Title :
Linking network usage patterns to traffic Gaussianity fit
Author :
De O Schmidt, Ricardo ; Sadre, Ramin ; Melnikov, N. ; Schonwalder, Jurgen ; Pras, Aiko
Author_Institution :
Univ. of Twente, Enschede, Netherlands
Abstract :
Gaussian traffic models are widely used in the domain of network traffic modeling. The central assumption is that traffic aggregates are Gaussian distributed. Due to its importance, the Gaussian character of network traffic has been extensively assessed by researchers in the past years. In 2001, researchers showed that the property of Gaussianity can be disturbed by traffic bursts. However, assumptions on network infrastructure and traffic composition made by the authors back in 2001 are not consistent with those of today´s networks. The goal of this paper is to study the impact of traffic bursts on the degree of Gaussianity of network traffic. We identify traffic bursts, uncover applications and hosts that generate them and, ultimately, relate these findings to the Gaussianity degree of the traffic expressed by a goodness-of-fit factor. In our analysis we use recent traffic captures from 2011 and 2012. Our results show that Gaussianity can be directly linked to the presence or absence of extreme traffic bursts. In addition, we also show that even in a more homogeneous network, where hosts have similar access speeds to the Internet, we can identify extreme traffic bursts that might compromise Gaussianity fit.
Keywords :
Gaussian distribution; Internet; telecommunication links; telecommunication traffic; Gaussian distribution; Gaussian traffic model; Internet; goodness-of-fit factor; homogeneous network; network link pattern; network traffic Gaussianity degree; network traffic modeling; traffic burst; Aggregates; Bandwidth; Correlation; Distribution functions; Educational institutions; Electronic mail; Throughput; Gaussian modeling; Traffic analysis; Traffic measurements;
Conference_Titel :
Networking Conference, 2014 IFIP
Conference_Location :
Trondheim
DOI :
10.1109/IFIPNetworking.2014.6857099