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Multivariate monitoring for time-derivative non-Gaussian batch process
Authors:Min Han Kim  Chang Kyoo Yoo
Affiliation:(1) College of Environment and Applied Chemistry/Green Energy Center, Kyung Hee University, Seocheon-dong 1, Giheung-gu, Yongin-si, Gyeonggi-do, 446-701, Korea
Abstract:This research is an application of process monitoring on a pilot-scale sequencing batch reactor (SBR) using a batchwise multiway independent component analysis method (MICA) for denoising effect, which can extract meaningful hidden information from non-Gaussian data. Three-way batch data of SBR are unfolded batch wise, and then a multivariate monitoring method is used to capture the non-Gaussian and nonlinear characteristics of normal batches. It is successfully applied to an 80 L SBR for biological wastewater treatment, which is characterized by a variety of error sources with non-Gaussian characteristics. In the monitoring result, multiway principal component analysis (MPCA) can detect the abnormal batches with a false alarm rate of 47.5%, whereas MICA charts show less false alarm rate of 4.5%. The results of this pilot-scale SBR monitoring system using simple on-line measurements clearly demonstrated that the MICA monitoring technique showed lower false alarm rate and physically meaningful robust monitoring results.
Keywords:Batch Monitoring  Denoising  Multiway Independent Component Analysis (MICA)  Non-Gaussianity  Sequencing Batch Reactor (SBR)  Time-derivative
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