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首页> 外文期刊>Journal of applied statistics >Multivariate process dispersion monitoring without subgrouping
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Multivariate process dispersion monitoring without subgrouping

机译:没有子组的多变量过程分散监测

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The memory-type adaptive and non-adaptive control charts are among the best control charts for detecting small-to-moderate changes in the process parameter(s). In this paper, we propose the Crosier CUSUM (CCUSUM), EWMA, adaptive CCUSUM (ACCUSUM) and adaptive EWMA (AEWMA) charts for efficiently monitoring the changes in the covariance matrix of a multivariate normal process without subgrouping. Using extensive Monte Carlo simulations, the length characteristics of these control charts are computed. It turns out that the ACCUSUM and AEWMA charts perform uniformly and substantially better than the CCUSUM and EWMA charts when detecting a range of shift sizes in the covariance matrix. Moreover, the AEWMA chart outperforms the ACCUSUM chart. A real dataset is used to explain the implementation of the proposed control charts.
机译:存储器型自适应和非自适应控制图是用于检测过程参数中的小于适度变化的最佳控制图中。在本文中,我们提出了克莱尔CUSUM(CCUSUM),EWMA,自适应CCUSUM(ACCUSUM)和自适应EWMA(AEWMA)图表,用于有效地监测多变量正常过程的协方差矩阵的变化而不进行子组。使用广泛的蒙特卡罗模拟,计算了这些控制图的长度特性。事实证明,当检测到协方差矩阵中的一系列换档尺寸时,AccuSum和AEWMA图表比CCUSUM和EWMA图表均匀而基本上执行。此外,AEWMA图表优于AccuSum图表。真实数据集用于解释所提出的控制图表的实现。

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