Subexponential tail equivalence of the queue length distributions of BMAP/GI/1 queues with and without retrials
read the original abstract
The main contribution of this paper is to prove the subexponential tail equivalence of the stationary queue length distributions in the BMAP/GI/1 queues with and without retrials. We first present a stochastic-decomposition-like result of the stationary queue length in the BMAP/GI/1 retrial queue, which is an extension of the stochastic decomposition of the stationary queue length in the M${}^X$/GI/1 retrial queue. The stochastic-decomposition-like result shows that the stationary queue length distribution in the BMAP/GI/1 retrial queue is decomposed into two parts: the stationary conditional queue length distribution given that the server is idle; and a certain matrix sequence associated with the stationary queue length distribution in the corresponding standard BMAP/GI/1 queue (without retrials). Using the stochastic-decomposition-like result and matrix analytic methods, we prove the subexponential tail equivalence of the stationary queue length distributions in the BMAP/GI/1 queues with and without retrials. This tail equivalence result does not necessarily require that the size of an arriving batch is light-tailed, unlike Yamamuro's result for the M${}^X$/GI/1 retrial queue (Queueing Syst. 70:187--205, 2012). As a by-product, the key lemma to the roof of the main theorem presents a subexponential asymptotic formula for the stationary distribution of a level-dependent M/G/1-type Markov chain, which is the first reported result on the subexponential asymptotics of level-dependent block-structured Markov chains.
This paper has not been read by Pith yet.
discussion (0)
Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.