网络流量的结构分析

Anukool Lakhina, K. Papagiannaki, M. Crovella, C. Diot, E. Kolaczyk, N. Taft
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引用次数: 583

摘要

网络流量来源于OD (Origin-Destination)流的叠加。因此,全面了解OD流对于网络流量建模以及解决各种各样的问题(包括流量工程、流量矩阵估计、容量规划、预测和异常检测)至关重要。然而,迄今为止,外径流还没有得到深入的研究,对其性质也知之甚少。我们首次分析了OD流量时间序列的完整集合,这些数据来自两个不同的骨干网络(Abilene和Sprint-Europe)。利用主成分分析(PCA),我们发现OD流集具有较小的固有维数。事实上,即使在一个拥有超过100个OD流的网络中,这些流也可以使用少量(10个或更少)的独立组件或维度及时准确地建模。我们还展示了如何使用PCA系统地将OD流时间序列结构分解为三个主要成分:共同周期趋势,短时间爆发和噪声。我们将深入了解各种成分如何对OD流的整体结构做出贡献,并探索这种分解随时间变化的程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Structural analysis of network traffic flows
Network traffic arises from the superposition of Origin-Destination (OD) flows. Hence, a thorough understanding of OD flows is essential for modeling network traffic, and for addressing a wide variety of problems including traffic engineering, traffic matrix estimation, capacity planning, forecasting and anomaly detection. However, to date, OD flows have not been closely studied, and there is very little known about their properties.We present the first analysis of complete sets of OD flow time-series, taken from two different backbone networks (Abilene and Sprint-Europe). Using Principal Component Analysis (PCA), we find that the set of OD flows has small intrinsic dimension. In fact, even in a network with over a hundred OD flows, these flows can be accurately modeled in time using a small number (10 or less) of independent components or dimensions.We also show how to use PCA to systematically decompose the structure of OD flow timeseries into three main constituents: common periodic trends, short-lived bursts, and noise. We provide insight into how the various constitutents contribute to the overall structure of OD flows and explore the extent to which this decomposition varies over time.
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