Title of article
Multivariate monitoring of fermentation processes with non-linear modelling methods Original Research Article
Author/Authors
J.A. Lopes da Silva، نويسنده , , J.C. Menezes، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2004
Pages
8
From page
101
To page
108
Abstract
Multiway principal components analysis (MPCA) and parallel factor analysis (PARAFAC) are widely used in exploratory data analysis and multivariate statistical process control (MSPC). These models are linear in nature, thus, limited when non-linear relations are present in the data. Principal component analysis (PCA) can be extended to non-linear principal components analysis using autoassociative neural networks. In this paper, the network’s bottleneck layer outputs (non-linear components) were made orthogonal. A method to estimate confidence limits based on a kernel probability density function was proposed since these limits do not assume that the non-linear scores are normally distributed. A measure for the non-linear scores (DNL) was presented here to monitor on-line the process replacing the well known Hotelling’s T2 statistic. One hundred and two industrial fermentation runs were used to evaluate the performance of a non-linear technique for multivariate process statistical monitoring. Three process runs with faults were used to compare the error detection performance using a statistic for the non-linear scores and the residuals statistic (SPE).
Keywords
Statistical process control , Kernel density estimation , Neural networks , MPCA , Exploratory data analysis
Journal title
Analytica Chimica Acta
Serial Year
2004
Journal title
Analytica Chimica Acta
Record number
1034203
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