4.5 Article

Are Neural Network Potentials Trained on Liquid States Transferable to Crystal Nucleation? A Test on Ice Nucleation in the mW Water Model

Journal

JOURNAL OF PHYSICAL CHEMISTRY B
Volume 127, Issue 17, Pages 3894-3901

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.jpcb.3c00693

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Neural network potentials (NNPs) are increasingly used to study long time scale processes, such as crystal nucleation. It is unclear whether NN potentials trained on equilibrium liquid states can accurately describe nucleation processes. In this study, a NNP trained on a classical three-body potential for water accurately reproduces nucleation rates and free energy barriers, supporting the use of NNPs for studying nucleation events.
Neural network potentials (NNPs) are increasingly being used to study processes that happen on long time scales. A typical example is crystal nucleation, which rate is controlled by the occurrence of a rare fluctuation, i.e., the appearance of the critical nucleus. Because the properties of this nucleus are far from those of the bulk crystal, it is yet unclear whether NN potentials trained on equilibrium liquid states can accurately describe nucleation processes. So far, nucleation studies on NNPs have been limited to ab initio models whose nucleation properties are unknown, preventing an accurate comparison. Here we train a NN potential on the mW model of water-a classical three-body potential whose nucleation time scale is accessible in standard simulations. We show that a NNP trained only on a small number of liquid state points can reproduce with great accuracy the nucleation rates and free energy barriers of the original model, computed from both spontaneous and biased trajectories, strongly supporting the use of NNPs to study nucleation events.

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