Quantum accurate interaction potentials for warm dense aluminum


Quantum accurate interaction potentials for warm dense aluminum

Kumar, S.; Tahmasbi, H.; Ramakrishna, K.; Lokamani, M.; Cangi, A.

Modeling warm dense matter is relevant for various applications including the interior of gas giants and exoplanets, inertial confinement fusion, and ablation of metals. Ongoing and upcoming experimental campaigns in photon sources around the globe rely on numerical simulations which are accurate on the level of electronic structures. In that regard, density functional theory molecular dynamics (DFT-MD) simulations have been widely used to compute dynamical and thermodynamical properties of warm dense matter. However, two challenges impede further progress: (1) DFT-MD becomes computational infeasible with increasing temperature (2) finite-size effects render many computational observables inaccurate, because DFT-MD is limited to a few hundred atoms on current HPC platforms. Recently, molecular dynamics simulations using machine learning-based interatomic potentials (ML-IAP) could overcome these computational limitations. Here, we propose a method to construct ML-IAPs from DFT data based on SNAP descriptors [1]. We demonstrate our workflow for aluminum. In particular, we investigate the transferability of ML-IAPs over a large range of temperatures and pressures, which currently is a topic of active research.

References:

[1] A. P. Thompson, L. P. Swiler, C. R. Trott, S. M. Foiles, and G. J. Tucker, Journal of
Computational Physics, 285, 316-330, 2015.

Keywords: Computational Physics; Warm Dense Matter; Machine Learning; Molecular Dynamics

  • Poster
    DFT Methods for Matter under Extreme Conditions, 21.-22.02.2022, Görlitz, Germany

Permalink: https://www.hzdr.de/publications/Publ-35177