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Statistical Methods for Degradation Data with Dynamic Covariates Information and an Application to Outdoor Weathering Data

机译:动态协变量信息的退化数据统计方法及其在室外风化数据中的应用

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摘要

The Degradation data provide a useful resource for obtaining reliability information for some highly reliable products and systems. In addition to product/system degradation measurements, it is common nowadays to dynamically record product/system usage as well as other life-affecting environmental variables such as load, amount of use, temperature, and humidity. We refer to these variables as dynamic covariate information. In this paper, we introduce a class of models for analyzing degradation data with dynamic covariate information. We use a general path model with individual random effects to describe degradation paths and a vector time series model to describe the covariate process. Shape restricted splines are used to estimate the effects of dynamic covariates on the degradation process. The unknown parameters in the degradation data model and the covariate process model are estimated by using maximum likelihood. We also describe algorithms for computing an estimate of the lifetime distribution induced by the proposed degradation path model. The proposed methods are illustrated with an application for predicting the life of an organic coating in a complicated dynamic environment (i.e., changing UV spectrum and intensity, temperature, and humidity).
机译:降级数据为获取某些高度可靠的产品和系统的可靠性信息提供了有用的资源。除了产品/系统性能下降的测量之外,当今还经常动态记录产品/系统的使用情况以及其他影响寿命的环境变量,例如负载,使用量,温度和湿度。我们将这些变量称为动态协变量信息。在本文中,我们介绍了一类用于分析具有动态协变量信息的降级数据的模型。我们使用具有个体随机效应的一般路径模型来描述退化路径,并使用向量时间序列模型来描述协变量过程。形状受限制的样条曲线用于估计动态协变量对降解过程的影响。通过使用最大似然估计退化数据模型和协变量过程模型中的未知参数。我们还描述了用于计算所提出的退化路径模型所引起的寿命分布估计值的算法。所提出的方法与在复杂的动态环境(即,变化的紫外线光谱和强度,温度和湿度)中预测有机涂层寿命的应用一起说明。

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