Aluminum solidification and nanopolycrystal deformation via a Graph Neural Network Potential and Million-Atom Simulations
Ian St\"ormer, Julija Zavadlav

TL;DR
This paper introduces a highly accurate and efficient machine learning potential for aluminum, enabling large-scale molecular dynamics simulations that reveal atomistic details of solidification and deformation.
Contribution
The authors develop a new graph neural network-based machine learning potential for aluminum that achieves near ab initio accuracy and scales to million-atom simulations.
Findings
MLP accurately reproduces aluminum's atomic interactions
Simulations reveal detailed microstructure evolution during solidification
Model outperforms classical potentials in predicting mechanical behavior
Abstract
Solidification governs the microstructure and, therefore, the mechanical response of metal components, yet the atomistic details of nucleation and defect formation are often difficult to determine experimentally. Molecular dynamics can bridge this gap, but only if the interatomic model is both accurate and computationally efficient. Here, we develop a Machine Learning Potential (MLP) for aluminum and demonstrate its near ab initio fidelity when trained with the sequential-refinement workflow that fine-tunes the model on low-energy structures. The favorable scaling of the model enables nanosecond simulations involving millions of atoms, thereby overcoming finite-size effects in simulations of polycrystalline solidification and subsequent mechanical testing. Comparison with classical potentials and recent MLP models, including a general-purpose model, shows that inaccuracies in…
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Taxonomy
TopicsMachine Learning in Materials Science · Model Reduction and Neural Networks · Microstructure and mechanical properties
