Article ID: | iaor20163998 |
Volume: | 32 |
Issue: | 7 |
Start Page Number: | 2329 |
End Page Number: | 2343 |
Publication Date: | Nov 2016 |
Journal: | Quality and Reliability Engineering International |
Authors: | Barabadi Abbas, Garmabaki A H S, Ahmadi Alireza, Mahmood Yasser A |
Keywords: | simulation, statistics: empirical, maintenance, repair & replacement, transportation: rail, stochastic processes |
This paper proposes a model selection framework for analysing the failure data of multiple repairable units when they are working in different operational and environmental conditions. The paper provides an approach for splitting the non‐homogeneous failure data set into homogeneous groups, based on their failure patterns and statistical trend tests. In addition, when the population includes units with an inadequate amount of failure data, the analysts tend to exclude those units from the analysis. A procedure is presented for modelling the reliability of a multiple repairable units under the influence of such a group to prevent parameter estimation error. We illustrate the implementation of the proposed model by applying it on 12 frequency converters in the Swedish railway system. The results of the case study show that the reliability model of multiple repairable units within a large fleet may consist of a mixture of different stochastic models, that is, the homogeneous Poisson process/renewal process, trend renewal process, non‐homogeneous Poisson process and branching Poisson processes. Therefore, relying only on a single model to represent the behaviour of the whole fleet may not be valid and may lead to wrong parameter estimation.