自相似流量轨迹的局部和累积分析

J. Pacheco, D. T. Román
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引用次数: 7

摘要

互联网流量在所有时间尺度上都表现出可变性,这反过来又表现出统计上的自相似性。这种自相似行为对QoS具有重要意义,因为它增加了总延迟和丢包率。因此,我们需要测试自相似性的程度,并将此信息用于控制目的。为了实现上述目标,使用由数千个点和数小时的测量组成的迹线。然而,关于准确估计赫斯特指数所需的点数的研究还不够。在本文中,我们研究了许多真实的和合成的自相似迹的局部和累积行为。这样做是为了试图推断赫斯特参数估计所需的点数,并检查赫斯特指数的依赖性。我们发现局部分析呈现自相似性,Hurst指数在累积情况下趋于稳定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local and Cumulative Analysis of Self-similar Traffic Traces
Internet traffic shows variability in all time scales, which in turn shows statistical self-similarity. This selfsimilar behaviour has significant implications for QoS since it increments the total delay and packet loss rate. Therefore, we need to test for the degree of selfsimilarity and use this information for control purposes. For achieving the above-mentioned, the use of traces consisting of several thousands of points and hours of measurement are used. However, there are not enough studies about the number of points required to get an accurate estimation of the Hurst exponent. In this article, we study the local and cumulative behaviour of many real and synthetic self-similar traces. This is done for trying to infer the number of points required for Hurst parameter estimation and for checking dependence of Hurst exponents. We show that local analysis presents self-similarity, and the Hurst exponent tends to be stable in the cumulative case.
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