| Article ID: | iaor20062447 |
| Country: | United Kingdom |
| Volume: | 56 |
| Issue: | 11 |
| Start Page Number: | 1241 |
| End Page Number: | 1249 |
| Publication Date: | Nov 2005 |
| Journal: | Journal of the Operational Research Society |
| Authors: | Brint A.T., Black M., Brailsford J.R. |
| Keywords: | markov processes |
Considerable benefits have been gained from using Markov decision processes to select condition-based maintenance policies for the asset management of infrastructure systems. A key part of the method is using a Markov process to model the deterioration of condition. However, the Markov model assumes constant transition probabilities irrespective of how long an item has been in a state. The semi-Markov model relaxes this assumption. This paper describes how to fit a semi-Markov model to observed condition data and the results achieved on two data sets. Good results were obtained even where there was only 1 year of observation data.