Automatic Control and Computer Sciences

, Volume 50, Issue 6, pp 397–407 | Cite as

On a strategy for the maintenance of an unreliable channel of a one-server loss queue

  • A. I. PeschanskyEmail author
  • A. I. Kovalenko


A semi-Markov model of a single-server queue GI/G/1/0 is constructed with regard to server maintenance that is carried out at the end of customer service if the total operation time (counted from the moment of the most recent maintenance or restoration) reaches a certain amount of time during customer service. The stationary reliability and economic characteristics of the queue are obtained. A three-criterion optimization of the execution rate of maintenance is performed.


one-server loss queue server maintenance the embedded Markov chain stationary distribution stationary characteristics three-criterion optimization 


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© Allerton Press, Inc. 2016

Authors and Affiliations

  1. 1.Sevastopol State UniversitySevastopolRussia
  2. 2.Samara State Technical UniversitySamaraRussia

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