Incorporating second order statistics in process monitoring

M. Jafari, A. Safavi
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Abstract

One of the most applicable approaches in data driven process monitoring techniques is Principal Component Analysis (PCA). This approach assumes existence of uncorrelated stationary observations. Restriction of PCA-based process monitoring approaches on distribution function of observations has turned attentions to the use of Independent Component Analysis (ICA) algorithms. ICA is based on the assumption that at most one of the sources is Gaussian. Therefore, recent process monitoring approaches are based on FastICA algorithm which maximizes non-Gaussianity. As process variables can have any form of distribution function, implementing a method that has the ability to face all of the situations improves the monitoring quality. While both PCA-based and ICA-based monitoring approaches are restricted methods, this paper proposes extracting both Gaussian and non- Gaussian sources through Second Order Blind Identification for process monitoring. Besides, a new criterion for sorting sources is introduced. The applicability of the proposed method will be investigated through Tennessee Eastman Process.
在过程监控中加入二阶统计量
主成分分析(PCA)是数据驱动过程监控技术中最适用的方法之一。这种方法假定存在不相关的平稳观测。基于pca的过程监测方法对观测值分布函数的限制使人们开始关注独立分量分析(ICA)算法的使用。ICA基于一个假设,即最多有一个源是高斯的。因此,最近的过程监控方法是基于FastICA算法,该算法最大限度地提高了非高斯性。由于过程变量可以具有任何形式的分布函数,实现一种能够面对所有情况的方法可以提高监控质量。尽管基于pca和基于ica的监控方法都是受限的,但本文提出了通过二阶盲识别同时提取高斯和非高斯源的过程监控方法。此外,还引入了一种新的源分类准则。本文将通过田纳西伊士曼过程对该方法的适用性进行研究。
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