Abstract

The main objective of this paper is to determine the best estimators of the shape and scale parameters of the two parameter Weibull distribution. Therefore, both classical and Bayesian approximation methods are considered. For parameter estimation of classical approximation methods maximum likelihood estimators (MLEs), modified maximum likelihood estimators-I (MMLEs-I), modified maximum likelihood estimators -II (MMLEs-II), least square estimators (LSEs), weighted least square estimators (WLSEs), percentile estimators (PEs), moment estimators (MEs), L-moment estimators (LMEs) and TL- moment estimators (TLMEs) are used. Since the Bayesian estimators don't have the explicit form. There are Bayes estimators are obtained by using Lindley's and Tierney Kadane's approximation methods in this study. In Bayesian approximation, the choice of loss function and prior distribution is very important. Hence, Bayes estimators are given based on both the non- informative and informative prior distribution. Moreover, these estimators have been calculated under different symmetric and asymmetric loss functions. The performance of classical and Bayesian estimators are compared with respect to their biases and MSEs through a simulation study. Finally, a real data set taken from Turkish State Meteorological Service is analysed for better understanding of methods presented in this paper.

Highlights

  • Weibull distribution is one of the most popular among life-time distributions

  • In case of the gamma prior (GP), we chose hyper-parameter values as a = 0:4; 1; 1:5; 3, b = 0:2; 1, c = 0:4; 1; 1:5; 3 and d = 0:2; 1: In both cases i.e. informative and non-informative, we considered as k = 1:5 for general entropy loss function (GELF)

  • In addition to these statistical criteria, the cumulative density function of the Weibull distribution (WD), Gamma distribution (GD), inverse Gauss distribution (IGD) and log- normal distribution (LND) were presented in Figure 1 for seasonal and annual wind speed data

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Summary

Introduction

Weibull distribution is one of the most popular among life-time distributions. The Weibull distribution was ...rst proposed by W. There are various di¤erent estimation methods in the literature for estimating the parameters of the Weibull distribution. In terms of Bayesian parameter estimation methods, Al Omari and Ibrahim [16] conducted a study on Bayesian survival estimator for Weibull distribution with censored data. Guure et al [17] provided the Bayesian estimation of two parameter Weibull distribution under three loss functions using extension of Je¤ey’s prior information. As far as we know this, this is the ...rst study which compares all these aforementioned estimation methods for choosing the best estimation method for the two- parameter Weibull distribution. A better estimation method is given for the distribution parameters. A real life example taken from Turkish State Meteorological Service is given

Weibull Distribution
The Methods for Parameter Estimation
Bayesian Analysis
Simulation study
Application
Conclusion
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