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From isocratic data to a gradient elution retention model in IC: An artificial neural network approach (CROSBI ID 155373)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Bolanča, Tomislav ; Cerjan Stefanović, Štefica ; Ukić, Šime ; Luša, Melita ; Rogošić, Marko From isocratic data to a gradient elution retention model in IC: An artificial neural network approach // Chromatographia, 70 (2009), 1-2; 15-20. doi: 10.1365/s10337-009-1126-8

Podaci o odgovornosti

Bolanča, Tomislav ; Cerjan Stefanović, Štefica ; Ukić, Šime ; Luša, Melita ; Rogošić, Marko

engleski

From isocratic data to a gradient elution retention model in IC: An artificial neural network approach

Gradient elution is used in ion chromatography to achieve rapid analysis with reasonable separation. Optimization and prediction of the gradient is clearly a multidimensional problem, however. One approach to prediction of gradient retention behavior is based on isocratic experimentation. In this work a gradient model for simultaneous prediction of the retention behavior of fluoride, chlorite, chloride, chlorate, nitrate, and sulfate ions, on the basis of isocratic experimental data, is proposed. An artificial neural network was used to predict isocratic results ; the network was optimized with regard to the number of data in the training set (25) and number of neurons in the hidden layer (6). A slight systematic error was observed in the isocratic prediction, but this did not effect gradient prediction. Good predictions were achieved for all the anions investigated (average error 1.79%). Deviations were somewhat higher for prediction of sulfate retention than for the other anions, probably because of the higher charge and larger size of sulfate in comparison with the other ions examined.

ion chromatography ; retention modeling ; artificial neural network

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Podaci o izdanju

70 (1-2)

2009.

15-20

objavljeno

0009-5893

1612-1112

10.1365/s10337-009-1126-8

Povezanost rada

Kemija, Kemijsko inženjerstvo

Poveznice
Indeksiranost