Modeling and Self-Similarity Analysis of Non-Poissonian Traffic Represented by Multimodal Non-Typical Pascal and Rice Distributions

R. R. Faizullin, S. T. Yaushev, A. Y. Insarov
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引用次数: 1

Abstract

Modern stage of development of information and communication networks requires solving of crucial tasks of network traffic statistical analysis and traffic simulation modeling. The predominance of non-Poisson traffic leads to the impossibility of analyzing multichannel communication systems by the methods of queuing theory that used to describe telephone networks. The last decade has paid much attention to research on traffic that has signs of self-similarity. The main purpose of this work is a statistical analysis of non-Poissonian traffic, represented by multimodal non-standard Pascal (negative binomial) and Rice distributions. As a result, a study of the self-similarity degree has been performed by the R/S analysis and the aggregation method. In addition, we propose to use EM-algorithm with an algorithm for determining an optimal number of clusters for an approximation of non-typical multimodal distributions.
以多模态非典型Pascal和Rice分布表示的非泊松交通建模及自相似分析
现代信息通信网络的发展要求解决网络流量统计分析和流量仿真建模的关键任务。非泊松通信量的优势导致用排队论的方法来描述电话网络来分析多通道通信系统是不可能的。近十年来,人们对具有自相似迹象的交通进行了大量的研究。本工作的主要目的是统计分析非泊松流量,由多模态非标准Pascal(负二项)和Rice分布表示。因此,采用R/S分析法和聚合法对自相似度进行了研究。此外,我们建议使用em算法和一种算法来确定非典型多模态分布近似的最佳簇数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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