Department of Chemical Engineering, Boğaziçi University, Istanbul 34342, Turkey.
J Chem Phys. 2010 May 7;132(17):174113. doi: 10.1063/1.3369007.
In this work, the structure and activity relationship for CO and O(2) adsorption over Au(2) to Au(10) clusters was investigated using density functional theory (DFT) and artificial neural networks as a part of ongoing studies in the literature to understand CO oxidation over gold nanoparticles. The optimum structures for the anionic, neutral, and cationic clusters were determined first using DFT. The structural properties such as binding energy, highest occupied molecular orbital-lowest unoccupied molecular orbital gap, ionization potential, and electron affinity as well as the adsorption energies of CO and O(2) were calculated using the same method at various values of user defined descriptors such as the size and charge of the cluster, the presence or absence of unpaired electron, and the coordination number of the adsorption site. Then, artificial neural network models were constructed to establish the relationship between these descriptors and the structural properties, as well as between the structural properties and the adsorption energies. It was concluded that the neural network models can successfully predict the adsorption energies calculated using DFT. The statistically determined relative significances of user defined descriptors and the structural properties on the adsorption energies were also found to be in good agreement with the literature indicating that this approach may be used for the other catalytic systems as well.
在这项工作中,使用密度泛函理论(DFT)和人工神经网络研究了 CO 和 O(2) 在 Au(2)到 Au(10)团簇上吸附的结构和活性关系,作为文献中正在进行的研究的一部分,以了解金纳米颗粒上的 CO 氧化。首先使用 DFT 确定了阴离子、中性和阳离子团簇的最佳结构。使用相同的方法计算了结构性质,如结合能、最高占据分子轨道-最低未占据分子轨道间隙、电离能和电子亲合能,以及 CO 和 O(2)的吸附能,在各种用户定义描述符的值下,如团簇的大小和电荷、不成对电子的存在与否,以及吸附位的配位数。然后,构建了人工神经网络模型,以建立这些描述符与结构性质之间的关系,以及结构性质与吸附能之间的关系。结论是,神经网络模型可以成功预测使用 DFT 计算的吸附能。还发现,用户定义描述符和结构性质对吸附能的统计确定相对重要性与文献中的结果非常一致,这表明该方法也可用于其他催化体系。