An improved structure models to explain retention behavior of atmospheric nanoparticles
Journal: Iranian Chemical Communication (Vol.2, No. 1)Publication Date: 2014-01-01
Authors : Sharmin Esmaeilpoor; Zahra Shirzadi; Hadi noorizadeh;
Page : 56-71
Keywords : Atmospheric nanoparticles; QSRR; GA-KPLS; Levenberg -Marquardt artificial neural network;
Abstract
The quantitative structure-retention relationship (QSRR) of nanoparticles in roadside atmosphere against the comprehensive two-dimensional gas chromatography which was coupled to high-resolution time-of-flight mass spectrometry was studied. The genetic algorithm (GA) was employed to select the variables that resulted in the best-fitted models. After the variables were selected, the linear multivariate regressions [e.g. the partial least squares (PLS)] as well as the nonlinear regressions [e.g. the kernel PLS (KPLS) and Levenberg- Marquardt artificial neural network (L-M ANN)] were utilized to construct the linear and nonlinear QSRR models. The correlation coefficient cross validation (Q2) and relative error for test set L-M ANN model are 0.939 and 4.89, respectively. The resulting data indicated that L-M ANN could be used as a powerful modeling tool for the QSPR studies.
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