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  • Application of principal component-artificial neural network models for simultaneous determination of phenolic compounds by a kinetic spectrophotometric method.

Application of principal component-artificial neural network models for simultaneous determination of phenolic compounds by a kinetic spectrophotometric method.

Journal of hazardous materials (2008-02-15)
Masoumeh Hasani, Mahsa Moloudi
ABSTRACT

A multicomponent analysis method based on principal component analysis-artificial neural network models (PC-ANN) is proposed for the determination of phenolic compounds. The method relies on the oxidative coupling of phenols (phenol, 2 chlorophenol, 3-chlorophenol and 4-chlorophenol) to N,N-diethyl-p-phenylenediamine in the presence of hexacyanoferrate(III). The reaction monitored at analytical wavelength 680 nm of the dye formed. Phenols can be determined individually over the concentration range 0.1-7.0 microg ml(-1). Differences in the kinetic behavior of the four species were exploited by using PC-ANN, to resolve mixtures of phenol. After reducing the number of kinetic data using principal component analysis, an artificial neural network consisting of three layers of nodes was trained by applying a back-propagation learning rule. The optimized ANN allows the simultaneous quantitation of four analytes in mixtures with relative standard errors of prediction in the region of 5% for four species. The results show that PC-ANN is an efficient method for prediction of the four analytes.

MATERIALS
Product Number
Brand
Product Description

Sigma-Aldrich
N,N-Diethyl-p-phenylenediamine, 97%
Supelco
N,N-Diethyl-p-phenylenediamine sulfate salt, for spectrophotometric det. of S2-, Cl2, ≥99.0%
Sigma-Aldrich
N,N-Diethyl-p-phenylenediamine sulfate salt, ≥98.0% (T)