互联网流量的调整ARIMA模型

H.M.A. El Hag, S. Sharif
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引用次数: 24

摘要

传统的时间序列模型,如ARIMA模型,已被证明不足以模拟具有长期依赖性的交通。本文提出了一种新的模型——调整后的ARIMA模型,用于模拟远程依赖网络流量。ARIMA模型保留了ARIMA模型的所有特性,同时捕捉了自相似度,从而提供了一种快速简便的互联网流量建模方法。我们使用Box-Jenkins方法作为建模过程的框架。我们通过建立最优的轨迹ARIMA模型,然后加上我们的平差得到等效的ARIMA模型来构建我们的模型。我们使用几个拟合优度标准证明了AARIMA模型比ARIMA模型有明显的改进,我们的主要拟合优度标准是能够捕获被建模的原始轨迹的Hurst参数。模型不应低估赫斯特参数,任何高估都应小于或等于被测道H参数的20%。经调整后的ARIMA模型可准确预测互联网流量,最多可提前一小时。我们对ARIMA模型提出的调整是通过引入由被建模序列的第一差组成的反馈项。我们使用了四个Hurst参数估计量来测量测量道的自相似性,以及所有测量道的AARIMA和ARIMA模型。对于所有使用的估计器,发现AARIMA捕获了与使用的估计器无关的远程依赖性。我们使用调整后的ARIMA模型预测了三个公共领域的互联网流量轨迹,即Bellcore互联网广域网外部流量轨迹(长度为35小时),Bellcore互联网广域网“紫色电缆”轨迹(长度为半小时)和MPEG-1压缩视频流量轨迹(长度为半小时)。结果表明,对于公共领域轨迹,ARIMA模型给出的H参数值比ARIMA模型给出的H参数值更准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An adjusted ARIMA model for internet traffic
Traditional time series models such as ARIMA models have been proven to be inadequate for modelling traffic exhibiting long-range dependance. In this paper we present a new model the adjusted ARIMA model for modelling long-range dependant Internet traffic. The AARIMA model is suggested to give a quick and simple way to model Internet traffic by retaining all the properties of the ARIMA models while capturing the self- similarity. We use the Box-Jenkins methodology as a frame work for our modelling procedure. We construct our model by building the best ARIMA model possible for a trace and then adding our adjustment to obtain the equivalent AARIMA model. We show that the AARIMA model shows an evident improvement over the ARIMA model using several goodness of fit criteria, our main goodness of fit criteria is the ability to capture the Hurst parameter of the original trace being modeled. The model should not underestimate the Hurst parameter and any overestimation should be less than or equal to 20% of H parameter of the measured trace. The adjusted ARIMA model is shown to accurately predict Internet traffic for up to one hour in advance. The adjustment we propose to the ARIMA model is by introducing a feedback term made up of the first difference of the series being modeled. We used four Hurst parameter estimators to measure the self- similarity of the measured traces and both the AARIMA and ARIMA models for all measured traces. For all the estimators used the AARIMA was found to capture the long-range dependence irrespective of estimator used. We used the adjusted ARIMA model to predict three public domain internet traffic traces namely a Bellcore internet wide area network external traffic trace (length 35 hours), a Bellcore Internet Wide Area Network "purple cable" trace (length half an hour) and a MPEG-1 compressed video traffic trace (length half an hour). We show that for the public domain traces the AARIMA model gives values of H parameter which are more accurate than those given by the ARIMA model.
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