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Inference for a simple step-stress model with competing risks for failure from the exponential distribution under time constraint

机译:在时间约束下从指数分布推论具有竞争竞争失败风险的简单阶跃应力模型

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摘要

In reliability analysis, accelerated life-testing allows for gradual increment of stress levels on test units during an experiment. In a special class of accelerated life tests known as step-stress tests, the stress levels increase discretely at pre-fixed time points, and this allows the experimenter to obtain information on the parameters of the lifetime distributions more quickly than under normal operating conditions. Moreover, when a test unit fails, there are often more than one fatal cause for the failure, such as mechanical or electrical. In this article, we consider the simple step-stress model under time constraint when the lifetime distributions of the different risk factors are independently exponentially distributed. Under this setup, we derive the maximum likelihood estimators (MLEs) of the unknown mean parameters of the different causes under the assumption of a cumulative exposure model. Since it is found that the MLEs do not exist when there is no failure by any particular risk factor within the specified time frame, the exact sampling distributions of the MLEs are derived through the use of conditional moment generating functions. Using these exact distributions as well as the asymptotic distributions, the parametric bootstrap method, and the Bayesian posterior distribution, we discuss the construction of confidence intervals and credible intervals for the parameters. Their performance is assessed through Monte Carlo simulations and finally, we illustrate the methods of inference discussed here with an example.
机译:在可靠性分析中,加速的寿命测试可以在实验过程中逐渐增加测试单元上的应力水平。在称为阶跃压力测试的一类特殊的加速寿命测试中,应力水平在预定的时间点离散增加,这使得实验人员比正常操作条件下更快地获得有关寿命分布参数的信息。此外,当一个测试单元发生故障时,通常会导致一个以上的致命故障,例如机械故障或电气故障。在本文中,当不同风险因素的寿命分布呈指数分布时,我们考虑了时间约束下的简单阶跃应力模型。在这种设置下,我们在累积暴露模型的假设下,得出了不同原因的未知均值参数的最大似然估计器(MLE)。由于发现在指定时间范围内没有任何特定风险因素导致的故障时不存在MLE,因此可通过使用条件矩生成函数来得出MLE的精确采样分布。使用这些精确分布以及渐近分布,参数自举方法和贝叶斯后验分布,我们讨论了参数的置信区间和可信区间的构造。通过蒙特卡洛仿真评估了它们的性能,最后,我们通过一个例子说明了这里讨论的推理方法。

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