Reliability analysis of log-normal distribution with nonconstant parameters under constant-stress model

被引:0
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作者
Wei Cui
Zai-zai Yan
Xiu-yun Peng
Gai-mei Zhang
机构
[1] Jilin University of Finance and Economics,College of Sciences
[2] Inner Mongolia University of Technology,Department of Obstetrics and Gynecology
[3] Inner Mongolia Key Laboratory of Statistical Analysis Theory for Life Data and Neural Network Modeling,undefined
[4] Huhhot First Hospital,undefined
关键词
Constant-stress accelerated life test; Non-constant parameters; Bayesian estimation; Markov Chain Monte Carlo;
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学科分类号
摘要
Under constant-stress accelerated life test, the general progressive type-II censoring sample and the two parameters following the linear Arrhenius model, the point estimation and interval estimation of the two parameters log-normal distribution were discussed. The unknown parameters of the model as well as reliability and hazard rate functions are estimated by using Maximum likelihood (ML) and Bayesian methods. The maximum-likelihood estimates are derived by the Newton–Raphson method and the corresponding asymptotic variance is derived by the Fisher information matrix. Since the Bayesian estimates (BEs) of the unknown parameters cannot be expressed explicitly, the approximate BEs of the unknown parameters. The approximate highest posterior density confidence intervals are calculated. The practicality of the proposed method is illustrated by simulation study and real data application analysis.
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页码:818 / 831
页数:13
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