2005
DOI: 10.1021/ie048873f
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Process Monitoring Approach Using Fast Moving Window PCA

Abstract: This paper introduces a fast algorithm for moving window principal component analysis (MWPCA) which will adapt a principal component model. This incorporates the concept of recursive adaptation within a moving window to (i) adapt the mean and variance of the process variables, (ii) adapt the correlation matrix, and (iii) adjust the PCA model by recomputing the decomposition. This paper shows that the new algorithm is computationally faster than conventional moving window techniques, if the window size exceeds … Show more

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Cited by 295 publications
(179 citation statements)
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“…RPCA with a forgetting factor 24 (henceforth RPCA), and MWPCA 25 have been proposed to monitor nonstationary processes. RPCA uses the idea of incorporating new observations and exponentially downweighting old ones to calculate the mean and covariance matrix used in PCA.…”
Section: Recursive Principal Component Analysismentioning
confidence: 99%
“…RPCA with a forgetting factor 24 (henceforth RPCA), and MWPCA 25 have been proposed to monitor nonstationary processes. RPCA uses the idea of incorporating new observations and exponentially downweighting old ones to calculate the mean and covariance matrix used in PCA.…”
Section: Recursive Principal Component Analysismentioning
confidence: 99%
“…Later the catalyst depletes its catalytic property. For this reason, spent catalyst is recycled to the regenerator where it is mixed with air in a fluidized bed for regeneration of its catalytic properties [22,23]. Complete details of the mechanistic simulation model for this particular model IV FCCU can be found in McFarlane et al [24].…”
Section: Application Studies and Discussionmentioning
confidence: 99%
“…Wang et al (2005) proposed a fast-moving-window algorithm for adaptive process monitoring, which incorporates the adaptation technique in a recursive PCA algorithm (Li et al, 2000) and performs through a two-step procedure to calculate the correlative matrix efficiently. In this study, the same idea is introduced to update the correlation and covariance matrices of the current score matrix to increase computational efficiency.…”
Section: Process Monitoring Proceduresmentioning
confidence: 99%