State-space independent component analysis for nonlinear dynamic process monitoring

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dc.contributor.author Odiowei, P. P. -
dc.contributor.author Cao, Yi -
dc.date.accessioned 2011-09-08T09:13:15Z
dc.date.available 2011-09-08T09:13:15Z
dc.date.issued 2010-08-15T00:00:00Z -
dc.identifier.issn 0169-7439 -
dc.identifier.uri http://dx.doi.org/10.1016/j.chemolab.2010.05.014 -
dc.identifier.uri http://dspace.lib.cranfield.ac.uk/handle/1826/4743
dc.description.abstract The cost effective benefits of process monitoring will never be over emphasised. Amongst monitoring techniques, the Independent Component Analysis (ICA) is an efficient tool to reveal hidden factors from process measurements, which follow non-Gaussian distributions. Conventionally, most ICA algorithms adopt the Principal Component Analysis (PCA) as a pre-processing tool for dimension reduction and de-correlation before extracting the independent components (ICs). However, due to the static nature of the PCA, such algorithms are not suitable for dynamic process monitoring. The dynamic extension of the ICA (DICA), similar to the dynamic PCA, is able to deal with dynamic processes, however unsatisfactorily. On the other hand, the Canonical Variate Analysis(CVA) is an ideal tool for dynamic process monitoring, however is not sufficient for nonlinear systems where most measurements follow non-Gaussian distributions. To improve the performance of nonlinear dynamic process monitoring, a state space based ICA (SSICA) approach is proposed in this work. Unlike the conventional ICA, the proposed algorithm employs the CVA as a dimension reduction tool to construct a state space, from where statistically independent components are extracted for process monitoring. The proposed SSICA is applied to the Tennessee Eastman Process Plant as a case study. It shows that the new SSICA provides better monitoring performance and detect some faults earlier than other approaches, such as the DICA and the CVA. (C) 2010 Elsevier B.V. All rights reserved. en_UK
dc.language.iso en_UK -
dc.publisher Elsevier Science B.V., Amsterdam. en_UK
dc.subject Dynamic system Nonlinearity Principal component analysis Canonical variate analysis Independent component analysis Probability density function Kernel density estimation Process monitoring historical data-analysis multivariate processes en_UK
dc.title State-space independent component analysis for nonlinear dynamic process monitoring en_UK
dc.type Article -


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