Multiscale PCA with application to multivariate statistical process monitoring
- 1 July 1998
- journal article
- process systems-engineering
- Published by Wiley in AIChE Journal
- Vol. 44 (7) , 1596-1610
- https://doi.org/10.1002/aic.690440712
Abstract
Multiscale principal‐component analysis (MSPCA) combines the ability of PCA to decorrelate the variables by extracting a linear relationship with that of wavelet analysis to extract deterministic features and approximately decorrelate autocorrelated measurements. MSPCA computes the PCA of wavelet coefficients at each scale and then combines the results at relevant scales. Due to its multiscale nature, MSPCA is appropriate for the modeling of data containing contributions from events whose behavior changes over time and frequency. Process monitoring by MSPCA involves combining only those scales where significant events are detected, and is equivalent to adaptively filtering the scores and residuals, and adjusting the detection limits for easiest detection of deterministic changes in the measurements. Approximate decorrelation of wavelet coefficients also makes MSPCA effective for monitoring autocorrelated measurements without matrix augmentation or time‐series modeling. In addition to improving the ability to detect deterministic changes, monitoring by MSPCA also simultaneously extracts those features that represent abnormal operation. The superior performance of MSPCA for process monitoring is illustrated by several examples.Keywords
This publication has 36 references indexed in Scilit:
- Multi-Scale Modeling, Estimation and Control of Processing SystemsComputers & Chemical Engineering, 1997
- Hierarchical multiblock PLS and PC models for easier model interpretation and as an alternative to variable selectionJournal of Chemometrics, 1996
- Efficient shift detection using multivariate exponentially-weighted moving average control charts and principal componentsQuality and Reliability Engineering International, 1996
- Wavelets: What next?Proceedings of the IEEE, 1996
- Wavelet representations of stochastic processes and multiresolution stochastic modelsIEEE Transactions on Signal Processing, 1994
- Multiscale recursive estimation, data fusion, and regularizationIEEE Transactions on Automatic Control, 1994
- Zero-crossings of a wavelet transformIEEE Transactions on Information Theory, 1991
- A theory for multiresolution signal decomposition: the wavelet representationPublished by Institute of Electrical and Electronics Engineers (IEEE) ,1989
- Principal CurvesJournal of the American Statistical Association, 1989
- FIR-median hybrid filtersIEEE Transactions on Acoustics, Speech, and Signal Processing, 1987