Diffusion models and steady-state approximations for exponentially ergodic Markovian queues

Authors
Citation
Gurvich Itai, Diffusion models and steady-state approximations for exponentially ergodic Markovian queues, Annals of applied probability , 24(6), 2014, pp. 2527-2559
ISSN journal
10505164
Volume
24
Issue
6
Year of publication
2014
Pages
2527 - 2559
Database
ACNP
SICI code
Abstract
Motivated by queues with many servers, we study Brownian steady-state approximations for continuous time Markov chains (CTMCs). Our approximations are based on diffusion models (rather than a diffusion limit) whose steady-state, we prove, approximates that of the Markov chain with notable precision. Strong approximations provide such .limitless. approximations for process dynamics. Our focus here is on steady-state distributions, and the diffusion model that we propose is tractable relative to strong approximations. Within an asymptotic framework, in which a scale parameter n is taken large, a uniform (in the scale parameter) Lyapunov condition imposed on the sequence of diffusion models guarantees that the gap between the steady-state moments of the diffusion and those of the properly centered and scaled CTMCs shrinks at a rate of .n . Our proofs build on gradient estimates for solutions of the Poisson equations associated with the (sequence of) diffusion models and on elementary martingale arguments. As a by-product of our analysis, we explore connections between Lyapunov functions for the fluid model, the diffusion model and the CTMC.