This article introduces methods for constructing prediction bounds or intervals for the number of future failures from heterogeneous reliability field data. We focus on within-sample prediction where early data from a failure-time process is used to predict future failures from the same process. Early data from high-reliability products, however, often have limited information due to some combination of small sample sizes, censoring, and truncation. In such cases, we use a Bayesian hierarchical model to model jointly multiple lifetime distributions arising from different subpopulations of similar products. By borrowing information across subpopulations, our method enables stable estimation and the computation of corresponding prediction intervals, even in cases where there are few observed failures. Three applications are provided to illustrate this methodology, and a simulation study is used to validate the coverage performance of the prediction intervals.
翻译:本文介绍了根据各种可靠实地数据对未来失败次数进行预测的界限或间隔的方法。我们侧重于在利用故障时间过程的早期数据预测同一过程的未来失败之处进行抽样内预测。但是,高可靠性产品的早期数据往往由于样本规模小、检查和脱节等因素的组合而信息有限。在这种情况下,我们使用巴耶斯等级模型来模拟由类似产品的不同亚群组成的多种生命周期联合分布。通过在各亚群群中借用信息,我们的方法使得能够进行稳定的估计和计算相应的预测间隔,即使在很少观察到失败的情况下也是如此。提供了三种应用来说明这一方法,并使用模拟研究来验证预测间隔的覆盖范围。