Xu Feng, Zhu Wuyi
Department of Physical Education, Bengbu University, Bengbu 233030, China.
Department of Physical Education, Hefei University of Technology, Hefei 230009, China.
SLAS Technol. 2024 Aug;29(4):100138. doi: 10.1016/j.slast.2024.100138. Epub 2024 Apr 30.
This research presents a novel method for objectively evaluating college badminton players' physical function levels. It examines current evaluation methods before proposing a novel model that combines Particle Swarm Optimization (PSO) with Backpropagation (BP) neural networks and data mining. The model establishes an evaluation index system that considers physical form, function, quality, and neural mechanisms. The study uses PSO-BP neural networks to adjust indicator weights for more accurate ratings. This recurrent improvement reduces errors while increasing prediction ability, resulting in accurate assessments of athletes' physical talents and neurological insights. The model's efficiency is proved by low mistakes and high accuracy results, which are critical for training optimization and injury avoidance. The combination of PSO optimization and BP neural networks offers robustness across various athlete profiles and training scenarios. This method improves physical function evaluation in badminton and has wider implications for sports science and performance analytics. This study uses bio-inspired computing and machine learning to emphasize the relevance of data-driven techniques in enhancing athlete assessments for better training outcomes and general well-being.
本研究提出了一种客观评估大学生羽毛球运动员身体机能水平的新方法。在提出一种将粒子群优化(PSO)与反向传播(BP)神经网络及数据挖掘相结合的新模型之前,先对当前的评估方法进行了考察。该模型建立了一个考虑身体形态、机能、素质和神经机制的评估指标体系。本研究使用PSO-BP神经网络来调整指标权重,以获得更准确的评分。这种反复改进减少了误差,同时提高了预测能力,从而能够准确评估运动员的身体天赋并洞察其神经状况。该模型的高效性体现在低错误率和高精度的结果上,这对于训练优化和避免受伤至关重要。PSO优化与BP神经网络的结合在各种运动员概况和训练场景中都具有稳健性。这种方法改进了羽毛球运动中的身体机能评估,对体育科学和成绩分析具有更广泛的意义。本研究采用受生物启发的计算和机器学习方法,强调了数据驱动技术在加强运动员评估以实现更好的训练效果和总体健康方面的相关性。