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KMID : 1094720060110050432
Biotechnology and Bioprocess Engineering
2006 Volume.11 No. 5 p.432 ~ p.441
Application of principal component analysis and self-organizing map to the analysis of 2D fluorescence spectra and the monitoring of fermentation processes
Rhee Jong-Il

Kang Tae-Hyoung
Lee Kum-Il
Sohn Ok-Jae
Kim Sun-Yong
Chung Sang-Wook
Abstract
2D fluorescence sensors produce a great deal of spectral data during fermentation processes, which can be analyzed using a variety of statistical techniques. Principal component analysis (PCA) and a self-organizing map (SOM) were used to analyze these 2D fluorescence spectra and to extract useful information from them. PCA resulted in scores and loadings that were visualized in the score-loading plots and used to monitor various fermentation processes with recombinantEscherichia coli andSaccharomyces cerevisiae. The SOM was found to be a useful and interpretative method of classifying the entire gamut of 2D fluorescence spectra and of selecting some significant combinations of excitation and emission wavelengths. The results, including the normalized weights and variances, indicated that the SOM network is capable of being used to interpret the fermentation processes monitored by a 2D fluorescence sensor.
KEYWORD
fermentation processes, monitoring, principal component analysis, self-organizing map, 2D fluorescence sensor
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