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Chapitre D'ouvrage Année : 2020

Busy period, congestion analysis and loss probability in fluid queues

Fabice Guillemin
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Marie-Ange Remiche
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Résumé

Stochastic fluid flow models and in particular those driven by Markov chains have been intensively studied in the last two decades. Not only they have been proven to be efficient tools to mimic Internet traffic flow at a macroscopic level but they are useful tools in many areas of applications such as manufacturing systems or in actuarial sciences to cite but a few. This chapter proposes to focus on such a model in the context of performance analysis of a potentially congested system. The latter is modeled by means of a finite-capacity system whose content is described by a Markov driven stable fluid flow. We step-by-step describe a methodology to compute exactly the loss probability of the system. Our approach is based on the computation of hitting probabilities jointly with the peak level reached during a busy period, both in the infinite and finite buffer case. Accordingly we end up with differential Riccati equations that can be solved numerically. Moreover we are able to characterize the complete distribution of both the duration of congestion and of the total information lost during such a busy period.
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Dates et versions

hal-02422782 , version 1 (20-01-2020)

Identifiants

  • HAL Id : hal-02422782 , version 1

Citer

Fabice Guillemin, Marie-Ange Remiche, Bruno Sericola. Busy period, congestion analysis and loss probability in fluid queues. Vladimir Anisimov and Nikolaos Limnios. Advanced Trends in Queueing Theory, 1, Iste & J. Wiley, London, inPress, Mathematics and Statistics Series, Sciences. ⟨hal-02422782⟩
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