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首页> 外文期刊>International Journal of Computer Networks & Communications >Wavelet Spectrum for Investigating Statistical Characteristics of UDP-Based Internet Traffic
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Wavelet Spectrum for Investigating Statistical Characteristics of UDP-Based Internet Traffic

机译:小波频谱研究基于UDP的互联网流量的统计特性

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摘要

In this paper, we consider statistical characteristics of real User Datagram Protocol (UDP) traffic. Four main issues in the study include(i) the presence of long rangedependence (LRD) in the UDP traffic,(ii) the marginal distribution of the UDP traces,(iii) dependence structure of wavelet coefficients,(iv) and performance evaluation of the Hurst parameter estimation based on different numbers of vanishing moments of the mother wavelet. By analyzing a large set of real traffic data, it is evident that the UDP Internet traffic reveals the LRD properties with considerably high non-stationary processes.Furthermore, it exhibits non-Gaussian marginal distributions. However, by increasing the number of vanishing moments,it is impossible to achieve reduction fromLRD to become a short range dependence. Thus, it can be shown that there is no significant difference in performance estimation of the Hurst parameter for different numbers of vanishing moments of the mother wavelet.
机译:在本文中,我们考虑了实际用户数据报协议(UDP)流量的统计特征。研究中的四个主要问题包括:(i)UDP流量中存在长距离依赖(LRD),(ii)UDP迹线的边际分布,(iii)小波系数的依赖结构,(iv)以及对UDP性能的评估基于不同子母消失矩数的赫斯特参数估计。通过分析大量的实际流量数据,很明显UDP Internet流量显示了具有相当高的非平稳过程的LRD属性,此外,它还表现出非高斯边际分布。但是,通过增加消失力矩的数量,不可能实现从LRD减小到短程依赖。因此,可以表明,对于不同数量的母子波消失矩,Hurst参数的性能估计没有显着差异。

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