2008
DOI: 10.1016/j.apm.2007.02.023
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A recursive method for the F-policy G/M/1/K queueing system with an exponential startup time

Abstract: This paper deals with the optimal control of a finite capacity G/M/1 queueing system combined the F-policy and an exponential startup time before start allowing customers in the system. The F-policy queueing problem investigates the most common issue of controlling arrival to a queueing system. We provide a recursive method, using the supplementary variable technique and treating the supplementary variable as the remaining interarrival time, to develop the steady-state probability distribution of the number of… Show more

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Cited by 30 publications
(7 citation statements)
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“…Case 1. When p = 1 and θ = 1, the proposed model coincides with the model presented by [17]. Case 2.…”
Section: Special Casessupporting
confidence: 66%
“…Case 1. When p = 1 and θ = 1, the proposed model coincides with the model presented by [17]. Case 2.…”
Section: Special Casessupporting
confidence: 66%
“…The F -policy can be employed to resolve the issue of controlling of the arrivals in the queueing system so as to avoid the loss of revenue and inconvenience to the jobs. Based on F -policy, non-Markovian M/G/1/K and G/M/1/K queueing models were investigated by Wang et al [36,35]. The performance analysis of unreliable M/M/2/K queueing model by incorporating both F -policy and N -policy was developed by Jain et al [20].…”
Section: Madhu Jain and Sudeep Singh Sangamentioning
confidence: 99%
“…For F -policy queues, Wang, Kuo, and Pearn (2008) considered the optimum control of a G/M/1/K system combining F -policy and exponentially startup time before starting to allow clients in the system. The authors applied the supplementary variable technique to develop the steady-state probability distribution of the number of clients in the system.…”
Section: Introductionmentioning
confidence: 99%