Exercise Behavior Prediction and Injury Assessment Based on Swarm Intelligence Algorithm

The biggest view of the whole world on science and technology and sports is that science and technology and sports both represent national strength. At present, the integration of sports and science and technology has not reached a certain height, especially in the prediction of sports behavior and...

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Main Authors: Ding Ding, Jianqiong Jiang, Changya Liu
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Discrete Dynamics in Nature and Society
Online Access:http://dx.doi.org/10.1155/2021/1541816
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author Ding Ding
Jianqiong Jiang
Changya Liu
author_facet Ding Ding
Jianqiong Jiang
Changya Liu
author_sort Ding Ding
collection DOAJ
description The biggest view of the whole world on science and technology and sports is that science and technology and sports both represent national strength. At present, the integration of sports and science and technology has not reached a certain height, especially in the prediction of sports behavior and injury assessment, and the investment in science and technology is still lacking. This leads to a high number of injuries caused by sports every year. However, swarm intelligence algorithm has made few breakthrough achievements in the past few years, and the combination of sports behavior and swarm intelligence algorithm can just solve this problem. It is very important to choose the algorithm for predicting and assessing sports behavior. We should choose an efficient algorithm with high stability, high convergence speed, and optimization ability. In this paper, the IPSGWO algorithm is proposed to realize this application. IPSGWO algorithm is based on the GWO algorithm, with appropriate strategies and ideas, to maximize the improvement. In this paper, the convergence curve of PSO, GWO, and IPSGWO is tested to determine whether the IPSGWO algorithm has more stable and higher performance, and the simulation experiment is used to determine whether the IPSGWO algorithm is suitable for prediction and injury assessment compared with the other two. From the experimental results, the IPSGWO algorithm does have higher performance; because of this, it is more accurate for prediction and injury assessment.
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institution Kabale University
issn 1607-887X
language English
publishDate 2021-01-01
publisher Wiley
record_format Article
series Discrete Dynamics in Nature and Society
spelling doaj-art-30ac2dcdc6b641739281216ff593d62f2025-02-03T07:24:13ZengWileyDiscrete Dynamics in Nature and Society1607-887X2021-01-01202110.1155/2021/1541816Exercise Behavior Prediction and Injury Assessment Based on Swarm Intelligence AlgorithmDing Ding0Jianqiong Jiang1Changya Liu2Chongqing Finance and Economics CollegeSichuan Minzu CollegeInstitute of Physical EducationThe biggest view of the whole world on science and technology and sports is that science and technology and sports both represent national strength. At present, the integration of sports and science and technology has not reached a certain height, especially in the prediction of sports behavior and injury assessment, and the investment in science and technology is still lacking. This leads to a high number of injuries caused by sports every year. However, swarm intelligence algorithm has made few breakthrough achievements in the past few years, and the combination of sports behavior and swarm intelligence algorithm can just solve this problem. It is very important to choose the algorithm for predicting and assessing sports behavior. We should choose an efficient algorithm with high stability, high convergence speed, and optimization ability. In this paper, the IPSGWO algorithm is proposed to realize this application. IPSGWO algorithm is based on the GWO algorithm, with appropriate strategies and ideas, to maximize the improvement. In this paper, the convergence curve of PSO, GWO, and IPSGWO is tested to determine whether the IPSGWO algorithm has more stable and higher performance, and the simulation experiment is used to determine whether the IPSGWO algorithm is suitable for prediction and injury assessment compared with the other two. From the experimental results, the IPSGWO algorithm does have higher performance; because of this, it is more accurate for prediction and injury assessment.http://dx.doi.org/10.1155/2021/1541816
spellingShingle Ding Ding
Jianqiong Jiang
Changya Liu
Exercise Behavior Prediction and Injury Assessment Based on Swarm Intelligence Algorithm
Discrete Dynamics in Nature and Society
title Exercise Behavior Prediction and Injury Assessment Based on Swarm Intelligence Algorithm
title_full Exercise Behavior Prediction and Injury Assessment Based on Swarm Intelligence Algorithm
title_fullStr Exercise Behavior Prediction and Injury Assessment Based on Swarm Intelligence Algorithm
title_full_unstemmed Exercise Behavior Prediction and Injury Assessment Based on Swarm Intelligence Algorithm
title_short Exercise Behavior Prediction and Injury Assessment Based on Swarm Intelligence Algorithm
title_sort exercise behavior prediction and injury assessment based on swarm intelligence algorithm
url http://dx.doi.org/10.1155/2021/1541816
work_keys_str_mv AT dingding exercisebehaviorpredictionandinjuryassessmentbasedonswarmintelligencealgorithm
AT jianqiongjiang exercisebehaviorpredictionandinjuryassessmentbasedonswarmintelligencealgorithm
AT changyaliu exercisebehaviorpredictionandinjuryassessmentbasedonswarmintelligencealgorithm