Monitoring of a sequencing batch reactor using adaptive multiblock principal component analysis.

Multiway principal component analysis (MPCA) for the analysis and monitoring of batch processes has recently been proposed. Although MPCA has found wide applications in batch process monitoring, it assumes that future batches behave in the same way as those used for model identification. In this study, a new monitoring algorithm, adaptive multiblock MPCA, is developed. The method overcomes the problem of changing process conditions by updating the covariance structure recursively. A historical set of operational data of a multiphase batch process was divided into local blocks in such a way that the variables from one phase of a batch run could be blocked in the corresponding blocks. This approach has significant benefits because the latent variable structure can change for each phase during the batch operation. The adaptive multiblock model also allows for easier fault detection and isolation by looking at the relationship between blocks and at smaller meaningful block models, and it therefore helps in the diagnosis of the disturbance. The proposed adaptive multiblock monitoring method is successfully applied to a sequencing batch reactor for biological wastewater treatment.

[1]  Age K. Smilde,et al.  Multiway multiblock component and covariates regression models , 2000 .

[2]  Gustaf Olsson,et al.  Disturbance detection in wastewater treatment plants , 1998 .

[3]  John F. MacGregor,et al.  Multivariate SPC charts for monitoring batch processes , 1995 .

[4]  Svante Wold,et al.  Hierarchical multiblock PLS and PC models for easier model interpretation and as an alternative to variable selection , 1996 .

[5]  J. Macgregor,et al.  Analysis of multiblock and hierarchical PCA and PLS models , 1998 .

[6]  Weihua Li,et al.  Recursive PCA for Adaptive Process Monitoring , 1999 .

[7]  P. Minkkinen,et al.  A combined approach of partial least squares and fuzzy c-means clustering for the monitoring of an activated-sludge waste-water treatment plant , 1998 .

[8]  John F. MacGregor STATISTICAL PROCESS CONTROL OF MULTIVARIATE PROCESSES , 1994 .

[9]  Kun Soo Chang,et al.  Hybrid neural network modeling of a full-scale industrial wastewater treatment process. , 2002, Biotechnology and bioengineering.

[10]  Barry M. Wise,et al.  The process chemometrics approach to process monitoring and fault detection , 1995 .

[11]  A. A. Tates,et al.  Monitoring a PVC batch process with multivariate statistical process control charts , 1999 .

[12]  C Rosen,et al.  Multivariate and multiscale monitoring of wastewater treatment operation. , 2001, Water research.

[13]  John F. MacGregor,et al.  Adaptive batch monitoring using hierarchical PCA , 1998 .

[14]  P A Vanrolleghem,et al.  An integrated sensor for the monitoring of aerobic and anoxic activated sludge activities in biological nitrogen removal plants. , 2003, Water science and technology : a journal of the International Association on Water Pollution Research.

[15]  A. Savitzky,et al.  Smoothing and Differentiation of Data by Simplified Least Squares Procedures. , 1964 .

[16]  Michael J. Piovoso,et al.  On unifying multiblock analysis with application to decentralized process monitoring , 2001 .

[17]  B. Kowalski,et al.  Partial least-squares regression: a tutorial , 1986 .

[18]  Wojtek J. Krzanowski,et al.  Cross-Validation in Principal Component Analysis , 1987 .

[19]  John F. MacGregor,et al.  Process monitoring and diagnosis by multiblock PLS methods , 1994 .

[20]  B Lennox,et al.  Process monitoring of an industrial fed-batch fermentation. , 2001, Biotechnology and bioengineering.

[21]  P A Vanrolleghem,et al.  Modelling the activated sludge flocculation process combining laser light diffraction particle sizing and population balance modelling (PBM). , 2002, Water science and technology : a journal of the International Association on Water Pollution Research.

[22]  J. Macgregor,et al.  Monitoring batch processes using multiway principal component analysis , 1994 .

[23]  J. M. Park,et al.  Biological nitrogen removal with enhanced phosphate uptake in a sequencing batch reactor using single sludge system. , 2001, Water research.

[24]  B. Bakshi Multiscale PCA with application to multivariate statistical process monitoring , 1998 .

[25]  Peter A. Vanrolleghem,et al.  NDBEPR process optimization in SBRs: reduction of external carbon-source and oxygen supply , 1994 .

[26]  O. Hao,et al.  Sequencing batch reactor system for nutrient removal : ORP and pH profiles , 1996 .