Research and application of optimization of physical education training model based on multi-objective differential evolutionary algorithm

IF 3.6 Systems and Soft Computing Pub Date : 2025-12-01 Epub Date: 2025-02-13 DOI:10.1016/j.sasc.2025.200200
Man Wu
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Abstract

With the development of computer science, various algorithm models are gradually applied in various fields of life. In order to study the application of the multi-objective differential evolution algorithm in the field of sports transportation. Based on the improvement of multi-objective differential evolution algorithm, this paper proposes the training model of PE education, and compares the prediction results and the actual results. The specific conclusions are as follows: (1) MODE algorithm is better to other algorithms in convergence speed and accuracy; MODE algorithm can not only reach the optimal particle position quickly, but also fluctuate around the best point.(2) AMODE-MPS has great potential for dealing with complex and multiple objectives.(3) There are significant differences between the prediction performance of the proposed algorithm model and the statistical performance, in which the statistical performance is significantly higher than the predicted performance.(4) The proposed model can basically meet the prediction requirements. Although there are some differences between the prediction results and the actual results, this is because the statistical process is affected by the weather, physical condition and other factors. The results show that the PE training model has good results in practice, so this paper can provide reference for the improvement of PE teaching model.
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基于多目标差分进化算法的体育训练模型优化研究与应用
随着计算机科学的发展,各种算法模型逐渐应用于生活的各个领域。为了研究多目标差分进化算法在体育交通领域的应用。本文在改进多目标差分进化算法的基础上,提出了体育教育人才培养模型,并将预测结果与实际结果进行了比较。具体结论如下:(1)MODE算法在收敛速度和精度上优于其他算法;MODE算法不仅能快速到达最优粒子位置,而且能在最佳点附近波动。(2)MODE- mps在处理复杂多目标方面具有很大的潜力。(3)本文算法模型的预测性能与统计性能存在显著差异,其中统计性能显著高于预测性能。(4)本文模型基本能满足预测要求。虽然预测结果与实际结果存在一定差异,但这是因为统计过程受到天气、身体状况等因素的影响。结果表明,该体育教学模式在实践中取得了良好的效果,可以为体育教学模式的改进提供参考。
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