人工神经网络
可转让性
集合(抽象数据类型)
液态水
星团(航天器)
相(物质)
计算机科学
过冷
比例(比率)
液相
统计物理学
人工智能
化学
热力学
物理
机器学习
有机化学
罗伊特
量子力学
程序设计语言
作者
Maria Carolina Muniz,Roberto Car,Athanassios Z. Panagiotopoulos
标识
DOI:10.1021/acs.jpcb.3c04629
摘要
The MB-pol many-body potential accurately predicts many properties of water, including cluster, liquid phase, and vapor-liquid equilibrium properties, but its high computational cost can make applying it in large-scale simulations quite challenging. In order to address this limitation, we developed a "deep potential" neural network (DPMD) model based on the MB-pol potential for water. We find that a DPMD model trained on mostly liquid configurations yields a good description of the bulk liquid phase but severely underpredicts vapor-liquid coexistence densities. By contrast, adding cluster configurations to the neural network training set leads to a good agreement for the vapor coexistence densities. Liquid phase densities under supercooled conditions are also represented well, even though they were not included in the training set. These results confirm that neural network models can combine accuracy and transferability if sufficient attention is given to the construction of a representative training set for the target system.
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