Partial least-squares regression and fuzzy clustering — A joint approach |
| |
Authors: | Tove Jacobsen Knut Kolset Nils B. Vogt |
| |
Affiliation: | (1) Brewing Industry Research Laboratory, Blindern, P. O. Box 350, 0314 Oslo 3, Norway;(2) Center for Industrial Research, Blindern, P. O. Box 350, 0314 Oslo 3, Norway |
| |
Abstract: | Chemical and physical analyses of malt, the main ingredient of beer, have been used to predict the concentration of certain volatile compounds in the finished beer.The prediction was done by means of the partial least squares regression (PLS2) in SIMCA. The total data set as well as individual malt clusters were submitted to PLS analysis. Best prediction was obtained by separating the total object matrix in classes according to similarity found by fuzzy pattern recognition (FCV). FCV was also used to separate the beer variables in classes and to select the subset of variables to be predicted.A joint approach of fuzzy pattern recognition to identify groups of samples and SIMCA-PLS2 to predict several dependent variables is suggested as a powerful tool in process-analytical chemistry. |
| |
Keywords: | pattern recognition data analysis clustering prediction process-analytical chemistry |
本文献已被 SpringerLink 等数据库收录! |
|