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A novel logarithmic approach to generate new probability distributions for data modeling in the engineering sector

Yuwei Zhao, Zubair Ahmad, Amani Alrumayh, M. Yusuf, Ramy Aldallal, Assem Elshenawy, Fathy H. Riad

2022Alexandria Engineering Journal19 citationsDOIOpen Access PDF

Abstract

In this paper, we introduce a new statistical methodology for updating the flexibility level of the traditional distributions. The newly developed method is called, the logarithmic-U family of distributions. For the logarithmic-U distributions, the estimation of the parameters via the maximum likelihood method is discussed. Some mathematical properties of the logarithmic-U distributions are also derived. By using the logarithmic-U method, an updated version of the Weibull model, namely, the logarithmic Weibull distribution is introduced. A simulation study for the logarithmic Weibull distribution is provided. Finally, the practical illustration of the logarithmic Weibull distribution is shown by analyzing two data sets taken from the engineering sector. The first data set represents the fracture toughness of Al2O3 material. Whereas, the second data set represents the fatigue fracture of Kelvar 373/epoxy. The practical applications show that the proposed logarithmic Weibull distribution is very competent for analyzing data sets in engineering and other related sectors.

Topics & Concepts

Weibull distributionLogarithmApplied mathematicsDistribution (mathematics)Probability distributionMathematicsDistribution fittingSet (abstract data type)Computer scienceStatistical physicsStatisticsMathematical analysisPhysicsProgramming languageFatigue and fracture mechanicsProbabilistic and Robust Engineering DesignStatistical Distribution Estimation and Applications
A novel logarithmic approach to generate new probability distributions for data modeling in the engineering sector | Litcius