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Original Articles

Comparison of Retention Modeling in Ion Chromatography by Using Multiple Linear Regression and Artificial Neural Networks

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Pages 1333-1352 | Received 05 Aug 2004, Accepted 07 Jan 2005, Published online: 15 Feb 2007
 

Abstract

The aim of this work is comparison of the prediction power of multiple linear regression and artificial neural networks retention models for inorganic anions (fluoride, chloride, nitrite, sulfate, bromide, nitrate, and phosphate) in suppressed ion chromatography with isocratic elution. Relations between ion chromatographic parameters (eluent flow rate and concentration of OH in eluent) and retention time of particular anion are described with unique mathematical function obtained by multiple linear regression and with a three‐layers feed‐forward artificial neural network. The artificial neural network was trained with a Levenberg‐Marquardt batch error back propagation algorithm. It is shown that the multiple linear regression retention model has lower, but still very satisfactory, predictive ability. Due to its complexity, the artificial neural network must still be regarded as a more complicated technique. That indicates multiple linear regression as a method of choice for retention modeling in the case of ion chromatographic analysis with isocratic elution.

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