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A Graphical Technique and Penalized Likelihood Method for Identifying and Estimating Infant Failures

机译:识别和估计婴儿失败的图形技术和惩罚似然法

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摘要

Field failure data often exhibit extra heterogeneity as early failure data may have quite different distribution characteristics from later failure data. These infant failures may come from a defective subpopulation instead of the normal product population. Many exiting methods for field failure analyses focus only on the estimation for a hypothesized mixture model, while the model identification is ignored. This paper aims to develop efficient, accurate methods for both detecting data heterogeneity, and estimating mixture model parameters. Mixture distribution detection is achieved by applying a mixture detection plot (MDP) on field failure observations. The penalized likelihood method, and the expectation-maximization (EM) algorithm are then used for estimating the components in the mixture model. Two field datasets are employed to demonstrate and validate the proposed approach.
机译:现场故障数据通常表现出额外的异质性,因为早期故障数据可能具有与后来的故障数据完全不同的分布特征。这些婴儿衰竭可能是由于有缺陷的亚人群而不是正常的产品人群造成的。许多现有的现场失效分析方法只关注于假设混合模型的估计,而模型识别却被忽略。本文旨在开发一种有效,准确的方法来检测数据异质性和估计混合模型参数。通过在现场故障观察中应用混合物检测图(MDP)来实现混合物分布检测。然后使用惩罚似然法和期望最大化(EM)算法来估计混合模型中的成分。使用两个现场数据集来演示和验证所提出的方法。

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