Modeling engineering data using extended power-Lindley distribution: Properties and estimation methods
In this paper, we introduce a new flexible distribution called the Weibull Marshall-Olkin power-Lindley (WMOPL) distribution to extend and increase the flexibility of the power-Lindley distribution to model engineering related data. The WMOPL has the ability to model lifetime data with decreasing, i...
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doaj-02e69447c9244108b53aaa56a0b2e3442021-09-23T04:36:25ZengElsevierJournal of King Saud University: Science1018-36472021-12-01338101582Modeling engineering data using extended power-Lindley distribution: Properties and estimation methodsAbdulhakim A. Al-Babtain0Devendra Kumar1Ahmed M. Gemeay2Sanku Dey3Ahmed Z. Afify4Department of Statistics and Operations Research, King Saud University, Riyadh 11362, Saudi ArabiaDepartment of Statistics, Central University of Haryana, India; Corresponding author at: Department of Statistics, Central University of Haryana, India.Department of Mathematics, Faculty of Science, Tanta University, Tanta 31527, EgyptDepartment of Statistics, St. Anthony’s College, Shillong, Meghalaya 793001, IndiaDepartment of Statistics, Mathematics and Insurance, Benha University, Benha 13511, EgyptIn this paper, we introduce a new flexible distribution called the Weibull Marshall-Olkin power-Lindley (WMOPL) distribution to extend and increase the flexibility of the power-Lindley distribution to model engineering related data. The WMOPL has the ability to model lifetime data with decreasing, increasing, J-shaped, reversed-J shaped, unimodal, bathtub, and modified bathtub shaped hazard rates. Various properties of the WMOPL distribution are derived. Seven frequentist estimation methods are considered to estimate the WMOPL parameters. To evaluate the performance of the proposed methods and provide a guideline for engineers and practitioners to choose the best estimation method, a detailed simulation study is carried out. The performance of the estimators have been ranked based on partial and overall ranks. The performance and flexibility of the introduced distribution are studied using one real data set from the field of engineering. The data show that the WMOPL model performs better than some well-known extensions of the power-Lindley and Lindley distributions.http://www.sciencedirect.com/science/article/pii/S1018364721002445Anderson–Darling estimationMaximum likelihood estimationMaximum product of spacingMomentsPower-Lindley distribution |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Abdulhakim A. Al-Babtain Devendra Kumar Ahmed M. Gemeay Sanku Dey Ahmed Z. Afify |
spellingShingle |
Abdulhakim A. Al-Babtain Devendra Kumar Ahmed M. Gemeay Sanku Dey Ahmed Z. Afify Modeling engineering data using extended power-Lindley distribution: Properties and estimation methods Journal of King Saud University: Science Anderson–Darling estimation Maximum likelihood estimation Maximum product of spacing Moments Power-Lindley distribution |
author_facet |
Abdulhakim A. Al-Babtain Devendra Kumar Ahmed M. Gemeay Sanku Dey Ahmed Z. Afify |
author_sort |
Abdulhakim A. Al-Babtain |
title |
Modeling engineering data using extended power-Lindley distribution: Properties and estimation methods |
title_short |
Modeling engineering data using extended power-Lindley distribution: Properties and estimation methods |
title_full |
Modeling engineering data using extended power-Lindley distribution: Properties and estimation methods |
title_fullStr |
Modeling engineering data using extended power-Lindley distribution: Properties and estimation methods |
title_full_unstemmed |
Modeling engineering data using extended power-Lindley distribution: Properties and estimation methods |
title_sort |
modeling engineering data using extended power-lindley distribution: properties and estimation methods |
publisher |
Elsevier |
series |
Journal of King Saud University: Science |
issn |
1018-3647 |
publishDate |
2021-12-01 |
description |
In this paper, we introduce a new flexible distribution called the Weibull Marshall-Olkin power-Lindley (WMOPL) distribution to extend and increase the flexibility of the power-Lindley distribution to model engineering related data. The WMOPL has the ability to model lifetime data with decreasing, increasing, J-shaped, reversed-J shaped, unimodal, bathtub, and modified bathtub shaped hazard rates. Various properties of the WMOPL distribution are derived. Seven frequentist estimation methods are considered to estimate the WMOPL parameters. To evaluate the performance of the proposed methods and provide a guideline for engineers and practitioners to choose the best estimation method, a detailed simulation study is carried out. The performance of the estimators have been ranked based on partial and overall ranks. The performance and flexibility of the introduced distribution are studied using one real data set from the field of engineering. The data show that the WMOPL model performs better than some well-known extensions of the power-Lindley and Lindley distributions. |
topic |
Anderson–Darling estimation Maximum likelihood estimation Maximum product of spacing Moments Power-Lindley distribution |
url |
http://www.sciencedirect.com/science/article/pii/S1018364721002445 |
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