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Analytic error bounds for approximations of queueing networks with an application to alternate routing

Published online by Cambridge University Press:  17 February 2009

Nico M. Van Dijk
Affiliation:
Free University, Amsterdam, The Netherlands.
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Abstract

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A general condition is provided from which an error bound can be concluded for approximations of queueing networks which are based on modifications of the transition and state space structure. This condition relies upon Markov reward theory and can be verified inductively in concrete situations. The results are illustrated by estimating the accuracy of a simple throughput bound for a closed queueing network with alternate routing and a large finite source input. An explicit error bound for this example is derived which is of order M—1, where M is the number of sources.

Type
Research Article
Copyright
Copyright © Australian Mathematical Society 1990

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