Publication | Closed Access
Self-similar traffic and network dynamics
131
Citations
66
References
2002
Year
Dynamic NetworkInternet Traffic AnalysisNetwork ScienceEngineeringNetwork Traffic ControlNetwork Traffic Self-similarityPacket Network TrafficNetwork AnalysisComputer ScienceNetwork PerformanceNetwork TrafficSelf-similar TrafficNetwork Traffic MeasurementCongestion ControlSocial Network Analysis
One of the most significant findings of traffic measurement studies over the last decade has been the observed self-similarity in packet network traffic. Subsequent research has focused on the origins of this self-similarity, and the network engineering significance of this phenomenon. This paper reviews what is currently known about network traffic self-similarity and its significance. We then consider a matter of current research, namely, the manner in which network dynamics (specifically, the dynamics of transmission control protocol (TCP), the predominant transport protocol used in today's Internet) can affect the observed self-similarity. To this end, we first discuss some of the pitfalls associated with applying traditional performance evaluation techniques to highly-interacting, large-scale networks such as the Internet. We then present one promising approach based on chaotic maps to capture and model the dynamics of TCP-type feedback control in such networks. Not only can appropriately chosen chaotic map models capture a range of realistic source characteristics, but by coupling these to network state equations, one can study the effects of network dynamics on the observed scaling behavior We consider several aspects of TCP feedback, and illustrate by examples that while TCP-type feedback can modify the self-similar scaling behavior of network traffic, it neither generates it nor eliminates it.
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