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MODELING AND MULTIRESOLUTION ANALYSIS IN A FULL-SCALE INDUSTRIAL PLANT
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  • Journal title : Environmental Engineering Research
  • Volume 10, Issue 2,  2005, pp.88-103
  • Publisher : Korean Society of Environmental Engineering
  • DOI : 10.4491/eer.2005.10.2.088
 Title & Authors
MODELING AND MULTIRESOLUTION ANALYSIS IN A FULL-SCALE INDUSTRIAL PLANT
Yoo, Chang-Kyoo; Son, Hong-Rok; Lee, In-Beum;
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 Abstract
In this paper, data-driven modeling and multiresolution analysis (MRA) are applied for a full-scale wastewater treatment plant (WWTP). The proposed method is based on modeling by partial least squares (PLS) and multiscale monitoring by a generic dissimilarity measure (GDM), which is suitable for nonstationary and non-normal process monitoring such as a biological process. Case study in an industrial plant showed that the PLS model could give good modeling performance and analyze the dynamics of a complex plant and MRA was useful to detect and isolate various faults due to its multiscale nature. The proposed method enables us to show the underlying phenomena as well as to filter out unwanted and disturbing phenomena.
 Keywords
 Language
English
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