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The Effect of Autocorrelation on the Hotelling T-2 Control Chart

机译:自相关对Hotelling T-2控制图的影响

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One of the basic assumptions for traditional univariate and multivariate control charts is that the data are independent in time. For the latter, in many cases, the data are serially dependent (autocorrelated) and cross-correlated because of, for example, frequent sampling and process dynamics. It is well known that the autocorrelation affects the false alarm rate and the shift-detection ability of the traditional univariate control charts. However, how the false alarm rate and the shiftdetection ability of the Hotelling T-2 control chart are affected by various autocorrelation and cross- correlation structures for different magnitudes of shifts in the process mean is not fully explored in the literature. In this article, the performance of the Hotelling T-2 control chart for different shift sizes and various autocorrelation and cross- correlation structures are compared based on the average run length using simulated data. Three different approaches in constructing the Hotelling T-2 chart are studied for two different estimates of the covariance matrix: (i) ignoring the autocorrelation and using the raw data with theoretical upper control limits; (ii) ignoring the autocorrelation and using the raw data with adjusted control limits calculated through Monte Carlo simulations; and (iii) constructing the control chart for the residuals from a multivariate time series model fitted to the raw data. To limit the complexity, we use a first-order vector autoregressive process and focus mainly on bivariate data. (c) 2014 The Authors. Quality and Reliability Engineering International published by John Wiley & Sons Ltd.
机译:传统单变量和多变量控制图的基本假设之一是数据在时间上是独立的。对于后者,在许多情况下,由于例如频繁的采样和过程动态,数据是串行相关的(自相关的)和交叉相关的。众所周知,自相关会影响传统单变量控制图的误报率和移位检测能力。但是,在文献中,对于过程平均值的不同变化幅度,各种自相关和互相关结构如何影响Hotelling T-2控制图的误报率和偏移检测能力的影响尚未得到充分研究。在本文中,基于平均行程,使用模拟数据比较了Hotelling T-2控制图针对不同档位大小以及各种自相关和互相关结构的性能。针对协方差矩阵的两个不同估计,研究了构造Hotelling T-2图表的三种不同方法:(i)忽略自相关,并使用具有理论上控制上限的原始数据; (ii)忽略自相关,并使用原始数据和通过蒙特卡洛模拟计算的调整后的控制限值; (iii)为拟合原始数据的多元时间序列模型构建残差控制图。为了限制复杂度,我们使用一阶向量自回归过程,并且主要关注双变量数据。 (c)2014作者。 John Wiley&Sons Ltd.发布的质量和可靠性工程国际。

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