Evaluation of the influence of athlete neural activity patterns on the dynamic index of leaping ability using data mining techniques

  • Lai Liu Sports Teaching Department, Inner Mongolia University of Technology, Hohhot 010000, China
  • Yan Dong Sports Teaching Department, Inner Mongolia University of Technology, Hohhot 010000, China
Keywords: leaping ability index; neural activity pattern; data mining technology; dynamic index
Article ID: 150

Abstract

There are many dynamic indicators of jumping ability, and the athlete’s neural activity pattern is an important factor in regulating limb activities. This article uses data mining technology to collect, preprocess, data modeling and analysis, and data visualization of dynamic index data of athletes’ neural activity patterns of jumping ability. The results show that the jumping ability of athletes with higher neural activity intensity increased significantly after training to around 40 cm–50 cm, while athletes with lower neural activity intensity did not change significantly and remained around 30 cm–35 cm. The overall learning ability of athletes with higher levels of neural activity improved by about 10 cm, and the base of neural activity also increased significantly. It shows that there is a significant correlation between the intensity of neural activity and dynamic indicators of jumping ability, which is the main driving force for athletes’ jumping explosive power. The research results can help formulate reasonable and scientific training methods to improve athletes’ jumping ability and overall sports level.

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Published
2024-10-16
How to Cite
Liu, L., & Dong, Y. (2024). Evaluation of the influence of athlete neural activity patterns on the dynamic index of leaping ability using data mining techniques. Molecular & Cellular Biomechanics, 21(1), 150. https://doi.org/10.62617/mcb.v21i1.150
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Article