A Closed Queueing Maintenance Network with Two Batch Policies
October 05, 2019 ยท Declared Dead ยท + Add venue
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Authors
Rui-Na Fan, Quan-Lin Li, Xiaole Wu, Zhe George Zhang
arXiv ID
1910.02276
Category
cs.PF: Performance
Cross-listed
cs.DC,
cs.SI,
math.DS,
math.PR
Citations
0
Last Checked
2 months ago
Abstract
This paper discusses a maintenance network with failed items that can be removed, repaired, redistributed, and reused under two batch policies: one for removing the failed items from each base to a maintenance shop and the other for redistributing the repaired items from the maintenance shop to bases. This maintenance network can be considered a virtual closed queueing network, and the Markov system of each node is described as an elegant block-structured Markov process whose stationary probabilities can be computed by the RG-factorizations. The structure of this maintenance network is novel and interesting. To compute the closed queueing network, we set up a new nonlinear matrix equation to determine the relative arrival rates, in which the nonlinearity comes from two different groups of processes: the failure and removal processes and the repair and redistribution processes. This paper also extends a simple queueing system of a node to a more general block-structured Markov process which can be computed by the RG-factorizations. Based on this, the paper establishes a more general product-form solution for the closed queueing network and provides performance analysis of the maintenance network. Our method will open a new avenue for quantitative evaluation of more general maintenance networks.
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