Estimation of Multicomponent System Reliability for a Bivariate Generalized Rayleigh Distribution

Parameshwar v.Pandit, Joshi Shubhashree
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引用次数: 3

Abstract

The study of a multicompnent system with k identical components which are independent to each other is considered in the present work. The components of the system have series structure with two dependent elements that are exposed to a common random stress. Here, strength vectors follow bivariate generalized Rayleigh distribution and a common random stress follow generalized Rayleigh distribution. The s-out-of-k system is said to function if atleast s out of k(1 ≤ s ≤ k) strength variables exceed the random stress. The estimation of system reliability is studied using maximum likelihood and Bayesian approaches. The maximum likelihood estimates are derived under simple random sampling and ranked set sampling schemes. The approximate Bayes estimates for system reliability are obtained using Lindley's approximation technique. Simulation study is conducted to study the performance of the estimators of reliability using mean squares error criteria.
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二元广义瑞利分布的多分量系统可靠性估计
本文研究了具有k个相互独立的相同组分的多组分系统。系统的组件具有串联结构,两个相互依赖的元件暴露在共同的随机应力下。其中,强度向量服从二元广义瑞利分布,普通随机应力服从广义瑞利分布。如果至少有s / k(1≤s≤k)个强度变量超过随机应力,则s-out- k系统起作用。利用极大似然和贝叶斯方法研究了系统可靠性的估计。给出了简单随机抽样和排序集抽样方案下的最大似然估计。利用林德利近似技术得到了系统可靠性的近似贝叶斯估计。采用均方误差准则对可靠性估计器的性能进行了仿真研究。
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