Chemistry and Biochemistry, University of California, Merced, California 95343, United States.
J Phys Chem Lett. 2023 Apr 27;14(16):3869-3877. doi: 10.1021/acs.jpclett.3c00036. Epub 2023 Apr 17.
Rigid nonpolarizable water models with fixed point charges have been widely employed in molecular dynamics simulations due to their efficiency and reasonable accuracy for the potential energy surface. However, the dipole moment surface of water is not necessarily well-described by the same fixed charges, leading to failure in reproducing dipole-related properties. Here, we developed a machine-learning model trained against electronic structure data to assign point charges for water, and the resulting dipole moment surface significantly improved the predictions of the dielectric constant and the low-frequency IR spectrum of liquid water. Our analysis reveals that within our atom-centered point-charge description of the dipole moment surface, the intermolecular charge transfer is the major source of the peak intensity at 200 cm, whereas the intramolecular polarization controls the enhancement of the dielectric constant. The effects of exact Hartree-Fock exchange in the hybrid density functional on these properties are also discussed.
刚性非极化、带固定点电荷的水分子模型由于其在势能表面上的高效性和合理准确性,已被广泛应用于分子动力学模拟中。然而,水分子的偶极矩表面并不一定能被相同的固定电荷很好地描述,从而导致无法重现与偶极矩相关的性质。在这里,我们开发了一个基于电子结构数据的机器学习模型来为水分子分配点电荷,由此得到的偶极矩表面显著提高了介电常数和液态水低频 IR 光谱的预测能力。我们的分析表明,在我们的偶极矩表面的原子中心点电荷描述中,分子间电荷转移是 200cm 处峰强度的主要来源,而分子内极化控制着介电常数的增强。我们还讨论了混合密度泛函中精确 Hartree-Fock 交换对这些性质的影响。