Home
Scholarly Works
Bivariate Constant-Stress Accelerated Degradation...
Journal article

Bivariate Constant-Stress Accelerated Degradation Model and Inference

Abstract

To assess the reliability of highly reliable products that have two or more performance characteristics (PCs) in an accurate manner, relations between the PCs should be taken duly into account. If they are not independent, it would then become important to describe the dependence of the PCs. For many products, the constant-stress degradation test cannot provide sufficient data for reliability evaluation and for this reason, accelerated degradation test is usually performed. In this article, we assume that a product has two PCs and that the PCs are governed by a Wiener process with a time scale transformation, and the relationship between the PCs is described by the Frank copula function. The copula parameter is dependent on stress and assumed to be a function of stress level that can be described by a logistic function. Based on these assumptions, a bivariate constant-stress accelerated degradation model is proposed here. The direct likelihood estimation of parameters of such a model becomes analytically intractable, and so the Bayesian Markov chain Monte Carlo (MCMC) method is developed here for this model for obtaining the maximum likelihood estimates (MLEs) efficiently. For an illustration of the proposed model and the method of inference, a simulated example is presented along with the associated computational results.

Authors

Pan Z; Balakrishnan* N; Sun Q

Journal

Communications in Statistics - Simulation and Computation, Vol. 40, No. 2, pp. 247–257

Publisher

Taylor & Francis

Publication Date

January 7, 2011

DOI

10.1080/03610918.2010.534227

ISSN

0361-0918

Contact the Experts team