Advanced Models and Algorithms for Self–Similar IP Network Traffic Simulation and Performance Analysis
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Keyword
Communication networksIP network traffic
Long-range dependent self-similar processes
Advanced generators of self-similar teletraffic
Journal title
Journal of Electrical EngineeringDate Published
2010
Metadata
Show full item recordAbstract
The paper examines self-similar (or fractal) properties of real communication network traffic data over a wide range of time scales. These self-similar properties are very different from the properties of traditional models based on Poisson and Markov-modulated Poisson processes. Advanced fractal models of sequentional generators and fixed-length sequence generators, and efficient algorithms that are used to simulate self-similar behavior of IP network traffic data are developed and applied. Numerical examples are provided; and simulation results are obtained and analyzed.Citation
Radev, D., and Lokshina, I. (2010). Advanced Models and Algorithms for Self-Similar Network Traffic Simulation and Performance Analysis. Journal of Electrical Engineering (JEE)/the Institute of Electrical and Electronics Engineers (IEEE); online: Wersita, Warsaw - Central European Science Publishers, 61(6), p. 341-349DOI
10.2478/v10187-010-0053-0ae974a485f413a2113503eed53cd6c53
10.2478/v10187-010-0053-0
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