Quantum-accurate multiscale modeling of ramp compressions and magneto-elastic phase transitions in iron
ORAL
Abstract
Magnetic spin fluctuations have a significant impact on the thermodynamic properties of magnetic metals. Accurately predicting magneto-structural phase transitions in compressed iron hence requires accounting for those effects.
We achieved this by constructing a magneto-elastic Hamiltonian. Following the Spectral Neighbor Analysis Potential approach, a machine-learning interatomic potential for iron was trained on ab initio calculations performed on the pressure and temperature range of interest. This potential was combined to a magnetic Hamiltonian accounting for transverse and longitudinal spin fluctuations.
Leveraging the numerical capability combining lattice and magnetic degrees of freedom that was recently implemented in LAMMPS, large scale spin-lattice simulations of ramp compressions and phase transitions in iron are performed based on the developed Hamiltonian.
We achieved this by constructing a magneto-elastic Hamiltonian. Following the Spectral Neighbor Analysis Potential approach, a machine-learning interatomic potential for iron was trained on ab initio calculations performed on the pressure and temperature range of interest. This potential was combined to a magnetic Hamiltonian accounting for transverse and longitudinal spin fluctuations.
Leveraging the numerical capability combining lattice and magnetic degrees of freedom that was recently implemented in LAMMPS, large scale spin-lattice simulations of ramp compressions and phase transitions in iron are performed based on the developed Hamiltonian.
*Sandia National Laboratories is managed and operated by NTESS under DOE NNSA contract DE-NA0003525.
This paper describes objective technical results and analysis. Any subjective views or opinions that might be expressed in the paper do not necessarily represent the
views of the U.S. Department of Energy or the United States Government.
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Presenters
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Julien Tranchida
- Sandia National Laboratories
- Computational Multiscale, Sandia National Laboratories