Prediction of rate constants for the reactions of alkanes with the hydroxyl radicals

被引:0
作者
Xianwei Huang
Xinliang Yu
Bing Yi
Shihua Zhang
机构
[1] College of Chemistry and Chemical Engineering,Key Laboratory of Ecological Textile Materials & Novel Dying and Finishing Technology, Hunan Provincial Education Department
[2] Hunan Institute of Engineering,undefined
[3] Network Information Center,undefined
[4] Hunan Institute of Engineering,undefined
来源
Journal of Atmospheric Chemistry | 2012年 / 69卷
关键词
Density functional theory; Genetic algorithm; Hydroxyl radical; Structure-activity relationships; Rate constant; Support vector machine.;
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中图分类号
学科分类号
摘要
The free radicals obtained through an H-atom abstraction pathway (RH + •OH → H2O + R•), were used to calculate quantum chemical descriptors for quantitative structure-activity relationship (QSAR) models of rate constants (kOH) for reactions of 161 alkanes with hydroxyl radicals (•OH) in the troposphere. Three quantum chemical descriptors used as the inputs of the support vector machine (SVM) model were selected from 14 quantum chemical descriptors with the genetic algorithm (GA) method together with the multiple linear regressions (MLR) technique. All the descriptors were calculated with the density functional theory (DFT), at the UB3LYP level of theory with 6–31 G(d) basis set. The best prediction results were obtained with the Gaussian radical basis kernel (C = 1, ε = 10−4 and γ = 0.5). The mean root-mean-square (rms) error for the prediction of kOH is 0.314 log units. Our research results indicate that the QSAR model based on GA-MLR and SVM techniques and DFT calculations was accurate and reliable.
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页码:201 / 213
页数:12
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