
This paper studies an admission control M/M/1 queueing system. It shows that the only gain (average) optimal stationary policies with gain and bias which satisfy the optimality equation are of control limit type, that there are at most two and, if there are two, they occur consecutively. Conditions are provided which ensure the existence of two gain optimal control limit policies and are illustrated with an example. The main result is that bias optimality distinguishes these two gain optimal policies and that the larger of the two control limits is the unique bias optimal stationary policy. Consequently it is also Blackwell optimal. This result is established by appealing to the third optimality equation of the Markov decision process and some observations concerning the structure of solutions of the second optimality equation.
Markov and semi-Markov decision processes, Applications of Markov renewal processes (reliability, queueing networks, etc.), optimal control limit policies, Markov decision process, admission control \(M/M/1\) queueing system
Markov and semi-Markov decision processes, Applications of Markov renewal processes (reliability, queueing networks, etc.), optimal control limit policies, Markov decision process, admission control \(M/M/1\) queueing system
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