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Development of gradient retention model in ion chromatography. Part III: Fuzzy logic QSRR approach (CROSBI ID 217071)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Ukić, Šime ; Novak, Mirjana ; Krilić, Anamarija ; Avdalović, Nebojša ; Liu, Yan ; Buszewski, Bogusław ; Bolanča, Tomislav Development of gradient retention model in ion chromatography. Part III: Fuzzy logic QSRR approach // Chromatographia, 78 (2015), 13-14; 889-898. doi: 10.1007/s10337-015-2845-7

Podaci o odgovornosti

Ukić, Šime ; Novak, Mirjana ; Krilić, Anamarija ; Avdalović, Nebojša ; Liu, Yan ; Buszewski, Bogusław ; Bolanča, Tomislav

engleski

Development of gradient retention model in ion chromatography. Part III: Fuzzy logic QSRR approach

In this paper, the authors tested methodology that overcame the most common limitation of quantitative structure-retention relationship (QSRR) models: their limited applicability at the specific conditions for which models were developed. The modeling was performed on ion chromatographic analysis of “wood sugars”. Adaptive neuro-fuzzy interference system, an advanced artificial intelligence regression tool, was applied in combination with genetic algorithm scanning to obtain good and reliable QSRR models. The obtained QSRR models were applied for predicting data that were required for further development of general isocratic and gradient retention models. All three developed models (QSRR, isocratic, and gradient) indicated good prediction ability with root mean square error of prediction ≤0.1557. The performances of the methodology were compared with those presented in previous research—namely genetic algorithm in combinations with—stepwise multiple linear regression, partial least squares, uninformative variable elimination–partial least squares, and artificial neural network regression.

ion chromatography ; QSRR ; gradient retention model ; fuzzy logic ; ANFIS

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Podaci o izdanju

78 (13-14)

2015.

889-898

objavljeno

0009-5893

1612-1112

10.1007/s10337-015-2845-7

Povezanost rada

Kemija, Kemijsko inženjerstvo

Poveznice
Indeksiranost