Title of article
Bayesian Inference of Reliability Growth- Oriented Weibull Distribution for Multiple Mechanical Stages Systems
Author/Authors
Nadjafi, M. Aerospace Research Institute (Ministry of Science, Research and Technology), Tehran, Iran , Gholami, P. Department of Aerospace Engineering - Sharif University of Technology, Tehran, Iran
Pages
8
From page
77
To page
84
Abstract
The Duane and Crow-AMSAA reliability growth model has been traditionally used to model systems and products undergoing
development testing. The Non-Homogeneous Poisson Process (NHPP) with a power intensity law has been often used as a model for
describing the failure pattern of the repairable systems and the maximum likelihood (ML) estimates are used to calculate the
unknown parameters widely. This study proposes the statistical analysis method of different stages and different level data based on
Bayes analysis techniques. To this end, the Bayesian reliability growth model of multiple stages is coupled with the Weibull
distribution product. By using the unique properties of the assumed prior distributions, the moments of the posterior distribution of
the failure rate at various stages during a development test can be found. In this paper, it is assumed that the scale parameter has a
Gamma prior density function, and the growth parameter has a Uniform prior distribution. Monte Carlo simulations are used to
compute the Bayes estimates. Finally, the results obtained from the proposed method by implementing it on an application example
are compared with Crow-AMSAA data and show that the proposed model has higher accuracy than the existing traditional methods
Keywords
Reliability Growth , Non-Homogeneous Poisson Process (NHPP) , Bayes Analysis
Journal title
International Journal of Reliability, Risk and Safety: Theory and Application
Serial Year
2020
Record number
2734852
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