State Key Laboratory of Physical Chemistry of Solid Surfaces, iChEM, College of Chemistry and Chemical Engineering, Xiamen University, Xiamen 361005, China.
J Chem Phys. 2022 Jul 14;157(2):024103. doi: 10.1063/5.0098330.
Fast evolution of modern society stimulates intense development of new materials with novel functionalities in energy and environmental applications. Due to rapid progress of computer science, computational design of materials with target properties has recently attracted a lot of interest. Accurate and efficient calculation of fundamental thermodynamic properties, including redox potentials, acidity constants, and solvation free energies, is of great importance for selection and design of desirable materials. Free energy calculation based on ab initio molecular dynamics (AIMD) can predict these properties with high accuracy at complex environments, however, they are being impeded by high computational costs. To address this issue, this work develops an automated scheme that combines iterative training of machine learning potentials (MLPs) and free energy calculation and demonstrates that these thermodynamic properties can be computed by ML accelerated MD with ab initio accuracy and a much longer time scale at cheaper costs, improving poor statistics and convergence of numerical integration by AIMD. Our automated scheme lays the foundation for computational chemistry-assisted materials design.
快速发展的现代社会刺激了具有新颖功能的新材料在能源和环境应用中的激烈发展。由于计算机科学的快速进步,具有目标特性的材料的计算设计最近引起了广泛关注。准确有效地计算基本热力学性质,包括氧化还原电位、酸度常数和溶剂化自由能,对于选择和设计理想材料非常重要。基于第一性原理分子动力学 (AIMD) 的自由能计算可以在复杂环境中高精度地预测这些性质,但是,它们受到高计算成本的阻碍。为了解决这个问题,本工作开发了一种自动方案,该方案将机器学习势(MLP)的迭代训练和自由能计算相结合,并证明这些热力学性质可以通过 ML 加速 MD 以与第一性原理相同的精度和更长的时间尺度来计算,以更低的成本提高了 AIMD 中数值积分的较差统计数据和收敛性。我们的自动方案为计算化学辅助材料设计奠定了基础。