Perfect sampling of Jackson queueing networks

被引:0
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作者
Ana Bušić
Stéphane Durand
Bruno Gaujal
Florence Perronnin
机构
[1] INRIA,Département d’Informatique de l’ENS (DI ENS)
[2] ENS of Lyon,undefined
[3] INRIA,undefined
[4] CNRS,undefined
[5] LIG,undefined
[6] Univ. Grenoble Alpes,undefined
[7] LIG,undefined
来源
Queueing Systems | 2015年 / 80卷
关键词
Perfect simulation; Markov chain; Jackson networks ; Bounding process; 60H35; 68U20; 60K25; 65C99;
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摘要
We consider open Jackson networks with losses with mixed finite and infinite queues and analyze the efficiency of sampling from their exact stationary distribution. We show that perfect sampling is possible, although the underlying Markov chain may have an infinite state space. The main idea is to use a Jackson network with infinite buffers (that has a product form stationary distribution) to bound the number of initial conditions to be considered in the coupling from the past scheme. We also provide bounds on the sampling time of this new perfect sampling algorithm for acyclic or hyper-stable networks. These bounds show that the new algorithm is considerably more efficient than existing perfect samplers even in the case where all queues are finite. We illustrate this efficiency through numerical experiments. We also extend our approach to variable service times and non-monotone networks such as queueing networks with negative customers.
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页码:223 / 260
页数:37
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