Principal components analysis (PCA) is often used in the analysis of multivariate process data to identify important combinations of the original variables on which to focus for more detailed study. However, PCA and other related projection techniques from the standard multivariate repertoire are not explicitly designed to address or to exploit the strong autocorrelation and temporal cross-correlation structures that are often present in multivariate process data. Here we propose two alternative projection techniques that do focus on the temporal structure in such data and that therefore produce components that may have some analytical advantages over those resulting from more conventional multivariate methods. As in PCA, both of our sugges...
The control and monitoring of an industrial process is performed in this paper by the multivariate c...
© Copyright 2015 by ASQ. High-dimensional and time-dependent data pose significant challenges to sta...
Pearson’s correlation measure is only able to model linear dependence between random variables. Henc...
International audienceThis paper contributes to the analysis, interpretation and the use of the prin...
Scale-invariant principal component analysis (PCA) is prevalent in process monitoring because of its...
Typescript (photocopy).A new procedure, called the principal component method, is developed to handl...
Principal Component Analysis (PCA) based, time-series analysis methods have become basic tools of ev...
A new methodology was reported [1,2] for integrated use of principal components analysis (PCA) and d...
After presenting (PCA) Principal Component Analysis and its relationship with time series data sets,...
Most business processes are, by nature, multivariate and autocorrelated. High-dimensionality is root...
Although there has been progress in the area of Multivariate Statistical Process Control (MSPC), the...
Dynamic principal component analysis (DPCA) is commonly used for monitoring multivariate processes t...
Texto completo: acesso restrito. p. 191–201The correlation analysis (CRA) theory is an important too...
As industrial processes become more and more complicated and our ability to capture data continuousl...
Principal Component Analysis (PCA) is very sensitive in presence of outliers. One of the most appeal...
The control and monitoring of an industrial process is performed in this paper by the multivariate c...
© Copyright 2015 by ASQ. High-dimensional and time-dependent data pose significant challenges to sta...
Pearson’s correlation measure is only able to model linear dependence between random variables. Henc...
International audienceThis paper contributes to the analysis, interpretation and the use of the prin...
Scale-invariant principal component analysis (PCA) is prevalent in process monitoring because of its...
Typescript (photocopy).A new procedure, called the principal component method, is developed to handl...
Principal Component Analysis (PCA) based, time-series analysis methods have become basic tools of ev...
A new methodology was reported [1,2] for integrated use of principal components analysis (PCA) and d...
After presenting (PCA) Principal Component Analysis and its relationship with time series data sets,...
Most business processes are, by nature, multivariate and autocorrelated. High-dimensionality is root...
Although there has been progress in the area of Multivariate Statistical Process Control (MSPC), the...
Dynamic principal component analysis (DPCA) is commonly used for monitoring multivariate processes t...
Texto completo: acesso restrito. p. 191–201The correlation analysis (CRA) theory is an important too...
As industrial processes become more and more complicated and our ability to capture data continuousl...
Principal Component Analysis (PCA) is very sensitive in presence of outliers. One of the most appeal...
The control and monitoring of an industrial process is performed in this paper by the multivariate c...
© Copyright 2015 by ASQ. High-dimensional and time-dependent data pose significant challenges to sta...
Pearson’s correlation measure is only able to model linear dependence between random variables. Henc...