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BAYESIAN ESTIMATION AND PREDICTION OF THE INTENSITY OF THE POWER LAW PROCESS

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In analyzing failure data pertaining to a repairable system, perhaps the most widely used parametric model is a nonhomogeneous Poisson process with Weibull intensity, more commonly referred to as the Power Law Process (PLP) model. Investigations relating to inference of parameters of the PLP under a frequentist framework abound in the literature. The focus of this article is to supplement those findings from a Bayesian perspective, which has thus far been explored to a limited extent in this context. Main emphasis is on the inference of the intensity function of the PLP. Both estimation and future prediction are considered under traditional as well as more complex censoring schemes. Modern computational tools such as Markov Chain Monte Carlo are exploited efficiently to facilitate the numerical evaluation process. Results from the Bayesian inference are contrasted with the corresponding findings from a frequentist analysis, both from a qualitative and a quantitative viewpoint. The developed methodology is implemented in analyzing interval-censored failure data of equipments in a fleet of marine vessels.

Keywords: Aggregated data; Bayesian inference; Intensity function; Markov chain Monte Carlo; Power Law Process; Repairable systems

Document Type: Research Article

Affiliations: Department of Mathematical Statistics, Oakland University, Rochester, MI 48309, USA

Publication date: 01 January 2002

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