Bayesian enhanced decision making for deteriorating repairable systems with preventive maintenance

Bayesian enhanced decision making for deteriorating repairable systems with preventive maintenance

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Article ID: iaor200969507
Country: United States
Volume: 55
Issue: 2
Start Page Number: 105
End Page Number: 115
Publication Date: Mar 2008
Journal: Naval Research Logistics
Authors: , ,
Keywords: decision: studies
Abstract:

Since a system and its components usually deteriorate with age, preventive maintenance (PM) is often performed to restore or keep the function of a system in a good state. Furthermore, PM is capable of improving the health condition of the system and thus prolongs its effective age. There has been a vast amount of research to find optimal PM policies for deteriorating repairable systems. However, such decisions involve numerous uncertainties and the analyses are typically difficult to perform because of the scarcity of data. It is therefore important to make use of all information in an efficient way. In this article, a Bayesian decision model is developed to determine the optimal number of PM actions for systems which are maintained according to a periodic PM policy. A non-homogeneous Poisson process with a power law failure intensity is used to describe the deteriorating behavior of the repairable system. It is assumed that the status of the system after a PM is somewhere between as good as new for a perfect repair and as good as old for a minimal repair, and for failures between two preventive maintenances, the system undergoes minimal repairs. Finally, a numerical example is given and the results of the proposed approach are discussed after performing sensitivity analysis.

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