Statistical inference of a series reliability system using shock models with Weibull distribution

Author:

Sarhan Ammar M.1ORCID,Almetwally Ehab M.23ORCID,Mustafa Abdelfattah4ORCID,Tolba Ahlam H.4ORCID

Affiliation:

1. Department of Mathematics and Statistics Dalhousie University Halifax Canada

2. Department of Mathematics and Statistics, Faculty of Science Imam Mohammad Ibn Saud Islamic University (IMSIU) Riyadh Saudi Arabia

3. Department of Statistics, Faculty of Business Administration Delta University for Science and Technology Belkas Egypt

4. Department of Mathematics, Faculty of Science Mansoura University Mansoura Egypt

Abstract

AbstractIn this study, we define a series system with non‐independent and non‐identical components using a shock model with sources of fatal shocks. Here, it is assumed that the shocks happen randomly and independently, following a Weibull distribution with various scale and shape parameters. A dependability model with unknown parameters is produced by this process. Making statistical conclusions about the model parameters is the main objective of this research. We apply the maximum likelihood and Bayes approaches to determine the model parameters' point and interval estimates. We shall demonstrate that no analytical solutions to the likelihood equations must be solved to obtain the parameters' maximum likelihood estimates. As a result, we will use the R program to approximate the parameter point and interval estimates. Additionally, we will use the bootstrap‐t and bootstrap‐p methods to approximate the confidence intervals. About the Bayesian approach, we presume that each model parameter is independent and follows a gamma prior distribution with a range of attached hyperparameter values. The model parameters' posterior distribution does not take a practical form. We are unable to derive the Bayes estimates in closed forms as a result. To solve this issue, we use the Gibbs sampler from the Metropolis‐Hasting algorithm based on the Markov chain Monte Carlo method to condense the posterior distribution. To demonstrate the relevance of this research, a real data set application is detailed.

Publisher

Wiley

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