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

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...

Full description

Bibliographic Details
Main Authors: Shoudong Zhang, Huaqing Mao
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Wireless Communications and Mobile Computing
Online Access:http://dx.doi.org/10.1155/2021/9838477
id doaj-661603959e3b4122b8de3a6b744b3795
record_format Article
spelling doaj-661603959e3b4122b8de3a6b744b37952021-06-14T00:16:54ZengHindawi-WileyWireless Communications and Mobile Computing1530-86772021-01-01202110.1155/2021/9838477Optimization Analysis of Tennis Players’ Physical Fitness Index Based on Data Mining and Mobile ComputingShoudong Zhang0Huaqing Mao1Sports DepartmentSchool of Computer EngineeringTennis 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%.http://dx.doi.org/10.1155/2021/9838477
collection DOAJ
language English
format Article
sources DOAJ
author Shoudong Zhang
Huaqing Mao
spellingShingle Shoudong Zhang
Huaqing Mao
Optimization Analysis of Tennis Players’ Physical Fitness Index Based on Data Mining and Mobile Computing
Wireless Communications and Mobile Computing
author_facet Shoudong Zhang
Huaqing Mao
author_sort Shoudong Zhang
title Optimization Analysis of Tennis Players’ Physical Fitness Index Based on Data Mining and Mobile Computing
title_short Optimization Analysis of Tennis Players’ Physical Fitness Index Based on Data Mining and Mobile Computing
title_full Optimization Analysis of Tennis Players’ Physical Fitness Index Based on Data Mining and Mobile Computing
title_fullStr Optimization Analysis of Tennis Players’ Physical Fitness Index Based on Data Mining and Mobile Computing
title_full_unstemmed Optimization Analysis of Tennis Players’ Physical Fitness Index Based on Data Mining and Mobile Computing
title_sort optimization analysis of tennis players’ physical fitness index based on data mining and mobile computing
publisher Hindawi-Wiley
series Wireless Communications and Mobile Computing
issn 1530-8677
publishDate 2021-01-01
description 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%.
url http://dx.doi.org/10.1155/2021/9838477
work_keys_str_mv AT shoudongzhang optimizationanalysisoftennisplayersphysicalfitnessindexbasedondataminingandmobilecomputing
AT huaqingmao optimizationanalysisoftennisplayersphysicalfitnessindexbasedondataminingandmobilecomputing
_version_ 1721378919400079360