One-shot devices analysis involves an extreme case of interval censoring, wherein one can only know whether the failure time is either before or after the test time. Some kind of one-shot devices do not get destroyed when tested, and so can continue within the experiment, providing extra information for inference, if they did not fail before an inspection time. In addition, their reliability can be rapidly estimated via accelerated life tests (ALTs) by running the tests at varying and higher stress levels than working conditions. In particular, step-stress tests allow the experimenter to increase the stress levels at pre-fixed times gradually during the life-testing experiment. The cumulative exposure model is commonly assumed for step-stress models, relating the lifetime distribution of units at one stress level to the lifetime distributions at preceding stress levels. In this paper,vwe develop robust estimators and Z-type test statistics based on the density power divergence (DPD) for testing linear null hypothesis for non-destructive one-shot devices under the step-stress ALTs with exponential lifetime distribution. We study asymptotic and robustness properties of the estimators and test statistics, yielding point estimation and confidence intervals for different lifetime characteristic such as reliability, distribution quantiles and mean lifetime of the devices. A simulation study is carried out to assess the performance of the methods of inference developed here and some real-life data sets are analyzed finally for illustrative purpose.
翻译:单发装置分析涉及一个极端的间隔检查案例,其中人们只能知道失败时间是在测试时间之前还是之后。某种一发装置在测试时不会被销毁,因此可以在实验中继续,如果在检查时间之前没有失败,则提供额外的推断信息。此外,可以通过加速生命测试(ALTs)快速估计其可靠性,其测试的强度比工作环境的强度要高和不同。特别是,步骤压力测试允许实验者在生命测试试验中逐渐增加前固定时间的压力水平。累积暴露模型通常被假定为继压力模型,将一个压力水平单位的一生分布与前压力水平的一生分布联系起来。在本文中,我们根据密度功率差异(DPD)来快速估计其可靠性和Z型测试统计数据,测试非毁灭性一发装置的直线性假设,并进行指数性终身分布分配。我们研究在生命压力模型模型中通常假设性和坚固度,将一个压力水平单位的一生分配与前压力水平的一生分配的一生分布情况联系起来。