Ibrahim Eslam, Lysogorskiy Yury, Drautz Ralf
ICAMS, Ruhr Universität Bochum, 44780 Bochum, Germany.
J Chem Theory Comput. 2024 Dec 24;20(24):11049-11057. doi: 10.1021/acs.jctc.4c00802. Epub 2024 Oct 21.
We present a highly accurate and transferable parametrization of water using the atomic cluster expansion (ACE). To efficiently sample liquid water, we propose a novel approach that involves sampling static calculations of various ice phases and utilizing the active learning (AL) feature of the ACE-based D-optimality algorithm to select relevant liquid water configurations, bypassing computationally intensive ab initio molecular dynamics simulations. Our results demonstrate that the ACE descriptors enable a potential initially fitted solely on ice structures, which is later upfitted with few configurations of liquid, identified with AL to provide an excellent description of liquid water. The developed potential exhibits remarkable agreement with first-principles reference, accurately capturing various properties of liquid water, including structural characteristics such as pair correlation functions, covalent bonding profiles, and hydrogen bonding profiles, as well as dynamic properties like the vibrational density of states, diffusion coefficient, and thermodynamic properties such as the melting point of the ice Ih. Our research introduces a new and efficient sampling technique for machine learning potentials in water simulations while also presenting a transferable interatomic potential for water that reveals the accuracy of first-principles reference. This advancement not only enhances our understanding of the relationship between ice and liquid water at the atomic level but also opens up new avenues for studying complex aqueous systems.
我们使用原子团簇展开(ACE)方法提出了一种高度精确且可转移的水的参数化模型。为了高效地对液态水进行采样,我们提出了一种新颖的方法,该方法涉及对各种冰相的静态计算进行采样,并利用基于ACE的D-最优算法的主动学习(AL)特性来选择相关的液态水构型,从而绕过计算量巨大的从头算分子动力学模拟。我们的结果表明,ACE描述符能够构建一个最初仅基于冰结构拟合的势能面,随后通过AL识别少量液态水构型对其进行进一步拟合,从而对液态水提供出色的描述。所开发的势能面与第一性原理参考结果表现出显著的一致性,准确地捕捉了液态水的各种性质,包括结构特征,如对关联函数、共价键分布和氢键分布,以及动态性质,如振动态密度、扩散系数,还有热力学性质,如冰Ih的熔点。我们的研究为水模拟中的机器学习势能引入了一种新的高效采样技术,同时还提出了一种可转移的水的原子间势能,揭示了第一性原理参考的准确性。这一进展不仅增强了我们在原子层面上对冰和液态水之间关系的理解,还为研究复杂的水体系开辟了新途径。