光通信研究2024,Issue(4) :100-103.DOI:10.13756/j.gtxyj.2024.230146

基于注意力机制的无线网络优化研究

Research on Wireless Network Optimization based on Attention Mechanism

李明春 李明 王素椅
光通信研究2024,Issue(4) :100-103.DOI:10.13756/j.gtxyj.2024.230146

基于注意力机制的无线网络优化研究

Research on Wireless Network Optimization based on Attention Mechanism

李明春 1李明 1王素椅1
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作者信息

  • 1. 烽火通信科技股份有限公司,武汉 430074
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摘要

[目的]无线网络设备故障诊断的意义在于帮助解决网络连接问题,提高用户体验,确保网络的稳定性和可靠性,然而现有方法的准确率有待进一步提高.[方法]针对该问题,文章在卷积神经网络(CNN)-门控循环单元(GRU)网络结构中引入了注意力机制,提出了一种基于CNN-GRU-Attention网络结构的无线网络设备故障诊断方法.[结果]相较于其他方法,文章所提方法在仿真实验中模型的准确率从91%提升到了 98%,提升效果明显.[结论]文章所提方法提高了无线网络设备运营的质量和效率,提升了网络容量、功能以及可靠性,满足了人们日益增长的无线网络通信需求.

Abstract

[Objective]The significance of wireless network equipment troubleshooting can be used to solve the network connec-tion problems,improving user experience,and maintaining network stability and reliability.However,the accuracy of existing methods needs to be further improved.[Methods]To address this problem,this paper quotes the attention mechanism in the Convolutional Neural Networks(CNN)-Gated Recurrent Unit(GRU)network structure and proposes a wireless network e-quipment fault diagnosis method based on the CNN-GRU-Attention network structure.[Results]Compared with other methods in the simulation experiment,the method in this paper improved the accuracy of the model from 91%to 98%.[Conclusion]Through the research of this article,the quality and efficiency of wireless network equipment operation have been improved.The network capacity,functionality and reliability have also been improved,and people's growing communication needs for wireless networks have been met.

关键词

无线/故障诊断/准确率/注意力机制

Key words

wireless/troubleshooting/accuracy/attention mechanism

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基金项目

2023年中央引导地方科技发展资金资助项目(2023CGB002)

出版年

2024
光通信研究
武汉邮电科学研究院企管部

光通信研究

CSTPCD北大核心
影响因子:0.327
ISSN:1005-8788
参考文献量4
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