Machine-Learned Interatomic Potential for Predictive Simulation of MoS2 Epitaxy
Abstract
A machine-learned interatomic potential (MLIP) for multilayer MoS2 was developed using the ultra-fast force field (UF3) framework. The UF3 MLIP reproduces key properties in strong agreement with DFT including lattice constants, interlayer binding energies, and phase-stability. Furthermore, the potential reasonably captures the phonon spectra and the highly anisotropic elastic tensor across monolayer (1H) and bulk (2H, 3R) MoS2 phases. Critically, defect and edge formation energies are captured with high fidelity, exhibiting a strong correlation with DFT (R^2 = 0.91) across ten defective monolayers and reproducing the relative difference between the free energies of zigzag and armchair edges within 5% of DFT. Non-equilibrium molecular dynamics simulations reveal layered homoepitaxial growth consistent with experimental observations, demonstrating the formation of van der Waals gaps between successive epilayers and triangular domains bounded by zigzag edges. The robust UF3 MLIP, which is only ~2X slower than the fastest empirical potentials, enables large-scale atomistic simulations of MoS2 epitaxial growth.
Cite
@article{arxiv.2512.15952,
title = {Machine-Learned Interatomic Potential for Predictive Simulation of MoS2 Epitaxy},
author = {Emir Bilgili and Nicholas Taormina and Richard Hennig and Simon R. Phillpot and Youping Chen},
journal= {arXiv preprint arXiv:2512.15952},
year = {2026}
}
Comments
The UF3 potential file, input scripts for epitaxial growth simulations, and the Supplemental Material are available at https://github.com/uf-chenlab/UF3-MoS2. The UF3Tools code can be found at: https://github.com/uf-chenlab/UF3Tools