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- Title
Machine learning potential assisted exploration of complex defect potential energy surfaces.
- Authors
Jiang, Chao; Marianetti, Chris A.; Khafizov, Marat; Hurley, David H.
- Abstract
Atomic-scale defects generated in materials under both equilibrium and irradiation conditions can significantly impact their physical and mechanical properties. Unraveling the energetically most favorable ground-state configurations of these defects is an important step towards the fundamental understanding of their influence on the performance of materials ranging from photovoltaics to advanced nuclear fuels. Here, using fluorite-structured thorium dioxide (ThO2) as an exemplar, we demonstrate how density functional theory and machine learning interatomic potential can be synergistically combined into a powerful tool that enables exhaustive exploration of the large configuration spaces of small point defect clusters. Our study leads to several unexpected discoveries, including defect polymorphism and ground-state structures that defy our physical intuitions. Possible physical origins of these unexpected findings are elucidated using a local cluster expansion model developed in this work.
- Subjects
POTENTIAL energy surfaces; MACHINE learning; THORIUM dioxide; DENSITY functional theory; MACHINE theory; IRRADIATION; POINT defects
- Publication
NPJ Computational Materials, 2024, Vol 10, Issue 1, p1
- ISSN
2057-3960
- Publication type
Article
- DOI
10.1038/s41524-024-01207-8