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Optimization Analysis of Tennis Players’ Physical Fitness Index Based on Data Mining and Mobile Computing

机译:基于数据挖掘和移动计算的网球运动员物理健身指数的优化分析

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Tennis is a very explosive, continuous, and intense sport, including many continuous short-term explosive actions. It has the characteristics of short-term, high-intensity, high-density training, and it belongs to the category of purely competitive skills. In the competition, athletes must maintain good physical condition, physical fitness, and long-term endurance in order to demonstrate outstanding technical and tactical skills. Therefore, this paper proposes a mobile processor performance data mining framework MobilePerfMiner, which uses hardware counters and iteratively uses the XGBoost algorithm to build a performance model, ranks the importance of the microarchitecture events of the big data task, and reduces the performance big data dimension, so as to optimize the big data algorithm according to the performance characteristics described. Undoubtedly, the comprehensive monitoring of the sports training process is complex system engineering. The main monitoring includes three aspects: physical condition, technical and tactical skills, and intelligence. Sports technology is reflected in the ultimate load. According to the convenience and actual needs of the research, this article will discuss the methods of evaluating tennis training load and the actual technical and tactical parameter characteristics that can be obtained by studying the characteristics of tennis, namely, kinematics. Parameters for noncontact testing, the next step is to discuss the appropriateness and necessity of the load, as well as the technical and routine monitoring of tennis training ability. The final experimental results show that it can improve the physical energy of tennis players by more than 17%.
机译:网球是一种非常爆炸,连续和强烈的运动,包括许多连续的短期爆炸性行动。它具有短期,高强度,高密度培训的特点,属于纯粹竞争技能的类别。在竞争中,运动员必须保持良好的身体状况,身体健康和长期耐力,以展示出色的技术和战术技能。因此,本文提出了移动处理器性能数据挖掘框架MobilePerFminer,它使用硬件计数器并迭代地使用XGBoost算法构建性能模型,对大数据任务的微校验事件的重要性排名,并降低性能大数据维度,以优化根据描述的性能特征的大数据算法。毫无疑问,体育培训过程的全面监测是复杂的系统工程。主要监测包括三个方面:物理条件,技术和战术技能和智力。体育技术反映在终极载荷中。根据研究的便利性和实际需求,本文将讨论通过研究网球的特征,即运动学来评估网球训练负荷和实际技术和战术参数特征的方法。非接触式测试的参数,下一步是讨论负载的适当性和必要性,以及网球训练能力的技术和常规监测。最后的实验结果表明,它可以将网球运动员的物理能源提高超过17%以上。

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