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On the structure of dynamic principal component analysis used in statistical process monitoring

机译:论动态主成分分析在统计过程监控中的应用

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摘要

When principal component analysis (PCA) is used for statistical process monitoring it relies on the assumption that data are time independent. However, industrial data will often exhibit serial correlation. Dynamic PCA (DPCA) has been suggested as a remedy for high-dimensional and time-dependent data. In DPCA the input matrix is augmented by adding time-lagged values of the variables. In building a DPCA model the analyst needs to decide on (1) the number of lags to add, and (2) given a specific lag structure, how many principal components to retain. In this article we propose a new analyst driven method to determine the maximum number of lags in DPCA with a foundation in multivariate time series analysis. The method is based on the behavior of the eigenvalues of the lagged autocorrelation and partial autocorrelation matrices. Given a specific lag structure we also propose a method for determining the number of principal components to retain. The number of retained principal components is determined by visual inspection of the serial correlation in the squared prediction error statistic, Q (SPE), together with the cumulative explained variance of the model. The methods are illustrated using simulated vector autoregressive and moving average data, and tested on Tennessee Eastman process data.
机译:当将主成分分析(PCA)用于统计过程监控时,它依赖于数据与时间无关的假设。但是,工业数据通常会显示出序列相关性。动态PCA(DPCA)已被建议作为高维和时间相关数据的一种补救措施。在DPCA中,通过添加变量的时滞值来扩充输入矩阵。在构建DPCA模型时,分析人员需要确定(1)要添加的滞后数量,以及(2)给定特定的滞后结构,要保留多少个主要成分。在本文中,我们提出了一种新的由分析人员驱动的方法,该方法以多变量时间序列分析为基础来确定DPCA中的最大滞后次数。该方法基于滞后自相关矩阵和部分自相关矩阵的特征值的行为。给定特定的滞后结构,我们还提出了一种确定要保留的主成分数量的方法。保留主成分的数量是通过目测检查平方预测误差统计量Q(SPE)中的序列相关性以及模型的累积解释方差来确定的。使用模拟的矢量自回归和移动平均数据说明了这些方法,并在田纳西州伊士曼过程数据上进行了测试。

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