Open Access
May 2005 Drift rate control of a Brownian processing system
Bariş Ata, J. M. Harrison, L. A. Shepp
Ann. Appl. Probab. 15(2): 1145-1160 (May 2005). DOI: 10.1214/105051604000000855

Abstract

A system manager dynamically controls a diffusion process Z that lives in a finite interval [0,b]. Control takes the form of a negative drift rate θ that is chosen from a fixed set A of available values. The controlled process evolves according to the differential relationship dZ=dX−θ(Z) dt+dLdU, where X is a (0,σ) Brownian motion, and L and U are increasing processes that enforce a lower reflecting barrier at Z=0 and an upper reflecting barrier at Z=b, respectively. The cumulative cost process increases according to the differential relationship dξ=c(θ(Z)) dt+pdU, where c(⋅) is a nondecreasing cost of control and p>0 is a penalty rate associated with displacement at the upper boundary. The objective is to minimize long-run average cost. This problem is solved explicitly, which allows one to also solve the following, essentially equivalent formulation: minimize the long-run average cost of control subject to an upper bound constraint on the average rate at which U increases. The two special problem features that allow an explicit solution are the use of a long-run average cost criterion, as opposed to a discounted cost criterion, and the lack of state-related costs other than boundary displacement penalties. The application of this theory to power control in wireless communication is discussed.

Citation

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Bariş Ata. J. M. Harrison. L. A. Shepp. "Drift rate control of a Brownian processing system." Ann. Appl. Probab. 15 (2) 1145 - 1160, May 2005. https://doi.org/10.1214/105051604000000855

Information

Published: May 2005
First available in Project Euclid: 3 May 2005

zbMATH: 1069.60074
MathSciNet: MR2134100
Digital Object Identifier: 10.1214/105051604000000855

Subjects:
Primary: 60J70 , 60K25 , 90B22 , 90B35

Keywords: diffusion approximations , dynamic scheduling , heavy traffic theory , queueing systems , Stochastic control

Rights: Copyright © 2005 Institute of Mathematical Statistics

Vol.15 • No. 2 • May 2005
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