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基于改进极限学习机的应急通信网络多重拥堵风险预警方法

钱立遥

计算技术与自动化2024,Vol.43Issue(4):179-184,6.
计算技术与自动化2024,Vol.43Issue(4):179-184,6.DOI:10.16339/j.cnki.jsjsyzdh.202404029

基于改进极限学习机的应急通信网络多重拥堵风险预警方法

Multiple Congestion Risk Warning Method for Emergency Communication Networks Based on Improved Extreme Learning Machine

钱立遥1

作者信息

  • 1. 浙江省应急管理数字与技术中心,浙江 杭州 310000
  • 折叠

摘要

Abstract

Inaccurate feature extraction of risk data leads to low warning accuracy.Therefore,a multiple congestion risk warning method for emergency communication networks based on improved extreme learning machine is proposed.Collect and standardize data to preprocess risk data.With the support of improved extreme learning machine,calculate feature differences and feature vector weights to complete feature extraction of risk data.By weighting different data,construct a risk warning model,calculate the risk value of the communication network,classify the risk warning level,and achieve com-munication network risk warning.Through the above processes,the design of multiple congestion risk warning methods for emergency communication networks is completed.In the simulation experiment,compared with previous emergency commu-nication network multiple congestion risk warning methods,the designed multiple congestion risk warning method for emer-gency communication network based on improved extreme learning machine has a warning accuracy of 100%,and is more ac-curate in risks warning.

关键词

改进极限学习机/应急通信网络/多重拥堵/风险预警

Key words

improved extreme learning machine/emergency communication networks/multiple congestion/risk warning

分类

社会科学

引用本文复制引用

钱立遥..基于改进极限学习机的应急通信网络多重拥堵风险预警方法[J].计算技术与自动化,2024,43(4):179-184,6.

计算技术与自动化

OACSTPCD

1003-6199

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