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Statistical inference for a repairable system subject to shocks: classical vs. Bayesian

机译:遭受冲击的可修复系统的统计推断:经典与贝叶斯

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Consider a repairable system subject to shocks that arrive according to a non-homogeneous Poisson process (NHPP). As a shock occurs, two types of failure may be happened. Type-I failure occurs with probability q and is rectified by a minimal repair, whereas type-II failure takes place with probability p?=?1?q and is removed by replacement. The system is replaced at the nth type I failure or at type II failure, whichever comes first. In the present paper, we find a general representation for the likelihood function of the proposed model. Then, we follow both classical and Bayesian procedures to estimate the model parameters when the time to first failure is a Weibull distribution. Because the Bayesian estimation cannot be obtained in a closed form, we use two approximation methods: Lindley's approximation and MCMC method. Finally, a Monte Carlo simulation is conducted to compare the performance of estimators in classical and Bayesian procedures.
机译:考虑根据非均匀泊松过程(NHPP)受到冲击的可修复系统。当发生电击时,可能会发生两种类型的故障。 I型故障发生的概率为q,并通过最小程度的修复得以纠正,而II型故障发生的概率为p≥1πq,并通过替换消除。在第n个I型故障或II型故障(以先到者为准)更换系统。在本文中,我们找到了所提出模型的似然函数的一般表示。然后,当首次失效的时间为威布尔分布时,我们遵循经典方法和贝叶斯方法来估计模型参数。由于无法以封闭形式获得贝叶斯估计,因此我们使用两种近似方法:Lindley近似和MCMC方法。最后,进行了蒙特卡洛模拟,以比较经典和贝叶斯程序中估计量的性能。

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