Discrimination between the lognormal and Weibull Distributions by using multiple linear regression

In reliability analysis, both the Weibull and the lognormal distributions are analyzed by using the observed data logarithms. While the Weibull data logarithm presents skewness, the lognormal data logarithm is symmetrical. This paper presents a method to discriminate between both distributions based...

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Main Authors: Jesus Francisco Ortiz-Yañez, Manuel Román Piña Monarrez
Format: Article
Language:English
Published: Universidad Nacional de Colombia 2018-04-01
Series:Dyna
Subjects:
Online Access:https://revistas.unal.edu.co/index.php/dyna/article/view/66658
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spelling doaj-bb1602f130404f4f97d19996c26eb88b2020-11-24T22:03:02ZengUniversidad Nacional de Colombia Dyna0012-73532346-21832018-04-018520591810.15446/dyna.v85n205.6665848286Discrimination between the lognormal and Weibull Distributions by using multiple linear regressionJesus Francisco Ortiz-Yañez0Manuel Román Piña Monarrez1Ted de México SA de CVUniversidad Autónoma de Ciudad JuárezIn reliability analysis, both the Weibull and the lognormal distributions are analyzed by using the observed data logarithms. While the Weibull data logarithm presents skewness, the lognormal data logarithm is symmetrical. This paper presents a method to discriminate between both distributions based on: 1) the coefficients of variation (CV), 2) the standard deviation of the data logarithms, 3) the percentile position of the mean of the data logarithm and 4) the cumulated logarithm dispersion before and after the mean. The efficiency of the proposed method is based on the fact that the ratio of the lognormal (b1ln) and Weibull (b1w) regression coefficients (slopes) b1ln/b1w efficiently represents the skew behavior. Thus, since the ratio of the lognormal (Rln) and Weibull (Rw) correlation coefficients Rln/Rw (for a fixed sample size) depends only on the b1ln/b1w ratio, then the multiple correlation coefficient R2 is used as the index to discriminate between both distributions. An application and the impact that a wrong selection has on R(t) are given also.https://revistas.unal.edu.co/index.php/dyna/article/view/66658Weibull distributionlognormal distributiondiscrimination processmultiple linear regressionGumbel distribution
collection DOAJ
language English
format Article
sources DOAJ
author Jesus Francisco Ortiz-Yañez
Manuel Román Piña Monarrez
spellingShingle Jesus Francisco Ortiz-Yañez
Manuel Román Piña Monarrez
Discrimination between the lognormal and Weibull Distributions by using multiple linear regression
Dyna
Weibull distribution
lognormal distribution
discrimination process
multiple linear regression
Gumbel distribution
author_facet Jesus Francisco Ortiz-Yañez
Manuel Román Piña Monarrez
author_sort Jesus Francisco Ortiz-Yañez
title Discrimination between the lognormal and Weibull Distributions by using multiple linear regression
title_short Discrimination between the lognormal and Weibull Distributions by using multiple linear regression
title_full Discrimination between the lognormal and Weibull Distributions by using multiple linear regression
title_fullStr Discrimination between the lognormal and Weibull Distributions by using multiple linear regression
title_full_unstemmed Discrimination between the lognormal and Weibull Distributions by using multiple linear regression
title_sort discrimination between the lognormal and weibull distributions by using multiple linear regression
publisher Universidad Nacional de Colombia
series Dyna
issn 0012-7353
2346-2183
publishDate 2018-04-01
description In reliability analysis, both the Weibull and the lognormal distributions are analyzed by using the observed data logarithms. While the Weibull data logarithm presents skewness, the lognormal data logarithm is symmetrical. This paper presents a method to discriminate between both distributions based on: 1) the coefficients of variation (CV), 2) the standard deviation of the data logarithms, 3) the percentile position of the mean of the data logarithm and 4) the cumulated logarithm dispersion before and after the mean. The efficiency of the proposed method is based on the fact that the ratio of the lognormal (b1ln) and Weibull (b1w) regression coefficients (slopes) b1ln/b1w efficiently represents the skew behavior. Thus, since the ratio of the lognormal (Rln) and Weibull (Rw) correlation coefficients Rln/Rw (for a fixed sample size) depends only on the b1ln/b1w ratio, then the multiple correlation coefficient R2 is used as the index to discriminate between both distributions. An application and the impact that a wrong selection has on R(t) are given also.
topic Weibull distribution
lognormal distribution
discrimination process
multiple linear regression
Gumbel distribution
url https://revistas.unal.edu.co/index.php/dyna/article/view/66658
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