Publication details

Prediction of chiral separations using combination of experimental designs and artificial neural networks

Authors

DOHNAL Vlastimil FARKOVÁ Marta HAVEL Josef

Year of publication 1999
Type Article in Periodical
Magazine / Source Chirality
MU Faculty or unit

Faculty of Science

Citation
Field Analytic chemistry
Description In this work the advantages of using artificial neural networks (ANNs) combined with experimental design (ED) to optimize the separation of amino acids enantiomers, with a-cyclodextrin as chiral selector, were demonstrated. The results obtained with the ED-ANN approach were compared with those of either partial least squares (PLS) method or response surface methodology where experimental design and the regression equation were used. The ANN approach is quite general, no explicit model is needed and the amount of experimental work can be decreased considerably.
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