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Journal of Information & Systems Management (JISM)

Analysis of Model Rationality Verification Standards Based on Track and Field Sports
Sun Yili
The Bandung Institute of Technology Bandung Indonesia
Abstract: Athletics is a common sport that includes running, jumping, throwing, and walking races. In the training, competition, and teaching of track and field sports, various models are often used to help understand and improve the performance of athletes. To ensure the accuracy of these models, it is necessary to conduct reasonable validation. This article will analyze the validation criteria for the rationality of models based on track and field sports. In track and field sports, common models include biomechanical, physiological, and kinematic models. Biomechanical models can help us understand the movements and power distribution of athletes; Physiological models can predict the fatigue level of athletes under different conditions. Kinematic models can analyze athletes’ exercise patterns and optimize their techniques.
Keywords: BP Neural Network, Scoring Criteria, Track and Field Sports, Men’s Almighty Decathlon
DOI:https://doi.org/10.6025/jism/2023/13/4/97-105
Full_Text   PDF 1.84 MB   Download:   46  times
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