Artículo de revista
Reliability data analysis of systems in the wear-out phase using a (corrected) q-Exponential likelihood
Fecha
2020Registro en:
Reliability Engineering and System Safety.Vol.197: (2020): 106787
10.1016/j.ress.2019.106787
Autor
Souza Vidal de Negreiros, Ana Cláudia
Didier Lins, Isis
das Chagas Moura, Márcio José
López Droguett, Enrique
Institución
Resumen
Maintenance-related decisions are often based on the expected number of interventions during a specified period of time. The proper estimation of this quantity relies on the choice of the probabilistic model that best fits reliability-related data. In this context, the q-Exponential probability distribution has emerged as a promising alternative. It can model each of the three phases of the bathtub curve; however, for the wear-out phase, its usage may become difficult due to the "monotone likelihood problem". Two correction methods (Firth's and resample-based) are considered and have their performances evaluated through numerical experiments. To aid the reliability analyst in applying the q-Exponential model, we devise a methodology involving original and corrected functions for point and interval estimates for the q-Exponential parameters and validation of the estimated models using the expected number of failures via Monte Carlo simulation and the bootstrapped Kolmogorov-Smirnov test. Two examples with failure data presenting increasing hazard rates are provided. The performances of the estimated q-Exponential, Weibull, q-Weibull and modified extended Weibull (MEW) models are compared. In both examples, the q-Exponential presented superior results, despite the increased flexibility of the q-Weibull and MEW distributions in modeling non-monotone hazard rates (e.g., bathtub-shaped).