Optimizing Team Sport Training With Multi-Objective Evolutionary Computation

M. Connor, David Fagan, B. Watters, F. McCaffery, Michael O'Neill
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引用次数: 1

Abstract

Abstract This research introduces a new novel method for mathematically optimizing team sport training models to enhance two measures of athletic performance using an evolutionary computation based approach. A common training load model, consisting of daily training load prescriptions, was optimized using an evolutionary multi-objective algorithm to produce improvements in the mean match-day running intensity across a competitive season. The optimized training model was then compared to real-world observed training and performance data to assess the potential improvements in performance that could be achieved. The results demonstrated that it is possible to increase and maintain a stable level of match-day running performance across a competitive season whilst adhering to model-based and real-world constraints, using an intelligently optimized training design compared a to standard human design, across multiple performance criteria (BF+0 = 5651, BF+0 = 11803). This work demonstrates the value of evolutionary algorithms to design and optimize team sport training models and provides support staff with an effective decision support system to plan and prescribe optimal strategies to enhance in-season athlete performance.
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基于多目标进化计算的团队运动训练优化
摘要:本文提出了一种基于进化计算的团队运动训练模型数学优化的新方法,以提高运动成绩的两个指标。使用进化多目标算法优化由日常训练负荷处方组成的常见训练负荷模型,以提高整个比赛赛季的平均比赛日跑步强度。然后将优化的训练模型与实际观察到的训练和性能数据进行比较,以评估可能实现的性能改进。结果表明,在坚持基于模型和现实世界的约束的同时,在多个性能标准(BF+0 = 5651, BF+0 = 11803)下,使用智能优化的训练设计,与标准的人类设计相比,在竞争赛季中增加并保持稳定的比赛日运行性能水平是可能的。这项工作证明了进化算法在设计和优化团队运动训练模型方面的价值,并为支持人员提供了一个有效的决策支持系统,以规划和规定最佳策略,以提高运动员在赛季中的表现。
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来源期刊
International Journal of Computer Science in Sport
International Journal of Computer Science in Sport Computer Science-Computer Science (all)
CiteScore
2.20
自引率
0.00%
发文量
4
审稿时长
12 weeks
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