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Reliability analysis of masked data in adaptive step-stress partially accelerated lifetime tests with progressive removal

机译:逐步消除的自适应步进应力部分加速寿命测试中掩盖数据的可靠性分析

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摘要

By combining the progressive hybrid censoring with the step-stress partially accelerated lifetime test, we propose an adaptive step-stress partially accelerated lifetime test, which allows random changing of the number of step-stress levels according to the pre-fixed censoring number and time points. Thus, the time expenditure and economic cost of the test will be reduced greatly. Based on the Lindley-distributed tampered failure rate (TFR) model with masked system lifetime data, the BFGS method is introduced in the expectation maximization (EM) algorithm to obtain the maximum likelihood estimation (MLE), which overcomes the difficulties of the vague maximization procedure in the M-step. Asymptotic confidence intervals of components' distribution parameters are also investigated according to the missing information principle. As comparison, the Bayesian estimation and the highest probability density (HPD) credible intervals are obtained by using adaptive rejection sampling. Furthermore, the reliability of the system and components are estimated at a specified time under usual and severe operating conditions. Finally, a numerical simulation example is presented to illustrate the performance of our proposed method.
机译:通过将渐进混合检查与逐步应力部分加速的寿命测试结合起来,我们提出了一种自适应逐步应力部分加速的寿命测试,该方法允许根据预先确定的检查次数和时间随机改变逐步应力水平的数量。点。因此,将大大减少测试的时间支出和经济成本。在具有屏蔽的系统寿命数据的Lindley分布式篡改失败率(TFR)模型的基础上,将BFGS方法引入期望最大化(EM)算法中以获得最大似然估计(MLE),克服了模糊最大化的难题M步骤中的步骤。根据信息丢失原理,研究了零件分布参数的渐近置信区间。作为比较,通过使用自适应拒绝采样来获得贝叶斯估计和最高概率密度(HPD)可信区间。此外,在正常和严酷的操作条件下的指定时间估计系统和组件的可靠性。最后,给出了一个数值仿真例子来说明我们提出的方法的性能。

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