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Smoothed perturbation analysis algorithms for estimating the derivatives of occupancy-related functions in serial queueing networks
Authors:Y. Wardi  M. H. Kallmes  C. G. Cassandras  W. -B. Gong
Affiliation:(1) School of Electrical Engineering, Georgia Institute of Technology, 30332 Atlanta, GA, USA;(2) Department of Electrical and Computer Engineering, University of Massachusetts, 01003 Amherst, MA, USA
Abstract:We present unbiased Smoothed Perturbation Analysis (SPA) estimators for the derivatives of occupancy-related performance functions in serial networks ofG/G/1 queues with respect to parameters of the distributions of service times at the queues. The sample functions for these performance measures are piecewise constant, and established Infinitesimal Perturbation Analysis (IPA) methods typically fail to provide unbiased estimators in this case. The performance measures considered in this paper are: the average network occupancy as seen by an arrival, the average occupancy of a specific queue as seen by an arrival to it, the probability that a customer is blocked at a specific queue, and the probability that a customer leaves a queue idle. The SPA estimators derived are quite simple and flexible, and they lend themselves to straightforward analysis. Unlike most of the established SPA algorithms, ours are not based on the comparison of hazard rates, and the proofs of their unbiasedness do not require the boundedness of such hazard rates.Supported in part by the National Science Foundation under Grant ECS-8801912, by the Office of Naval Research under Contract N00014-87-K-0304, and by NASA under Contract NAG 2-595.
Keywords:Smoothed perturbation analysis  serial queueing networks  occupancy-related functions
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