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Inverse Gaussian process model with frailty term in reliability analysis

机译:在可靠性分析中具有脆弱术语的逆高斯过程模型

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Traditional reliability analysis techniques focus on the occurrence of failures over time. Nevertheless, in certain cases where the occurrence of failures is tiny or almost null, the estimation of the quantities that describe the failure process is compromised. In this context, we introduce a reliability model for systems adopting the degradation process using frailty. The evolved degradation model has as experimental data, not the failure, but a quality feature attached to it. Degradation analysis can provide information about the lifetime distribution components without actually observing failures. In this paper, we propose an inverse Gaussian process model with frailty as a possible tool to investigate the effect of unobserved covariates. Moreover, a comparative study with the classical inverse Gaussian process based on simulated data was performed, revealing that the asymptotic properties of the maximum likelihood estimators are compromised when the presence of frailty is ignored. The application was based on two real data sets in the literature, showing that the inverse Gaussian process frailty models are propitious to use; however, gamma and inverse Gaussian distributions for frailty present similar results.
机译:传统的可靠性分析技术专注于故障的随时间发生。然而,在某些情况下,故障的发生很小或几乎为零,这说明故障处理量的估计就会大打折扣。在这种情况下,我们引入了采用使用脆弱降解过程系统可靠性模型。演进的劣化模型具有如实验数据,而不是失败,但连接到它的质量特征。退化分析可以提供有关寿命分布组件的信息,而无需实际观察故障。在本文中,我们提出与脆弱逆高斯过程模型作为可能的工具来调查未观察到协变量的影响。此外,进行与基于模拟数据的经典逆高斯过程的比较研究,揭示了当脆弱的存在被忽略的最大似然估计的渐近性受到损害。该应用程序是基于两个真实的数据集在文献中,显示出逆高斯过程脆弱模型是有利于使用;然而,γ和逆高斯分布为脆弱本类似的结果。

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