Large Model Framework for Wireless Network Optimization in Smart Physical Education Environments

IF 0.5 Q4 TELECOMMUNICATIONS
BingYang Liu, Yang Liu
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引用次数: 0

Abstract

Modern physical education increasingly relies on wireless communication networks to deliver immersive training experiences through wearable devices, motion-tracking sensors, and real-time performance analytics. However, optimizing wireless network performance in dynamic physical education environments presents complex challenges due to rapidly changing user mobility patterns, varying signal interference from athletic equipment, and fluctuating bandwidth demands during different exercise activities. This letter proposes a novel wavelet-enhanced large model framework that integrates wavelet transform signal processing with enhanced position encoding in transformer architectures to predict and optimize wireless network performance for physical education applications. Experimental validation demonstrates that our proposed model accurately captures non-stationary behavior and abrupt changes in wireless network performance during various physical activities. The RMSE and MAPE metrics show improvements of 29.9% and 2.9%, respectively, compared to baseline transformer models, and 34.5% and 3.4% improvements compared to LSTM approaches, providing a novel technical solution for smart physical education network management.

Abstract Image

智能体育环境下无线网络优化的大型模型框架
现代体育教育越来越依赖无线通信网络,通过可穿戴设备、运动跟踪传感器和实时性能分析来提供沉浸式训练体验。然而,在动态体育环境中优化无线网络性能面临着复杂的挑战,因为用户移动模式的快速变化、运动设备的不同信号干扰以及不同运动活动期间波动的带宽需求。本文提出了一种新的小波增强大模型框架,该框架将小波变换信号处理与变压器结构中的增强位置编码集成在一起,以预测和优化体育应用的无线网络性能。实验验证表明,我们提出的模型准确地捕获了各种物理活动期间无线网络性能的非平稳行为和突变。与基线变压器模型相比,RMSE和MAPE指标分别提高了29.9%和2.9%,与LSTM方法相比,RMSE和MAPE指标分别提高了34.5%和3.4%,为智能体育网络管理提供了新的技术解决方案。
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