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Impact of Autocorrelation on Principal Components and Their Use in Statistical Process Control

机译:自相关对主成分的影响及其在统计过程控制中的使用

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A basic assumption when using principal component analysis (PCA) for inferential purposes, such as in statistical process control (SPC), is that the data are independent in time. In many industrial processes, frequent sampling and process dynamics make this assumption unrealistic rendering sampled data autocorrelated (serially dependent). PCA can be used to reduce data dimensionality and to simplify multivariate SPC. Although there have been some attempts in the literature to deal with autocorrelated data in PCA, we argue that the impact of autocorrelation on PCA and PCA-based SPC is neither well understood nor properly documented. This article illustrates through simulations the impact of autocorrelation on the descriptive ability of PCA and on the monitoring performance using PCA-based SPC when autocorrelation is ignored. In the simulations, cross-correlated and autocorrelated data are generated using a stationary first-order vector autoregressive model. The results show that the descriptive ability of PCA may be seriously affected by autocorrelation causing a need to incorporate additional principal components to maintain the model's explanatory ability. When all variables have equal coefficients in a diagonal autoregressive coefficient matrix, the descriptive ability is intact, while a significant impact occurs when the variables have different degrees of autocorrelation. We also illustrate that autocorrelation may impact PCA-based SPC and cause lower false alarm rates and delayed shift detection, especially for negative autocorrelation. However, for larger shifts, the impact of autocorrelation seems rather small. (c) 2015 The Authors. Quality and Reliability Engineering International published by John Wiley & Sons Ltd.
机译:使用主成分分析(PCA)进行推理时(例如在统计过程控制(SPC)中)的基本假设是,数据在时间上是独立的。在许多工业过程中,频繁的采样和过程动态使这种假设变得不现实,从而使采样数据自相关(与序列相关)。 PCA可用于减少数据维数并简化多元SPC。尽管在文献中已经进行了一些尝试来处理PCA中的自相关数据,但我们认为自相关对PCA和基于PCA的SPC的影响既未得到很好的理解,也未得到适当的记录。本文通过仿真说明了在忽略自相关时,自相关对PCA的描述能力和基于PCA的SPC的监视性能的影响。在仿真中,使用固定的一阶矢量自回归模型生成互相关和自相关的数据。结果表明,PCA的描述能力可能会受到自相关的严重影响,从而需要合并其他主要成分来维持模型的解释能力。当所有变量在对角自回归系数矩阵中具有相等的系数时,描述能力将保持不变,而当变量具有不同的自相关程度时会产生重大影响。我们还说明,自相关可能会影响基于PCA的SPC,并导致较低的误报率和延迟的移位检测,尤其是对于负自相关。但是,对于较大的变化,自相关的影响似乎很小。 (c)2015作者。 John Wiley&Sons Ltd.发布的质量和可靠性工程国际。

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