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Nonparametric multivariate Polya tree EWMA control chart for process changepoint detection

机译:工艺切换点检测的非参数多变量多变量树EWMA控制图

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摘要

In this article, we propose a nonparametric multivariate control scheme for simultaneously monitoring several related characteristics of a process in time. Through the use of a novel weighted multivariate Polya tree, the proposed method can quickly detect small mean and/or variance shifts in various types of longitudinal processes, Gaussian or non-Gaussian. Briefly, we center a weighted multivariate Polya tree at an initial parametric model on the monitored process, such as multivariate Gaussian; then by adding more details via data, departures from the parametric model will be captured and used for adjusting the initial model to obtain robust estimation. By weighting the Polya tree in the test statistic, the proposed chart thus can heighten the sensitivity of detecting one or more out of control characteristics. Examples show that our chart performs good for monitoring a process where the normality assumption is violated. Particularly, the proposed chart is more sensitive to variance shifts compared to the multivariate EWMA and multivariate CUSUM charts.
机译:在本文中,我们提出了一种非参数多变量控制方案,用于同时监测时间的几个相关的过程。通过使用一种新型加权多变量多变量树,所提出的方法可以快速检测各种类型的纵向过程,高斯或非高斯的小平均值和/或方差。简而言之,我们将加权多变量多变量在受监测过程中的初始参数模型中居中,例如多变量高斯;然后通过数据添加更多详细信息,将捕获来自参数模型的偏离,并用于调整初始模型以获得鲁棒估计。通过在测试统计中加权Polya树,所提出的图表可以提高检测一个或多个失控特性的灵敏度。示例表明,我们的图表对于监视违反正常性假设的过程良好。特别是,与多元EWMA和多变量CUSUM图表相比,所提出的图表对方差移位更敏感。

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