基于小波- gm(1,1)组合模型的网络流量预测分析

Yan Bai, Ke Ma, Guangsi Ma
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引用次数: 2

摘要

基于灰色理论,提出了一种组合小波- gm(1,1)预测模型。一些非平稳时间序列的随机特性可以通过小波分解分解成不同尺度的序列。利用GM(1,1)模型对分解后的时间序列进行预测,得到原始时间序列的预测结果。对网络流量的实验表明,该组合模型比常用的灰色模型更有效。将该组合模型应用于网络流量预测,可为Internet路由决策、局域网病毒检测和非法入侵防御提供科学依据。
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An analysis of the combined wavelet-GM (1,1) model for network traffic forecasting
Based on Grey theory, a combined wavelet-GM (1,1) forecasting model is proposed. The random properties of some non-stationary time series can be reduced by wavelet decomposition into many series according to different scales. Decomposed time series are predicted with GM (1,1) model to obtain forecasted results of the original time series. Experiments on network traffic show that the combined model is more effective than the common grey model. The application of the proposed combined model to network traffic forecasting may offer scientific rationale to Internet routing decision, LAN virus detection and illegal invasion prevention.
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