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Memory-type multivariate charts with fixed and variable sampling intervals for process mean when covariance matrix is unknown

机译:当协方差矩阵未知时,具有固定且可变采样间隔的内存类型多元图表,用于处理均值

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摘要

Memory-type multivariate charts have been widely recognized as a potentially powerful process monitoring tool because of their excellent speed in detecting small-to-moderate shifts in the mean vector of a multivariate normally distributed process, namely, the multivariate EWMA (MEWMA), double MEWMA, Crosier multivariate CUSUM (MCUSUM), and Pignatiello and Runger MCUSUM charts. These multivariate charts are based on the assumption that the covariance matrix is known in advance; but, it may not be known in practice. It is thus not possible to use these multivariate charts unless a large Phase I dataset is available from an in-control process. In this paper, we propose multivariate charts with fixed and variable sampling intervals for the process mean vector when the covariance matrix is estimated from sample. Using the Monte Carlo simulation method, the run length characteristics of the multivariate charts are computed. It is shown that the in-control and out-of-control run length performances of the proposed multivariate charts are robust to the changes in the process covariance matrix, while the existing multivariate charts are not. A real dataset is taken to explain the implementation of the proposed multivariate charts.
机译:内存类型多元图表已被广泛认为是潜在的强大过程监视工具,因为它们在检测多元正态分布过程的均值向量(即多变量EWMA(MEWMA),双MEWMA,Crosier多元CUSUM(MCUSUM),Pignatiello和Runger MCUSUM图表。这些多元图表基于以下假设:协方差矩阵是事先已知的。但是,在实践中可能未知。因此,除非可以从控制中过程中获得大量的第一阶段数据集,否则无法使用这些多元图表。在本文中,当从样本估计协方差矩阵时,我们为过程均值向量提供了具有固定和可变采样间隔的多元图表。使用蒙特卡洛模拟方法,可以计算多元图表的游程长度特征。结果表明,所提出的多元图表的控制内和失控游程长度性能对过程协方差矩阵的变化具有鲁棒性,而现有的多元图表却没有。实际数据集用于解释所提出的多元图表的实现。

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