Issue 10, 2009

On-capillary derivatization using a hybrid artificial neural network-genetic algorithm approach

Abstract

The first reported hybrid artificial neural network-genetic algorithm (ANN-GA) approach for the optimization of on-capillary dipeptide derivatization is presented. More specifically, genetic optimization proved valuable in the determination of effective network structure with three defined parameter inputs: (i) phthalic anhydride injection volume, (ii) time of injection, and (iii) voltage, for the maximum conversion of the dipeptideD-Ala-D-Ala by phthalic anhydride. Results obtained from the hybrid approach proved superior to an ANN model without GA optimization in terms of training data and predictive ability. The model developed will likely prove useful for the analysis of other organic-based reaction systems.

Graphical abstract: On-capillary derivatization using a hybrid artificial neural network-genetic algorithm approach

Article information

Article type
Paper
Submitted
08 May 2009
Accepted
20 Jul 2009
First published
03 Aug 2009

Analyst, 2009,134, 2067-2070

On-capillary derivatization using a hybrid artificial neural network-genetic algorithm approach

T. Riveros, G. Hanrahan, S. Muliadi, J. Arceo and F. A. Gomez, Analyst, 2009, 134, 2067 DOI: 10.1039/B909143B

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