Statistical monitoring of multivariable dynamic processes with state‐space models
- 1 August 1997
- journal article
- process systems-engineeing
- Published by Wiley in AIChE Journal
- Vol. 43 (8) , 2002-2020
- https://doi.org/10.1002/aic.690430810
Abstract
Industrial continuous processes may have a large number of process variables and are usually operated for extended periods at fixed operating points under closed‐loop control, yielding process measurements that are autocorrelated, cross‐correlated, and collinear. A statistical process monitoring (SPM) method based on multivariate statistics and system theory is introduced to monitor the variability of such processes. The statistical model that describes the in‐control variability is based on a canonical‐variate (CV) state‐space model that is an equivalent representation of a vector autoregressive moving‐average time‐series model. The CV state variables obtained from the state‐space model are linear combinations of the past process measurements that explain the variability of the future measurements the most. Because of this distinctive feature, the CV state variables are regarded as the principal dynamic directions A T2statistic based on the CV state variables is used for developing an SPM procedure. Simple examples based on simulated data and an experimental application based on a high‐temperature short‐time milk pasteurization process illustrate advantages of the proposed SPM method.Keywords
This publication has 43 references indexed in Scilit:
- A subspace fitting method for identification of linear state-space modelsIEEE Transactions on Automatic Control, 1995
- Multivariate SPC Charts for Monitoring Batch ProcessesTechnometrics, 1995
- Multivariate Quality Control Based on Regression-Adjusted VariablesTechnometrics, 1991
- Canonical Variables as Optimal PredictorsThe Annals of Statistics, 1980
- Control Procedures for Residuals Associated With Principal Component AnalysisTechnometrics, 1979
- The Probability Plot Correlation Coefficient Test for NormalityTechnometrics, 1975
- A new look at the statistical model identificationIEEE Transactions on Automatic Control, 1974
- Stochastic theory of minimal realizationIEEE Transactions on Automatic Control, 1974
- Some Properties of the Range in Samples from Tukey's Symmetric Lambda DistributionsJournal of the American Statistical Association, 1971
- Analysis of a complex of statistical variables into principal components.Journal of Educational Psychology, 1933