Omranpour Amir, Montero De Hijes Pablo, Behler Jörg, Dellago Christoph
Lehrstuhl für Theoretische Chemie II, Ruhr-Universität Bochum, 44780 Bochum, Germany.
Research Center Chemical Sciences and Sustainability, Research Alliance Ruhr, 44780 Bochum, Germany.
J Chem Phys. 2024 May 7;160(17). doi: 10.1063/5.0201241.
As the most important solvent, water has been at the center of interest since the advent of computer simulations. While early molecular dynamics and Monte Carlo simulations had to make use of simple model potentials to describe the atomic interactions, accurate ab initio molecular dynamics simulations relying on the first-principles calculation of the energies and forces have opened the way to predictive simulations of aqueous systems. Still, these simulations are very demanding, which prevents the study of complex systems and their properties. Modern machine learning potentials (MLPs) have now reached a mature state, allowing us to overcome these limitations by combining the high accuracy of electronic structure calculations with the efficiency of empirical force fields. In this Perspective, we give a concise overview about the progress made in the simulation of water and aqueous systems employing MLPs, starting from early work on free molecules and clusters via bulk liquid water to electrolyte solutions and solid-liquid interfaces.
作为最重要的溶剂,自计算机模拟出现以来,水一直是人们关注的核心。早期的分子动力学和蒙特卡罗模拟不得不使用简单的模型势来描述原子间相互作用,而基于能量和力的第一性原理计算的精确从头算分子动力学模拟为水体系的预测性模拟开辟了道路。然而,这些模拟要求非常高,这阻碍了对复杂体系及其性质的研究。现代机器学习势(MLP)现已成熟,使我们能够通过将电子结构计算的高精度与经验力场的效率相结合来克服这些限制。在这篇综述文章中,我们简要概述了利用MLP对水和水体系进行模拟所取得的进展,从早期关于自由分子和团簇的研究开始,到体相液态水,再到电解质溶液和固液界面。