给定的总完成时间,预测特定运动项目的中间时间。这对运动员和运动教练来说是一项艰巨的任务,因为需要考虑很多不同的因素,例如运动员的能力、健康状况、心理准备,甚至他们目前的运动形式。到目前为止,这个过程是手动计算的,没有任何特定的软件工具或使用人工智能。本文提出了一种基于粒子群优化算法和现有运动成绩存档的中距离铁人三项运动偏好时间建模新方法。提出了初步结果,表明所建议的方法是有用的,同时也强调了今后改进和使用的意见。
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