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An approximation for the busy period of the M/G/1 queue using a diffusion model

Published online by Cambridge University Press:  14 July 2016

D. P. Heyman*
Affiliation:
Bell Telephone Laboratories, Holmdel, New Jersey

Abstract

A diffusion model for the M/G/1 queue due to D. P. Gaver is used to obtain an approximation for the density function of the busy period. The approximation has the same mean and variance as the exact density function, and can be given explicitly when the service time is constant, or has a negative exponential or gamma distribution, or is a mixture of these types.

Type
Research Papers
Copyright
Copyright © Applied Probability Trust 1974 

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