基于udp的互联网流量研究:远程依赖特性

J. Jusak, R. Harris
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引用次数: 6

摘要

随着多媒体互联网应用需求的不断增长,用户数据报协议(UDP)逐渐成为大量应用程序选择的互联网传输协议。然而,它的统计特征和行为,特别是在标度相关的性质方面很少被研究。在这项工作中,我们首先研究了UDP跟踪的统计特征,包括其远程依赖特性及其边际分布。其次,基于基于小波的估计方法,我们将根据准白化概念研究小波系数的依赖结构,最后我们将考虑对存在于UDP互联网流量中的远程依赖过程的Hurst参数(自相似度)或幂律指数进行估计的研究。通过分析从公共存储库获取的大量真实流量数据,很明显,UDP互联网流量显示出具有相当高的非平稳过程的远程依赖性,并表现出非高斯边际分布。同样有趣的是,对小波系数的统计特性的分析表明,通过增加消失矩的数量来减少长依赖范围成为短依赖范围是不可能的,尽管这是在一个非常粗糙的尺度上完成的。由此可见,对于母小波的不同消失矩数,Hurst参数估计的性能没有显著差异。
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Study of UDP-based Internet traffic: Long-range dependence characteristics
Increasing demand for multimedia Internet applications today has shown progressive growth of the User Datagram Protocol (UDP) as the Internet transport protocol of choice for a large number of applications. However, its statistical characteristics and behaviour, specifically in terms of scaling-dependent properties are rarely studied. In this work, we firstly study the statistical characteristics of the UDP traces in terms of its long-range dependence properties as well as its marginal distribution. Secondly, based on the wavelet-based estimation method, we shall investigate the dependence structure of the wavelet coefficients in the light of the quasi-whitening concept, and lastly we shall consider a study for estimating the Hurst parameter (the degree of self-similarity) or the power law exponent for the long-range dependent processes that are present in the UDP Internet traffic. By analysing a large set of real traffic data taken from public repositories, it is evident that UDP Internet traffic reveals as long-range dependence with considerably high non-stationary processes and exhibits non-Gaussian marginal distributions. It is also interesting to see that analysis of the statistical properties of the wavelet coefficients shows that a reduction of the long dependence range to become short dependence range is impossible to be achieved by increasing the number of vanishing moments although it is done at a very coarse scale. Thus, it can be noticed that there is no significant difference on the performance of the Hurst parameter estimation for different numbers of vanishing moments for the mother wavelet.
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