Adaptive-precision potentials for large-scale atomistic simulations
David Immel, Ralf Drautz, Godehard Sutmann

TL;DR
This paper introduces an adaptive-precision method combining traditional and machine-learning potentials for large-scale atomistic simulations, optimizing performance and accuracy dynamically during simulations.
Contribution
It presents a novel multi-resolution approach that automatically adjusts atomic potential precision based on local structure analysis, enhancing efficiency in large systems.
Findings
Achieved a 11.3x speedup over full ACE simulations.
Maintained a precision of 10 meV/Å for ACE forces.
Successfully demonstrated on a 4 million atom nanoindentation simulation.
Abstract
Large-scale atomistic simulations rely on interatomic potentials providing an efficient representation of atomic energies and forces. Modern machine-learning (ML) potentials provide the most precise representation compared to electronic structure calculations while traditional potentials provide a less precise, but computationally much faster representation and thus allow simulations of larger systems. We present a method to combine a traditional and a ML potential to a multi-resolution description, leading to an adaptive-precision potential with an optimum of performance and precision in large complex atomistic systems. The required precision is determined per atom by a local structure analysis and updated automatically during simulation. We use copper as demonstrator material with an embedded atom model as classical force field and an atomic cluster expansion (ACE) as ML potential,…
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Taxonomy
TopicsAdvanced Electron Microscopy Techniques and Applications · Ion-surface interactions and analysis · Machine Learning in Materials Science
