Special Issue Article
Multi-phase analysis framework for handling batch process data
Article first published online: 13 JUN 2008
DOI: 10.1002/cem.1151
Copyright © 2008 John Wiley & Sons, Ltd.
Issue
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Journal of Chemometrics
Special Issue: Proceedings of the 10th Scandinavian Symposium on Chemometrics, SSC10
Volume 22, Issue 11-12, pages 632–643, November - December 2008
Additional Information
How to Cite
Camacho, J., Picó, J. and Ferrer, A. (2008), Multi-phase analysis framework for handling batch process data. J. Chemometrics, 22: 632–643. doi: 10.1002/cem.1151
Publication History
- Issue published online: 26 NOV 2008
- Article first published online: 13 JUN 2008
- Manuscript Accepted: 13 MAR 2008
- Manuscript Revised: 15 FEB 2008
- Manuscript Received: 13 JUL 2007
Funded by
- Spanish government. Grant Number: CICYT-FEDER DPI2005-01180
- European Union. Grant Number: CTM2005-06919-C03/TECNO
- FPU
- Secretaría de Estado de Educación y Universidades. Grant Number: AP2003-0346
- Abstract
- References
- Cited By
Keywords:
- multi-phase modelling;
- batch processes;
- principal component analysis;
- partial least squares;
- monitoring;
- prediction
Abstract
Principal component analysis (PCA) and partial least squares (PLS) are bilinear modelling tools which have been successfully applied to three-way batch process data for monitoring and quality prediction. Most modelling approaches in the literature are based on a fixed model structure. The approach proposed in this paper, named the Multi-phase (MP) analysis framework, provides the flexibility to adjust the model structure to the dynamic nature of the process under study. The existence of several phases, with dynamics of different order and changes in the correlation structure amongc variables, is effectively identified. This adjustment of the model structure to the features of the process yields performance improvements in several applications, such as the on-line monitoring and final quality prediction, as shown when comparing the MP models with various well-established modelling approaches. Also, the MP approach provides a set of valuable tools for process understanding and data handling. Data from two processes, a fermentation process and a waste-water treatment process, are used to illustrate the capabilities of the proposed modelling framework. Copyright © 2008 John Wiley & Sons, Ltd.

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