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RESEARCH PRODUCT

Using Unfold-PCA for batch-to-batch start-up process understanding and steady-state identification in a sequencing batch reactor

Alberto FerrerD. AguadoAurora SecoJosé Ferrer

subject

Steady statebusiness.industryProcess (engineering)Computer scienceApplied MathematicsSequencing batch reactorStart upAnalytical ChemistryChemometricsIdentification (information)Principal component analysisBatch processingProcess engineeringbusiness

description

In chemical and biochemical processes, steady-state models are widely used for process assessment, control and optimisation. In these models, parameter adjustment requires data collected under nearly steady-state conditions. Several approaches have been developed for steady-state identification (SSID) in continuous processes, but no attempt has been made to adapt them to the singularities of batch processes. The main aim of this paper is to propose an automated method based on batch-wise unfolding of the three-way batch process data followed by a principal component analysis (Unfold-PCA) in combination with the methodology of Brown and Rhinehart 2 for SSID. A second goal of this paper is to illustrate how by using Unfold-PCA, process understanding can be gained from the batch-to-batch start-ups and transitions data analysis. The potential of the proposed methodology is illustrated using historical data from a laboratory-scale sequencing batch reactor (SBR) operated for enhanced biological phosphorus removal (EBPR). The results demonstrate that the proposed approach can be efficiently used to detect when the batches reach the steady-state condition, to interpret the overall batch-to-batch process evolution and also to isolate the causes of changes between batches using contribution plots. Copyright © 2007 John Wiley & Sons, Ltd.

https://doi.org/10.1002/cem.1104