First-principles modeling and machine learning of the Gibbs free energy of the Fe-C system in a magnetic field
ORAL
Abstract
Modeling the thermodynamics and kinetics of steels for designing processes in high magnetic fields requires knowledge of the magnetic Gibbs free energy. Monte Carlo and thermodynamic perturbation or integration methods require integrals over configuration space involving millions of accurate potential energy evaluations. Density-functional theory (DFT) calculations provide sufficient accuracy to describe the Fe-C phases. However, the high computational cost of DFT hinders the direct application to thermodynamic and kinetic modeling.
To address this challenge, the ultra-fast force field (UF3) model [1], an ultra-fast machine-learning potential that combines effective two- and three-body potentials in a cubic B-spline basis with regularized linear regression, can be used to approximate the potential energy landscape. In this work, we use the Vienna Ab initio Simulation Package (VASP) to assemble a DFT database of structural configurations of Fe-C systems with various magnetic states. These configurations focus on BCC and FCC phases, and C concentrations up to 20 at. %. We train and validate a UF3 model for the Fe-C energy landscape on the energies and forces. We will discuss the machine learning approach and the resulting accuracy of the UF3 model for predicting thermodynamic properties.
[1] S. R. Xie, M. Rupp, R. G. Hennig, arXiv:2110.00624 (2021).
To address this challenge, the ultra-fast force field (UF3) model [1], an ultra-fast machine-learning potential that combines effective two- and three-body potentials in a cubic B-spline basis with regularized linear regression, can be used to approximate the potential energy landscape. In this work, we use the Vienna Ab initio Simulation Package (VASP) to assemble a DFT database of structural configurations of Fe-C systems with various magnetic states. These configurations focus on BCC and FCC phases, and C concentrations up to 20 at. %. We train and validate a UF3 model for the Fe-C energy landscape on the energies and forces. We will discuss the machine learning approach and the resulting accuracy of the UF3 model for predicting thermodynamic properties.
[1] S. R. Xie, M. Rupp, R. G. Hennig, arXiv:2110.00624 (2021).
–
Presenters
-
Ming Li
University of Florida
Authors
-
Ming Li
University of Florida
-
Stephen R Xie
Department of Materials Science and Engineering, University of Florida, KBR Inc., Intelligent Systems Division, NASA Ames Research Center, University of Florida
-
Ajinkya C Hire
Department of Materials Science and Engineering, University of Florida, University of Florida
-
Richard G. G Hennig
University of Florida, Department of Materials Science and Engineering, University of Florida, Department of Materials Science and Engineering, University of Florida, Gainesville, Florida 32611, United States
-
Luke Wirth
University of Illinois at Urbana-Champaign
-
Dallas Trinkle
University of Illinois at Urbana-Champaign