© Copyright 2015 by ASQ. High-dimensional and time-dependent data pose significant challenges to statistical process monitoring. Dynamic principal-component analysis, recursive principal-component analysis, and moving-window principal-component analysis have been proposed to cope with high-dimensional and time-dependent features. We present a comprehensive review of this literature for the practitioner encountering this topic for the first time. We detail the implementation of the aforementioned methods and direct the reader toward extensions that may be useful to their specific problem. A real-data example is presented to help the reader draw connections between the methods and the behavior they display. Furthermore, we highlight several c...
Abnormal event management (AEM) is an important problem in industrial chemical process operations. P...
Extensive overload of data obtained from batch processes see the need for reduced dimensional analys...
The control charts with the Principal Component Analysis (PCA) approach and its extension are among ...
Control charts are tools developed in statistical process monitoring (SPM) to identify when a proces...
This dissertation will focus on investigating and improving techniques used in the statistical proce...
Principal Component Analysis (PCA) based, time-series analysis methods have become basic tools of ev...
This paper proposes a multivariate process monitoring method based on probabilistic principal compon...
Scale-invariant principal component analysis (PCA) is prevalent in process monitoring because of its...
While principal component analysis (PCA) has found wide application in process monitoring, slow and ...
Methods based on principal component analysis (PCA) are widely used for statistical process monitori...
Principal component analysis (PCA) is an exploratory statistical method for graphical description of...
© 2016 Taylor & Francis. During the last decades, we evolved from measuring few process variables ...
Abstract: In this paper, a new nonlinear process monitoring technique based upon kernel principal co...
In this work extensions to principal component analysis (PCA) for wastewater treatment (WWT) process...
Principal Component Analysis (PCA) is a popular data reduction technique widely used in data mining....
Abnormal event management (AEM) is an important problem in industrial chemical process operations. P...
Extensive overload of data obtained from batch processes see the need for reduced dimensional analys...
The control charts with the Principal Component Analysis (PCA) approach and its extension are among ...
Control charts are tools developed in statistical process monitoring (SPM) to identify when a proces...
This dissertation will focus on investigating and improving techniques used in the statistical proce...
Principal Component Analysis (PCA) based, time-series analysis methods have become basic tools of ev...
This paper proposes a multivariate process monitoring method based on probabilistic principal compon...
Scale-invariant principal component analysis (PCA) is prevalent in process monitoring because of its...
While principal component analysis (PCA) has found wide application in process monitoring, slow and ...
Methods based on principal component analysis (PCA) are widely used for statistical process monitori...
Principal component analysis (PCA) is an exploratory statistical method for graphical description of...
© 2016 Taylor & Francis. During the last decades, we evolved from measuring few process variables ...
Abstract: In this paper, a new nonlinear process monitoring technique based upon kernel principal co...
In this work extensions to principal component analysis (PCA) for wastewater treatment (WWT) process...
Principal Component Analysis (PCA) is a popular data reduction technique widely used in data mining....
Abnormal event management (AEM) is an important problem in industrial chemical process operations. P...
Extensive overload of data obtained from batch processes see the need for reduced dimensional analys...
The control charts with the Principal Component Analysis (PCA) approach and its extension are among ...