Impact on performances of a condition-based maintenance policy of misspecification of gamma with inverse Gaussian degradation process

Autor: Nicola esposito, Bruno Castanier, Massimiliano Giorgio
Přispěvatelé: Michael Beer, Enrico Zio, Kok-Kwang Phoon, and Bilal M. Ayyub, Esposito, Nicola, Castanier, Bruno, Giorgio, Massimiliano
Jazyk: angličtina
Rok vydání: 2022
Předmět:
Popis: The gamma and inverse Gaussian processes are widely used to model monotonically increasing degradation phenomena. In many applications these models are treated as equivalent to each other, although this is not true. This makes the misspecification of these two processes a problem of concern. The point of this paper is to evaluate whether and how selecting the wrong model can impact on the performance of a condition-based maintenance policy recently proposed in the literature. The analyses are conducted by carrying out a large Monte Carlo study, where synthetic sets of degradation data are generated under three different gamma processes, which simulate as many experimental scenarios. The parameters of the competing models are estimated from the synthetic datasets and the resulting estimated models are used to optimize the considered maintenance policy. A misspecification is assumed to occur if the Akaike information criterion leads to prefer the wrong model. The effect of a misspecification is evaluated in terms of its impact on the long run average maintenance cost rate.
Databáze: OpenAIRE