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为预测60种烯烃类单体(M1)与苯乙烯(M2)的自由基共聚合竞聚率lgr1S值,采用密度泛函理论(DFT)B3LYP方法在6-31G(d)基组水平上对烯烃类单体(C1H2=C2XY)进行了计算。用于构建支持向量机(SVM)模型的最佳参数子集包括:原子R3的Mulliken电荷qMR3,C1的Mulliken电荷QMC-1(H原子电荷全部合并到与之相连的重原子上),参数QMC-1与qMC-2之比RQq(=QMC-1/qMC-2),最低未占分子轨道(LUMO)能级(ELUMO)和最高占据分子轨道(HOMO)能级(EHOMO)之差ΔEg。最佳SVM模型为高斯径向基核函数(C=1000,ε=0.0001及γ=0.2)。该模型训练集、验证集及测试集的均方根(rms)误差分别为0.043,0.157及0.192,与现有竞聚率lgr模型相比,本文所得SVM模型具有更好的统计品质。

To predict monomer reactivity ratios(lgr1S) in radical copolymerization between 60 vinyl monomers(M1) and styrene(M2),density functional theory(DFT) calculations were carried out for monomers M1(C1H2=C2XY),at the B3LYP level of theory with 6-31G(d) basis set.The optimum subset of descriptors selected for the support vector machine(SVM) model comprises of Mulliken charges of R3(qMR3),Mulliken charges of C1 with hydrogens summed into heavy atoms(QMC-1),the ratio of parameters QMC-1 and qMR-2(RQq) and the LUMO and HOMO orbital energy difference(ΔEg).The optimal SVM model was obtained with the Gaussian radical basis kernel(C=1000,ε =0.0001 and γ = 0.2).The root-mean-square(rms) errors for training set,validation set and test set are 0.043,0.157 and 0.192,respectively.Comparison to existing models,the SVM model shows better statistical characteristics.

参考文献

[1] XINLIANG YU;BING YI;XUEYE WANG .Prediction of Refractive Index of Vinyl Polymers by Using Density Functional Theory[J].Journal of Computational Chemistry: Organic, Inorganic, Physical, Biological,2007(14):2336-2341.
[2] 刘万强,王学业,李新芳,龙清平,文小红,李建军.聚甲基丙烯酸酯类玻璃化温度的量子化学-神经网络方法研究[J].高分子材料科学与工程,2006(01):170-173.
[3] Yu XL;Yi B;Wang XY .Quantitative structure-property relationships for the reactivity parameters of acrylate monomers[J].European Polymer Journal,2008(12):3997-4001.
[4] Xinliang Yu;Wenhao Yu;Bing YI .PREDICTION OF MONOMER REACTIVITY RATIOS IN RADICAL COPOLYMERIZATION OF VINYL MONOMERS[J].Collection of Czechoslovak Chemical Communications,2009(9):1279-1294.
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