Research on Network Traffic Modeling and Applications

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Abstract:

With the popularity of internet and the growing of applications in recent years, network traffic characteristics are also undergone a great change. The traditional flow models are unable to meet the current traffic. Therefore, it is done to study the law of current traffic model, to propose these models of service traffic characteristics and to explore the applications of these models in practice.

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836-842

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September 2012

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