化学
偶极子
催化作用
分子描述符
可转让性
曲面(拓扑)
人工神经网络
吸附
力矩(物理)
化学物理
电偶极矩
计算化学
人工智能
机器学习
数量结构-活动关系
物理化学
计算机科学
量子力学
物理
有机化学
立体化学
几何学
数学
罗伊特
作者
Xijun Wang,Sheng Ye,Wei Hu,Edward Sharman,Ran Liu,Yan Liu,Yi Luo,Jun Jiang
摘要
The challenge of evaluating catalyst surface-molecular adsorbate interactions holds the key for rational design of catalysts. Finding an experimentally measurable and theoretically computable descriptor for evaluating surface-adsorbate interactions is a significant step toward achieving this goal. Here we show that the electric dipole moment can serve as a convenient yet accurate descriptor for establishing structure-property relationships for molecular adsorbates on metal catalyst surfaces. By training a machine learning neural network with a large data set of first-principles calculations, we achieve quick and accurate predictions of molecular adsorption energy and transferred charge. The training model using NO/CO@Au(111) can be extended to study additional substrates such as Au(001) or Ag(111), thus exhibiting extraordinary transferability. These findings validate the effectiveness of the electric dipole descriptor, providing an efficient modality for future catalyst design.
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