Abstract
Machine learning potentials (MLPs) capable of accurately describing complex ab initio potential energy surfaces (PES) have revolutionized the field of multiscale atomistic
modeling. In this work, using an extensive density functional theory (DFT) dataset (denoted as Si-ZEO22) consisting of 219 unique zeolite topologies (350,000 unique DFT
calculations) found in the International Zeolite Association (IZA) database, we have trained a DeePMD-kit MLP to model the dynamics of silica frameworks. The performance
of our model is evaluated by calculating various properties that probe the accuracy of the energy and force predictions. This MLP demonstrates impressive agreement with DFT for predicting zeolite structural properties, energy-volume trends, and phonon density of states. Furthermore, our model achieves reasonable predictions for stress-strain relationships without including DFT stress data during training. These results highlight the ability of MLPs to capture the flexibility of zeolite frameworks and motivates further MLP development for nanoporous materials with near-ab initio accuracy.
Supplementary materials
Title
Tabulated results and input files
Description
Tabulated results for DFT/DP calculations and training set sizes, the final DP model and corresponding DeePMD-kit training parameter file, VASP INCAR with the DFT parameters used for generating the Si-ZEO22 dataset, and example LAMMPS input and data files.
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Title
DP Hyperparameter tuning
Description
DP hyperparameter tuning learning curves and model architecture cost comparison.
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Supplementary weblinks
Title
Si-ZEO22 DFT Dataset
Description
Diverse DFT dataset of 219 zeolite topologies (350,000 unique configurations) generated from NVT and NPT molecular dynamics simulations across different temperatures and pressures to be used for training machine learning interatomic potentials. Includes DFT energies and forces calculated in VASP using the RPBE-D3BJ functional (400 eV energy cutoff).
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