AJOR  Vol.1 No.3 , September 2011
Allocation of Repairable and Replaceable Components for a System Availability Using Selective Maintenance with Probabilistic Maintenance Time Constraints
ABSTRACT
In this paper, we obtain optimum allocation of replaceable and repairable components in a system design. When repair and replace time are considered as random in the constraints. We convert probabilistic constraint into an equivalent deterministic constraint by using chance constrained programming. We have used the selective maintenance policy to determine how many components to be replaced & repaired within the limited maintenance time interval and cost. A Numerical example is presented to illustrate the computational procedure and problem is solved by using LINGO Software.

Cite this paper
nullI. Ali, M. Faisal Khan, Y. Raghav and A. Bari, "Allocation of Repairable and Replaceable Components for a System Availability Using Selective Maintenance with Probabilistic Maintenance Time Constraints," American Journal of Operations Research, Vol. 1 No. 3, 2011, pp. 147-154. doi: 10.4236/ajor.2011.13016.
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