Title :
A unified framework for understanding network traffic using independent wavelet models
Author :
Tian, Xusheng ; Wu, Jie ; Ji, Chuanyi
Abstract :
Properties of heterogeneous network traffic have been investigated from different aspects, resulting in different understanding. Specifically, one previous work discovers that the variance of network traffic exhibits a linear relationship with respect to the mean. Such a linear relation suggests that the traffic is "Poisson-like", and thus "smooth". On the other hand, prior work has shown that the heterogeneous traffic can be long-range dependent, and is thus bursty. The focus of this work is to investigate these seemingly contradictory issues, and to provide a unified understanding on the burstiness of heterogeneous traffic. In particular, we use a simple statistic, the variance of the traffic, for our investigation. We first study variance-mean relations at a single time scale. We then investigate the behavior of variances at multiple time scales, which determines the temporal correlation structure. Finally, we provide a unified view to include most important understanding of the network traffic.
Keywords :
correlation methods; network topology; statistical analysis; stochastic processes; telecommunication networks; telecommunication traffic; wavelet transforms; Poisson-like traffic; bursty traffic; dumbbell-type topology; heterogeneous network traffic; independent wavelet models; long-range dependent traffic; multiple time scales; network traffic; single time scale; statistics; temporal correlation structure; traffic variance; variance-mean relations; Communication system traffic control; Fractals; IP networks; Internet; Next generation networking; Sampling methods; Statistics; Telecommunication traffic; Traffic control;
Conference_Titel :
INFOCOM 2002. Twenty-First Annual Joint Conference of the IEEE Computer and Communications Societies. Proceedings. IEEE
Print_ISBN :
0-7803-7476-2
DOI :
10.1109/INFCOM.2002.1019287