Statistical analysis and online monitoring for multimode processes with between-mode transitions

In the present work, an improved statistical analysis, modeling and monitoring strategy is proposed for multimode processes with between-mode transitions. The subject of analysis is multi-source measurement data, with each source of data corresponding to one operation mode. The basic assumption is t...

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Published inChemical engineering science Vol. 65; no. 22; pp. 5961 - 5975
Main Authors Zhao, Chunhui, Yao, Yuan, Gao, Furong, Wang, Fuli
Format Journal Article
LanguageEnglish
Published Kidlington Elsevier Ltd 15.11.2010
Elsevier
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ISSN0009-2509
1873-4405
DOI10.1016/j.ces.2010.08.024

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Summary:In the present work, an improved statistical analysis, modeling and monitoring strategy is proposed for multimode processes with between-mode transitions. The subject of analysis is multi-source measurement data, with each source of data corresponding to one operation mode. The basic assumption is that the underlying correlations among the different modes are similar to a certain extent and a multimode common community can thus be enclosed by some common bases immune to the mode changes. By making an adequate projection of measurement space, the mode-common subspace is separated and can be represented by a robust statistical model. The remaining mode-specific subspace would be more specific to different operation modes. Moreover, a between-mode transition identification algorithm is designed, which can distinguish the normal transition behaviors from those abnormal disturbances. The proposed method provides a detailed insight into the inherent nature of multimode processes from both inter-mode and inner-mode viewpoints. More process information is captured which enhances one’s understanding of the multimode problem. Its feasibility and performance are illustrated with a practical case.
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ISSN:0009-2509
1873-4405
DOI:10.1016/j.ces.2010.08.024