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Development of a multi-element neural network modified lattice inversion potential and application to the Ta-He system.

Authors :
Wu, Feifeng
Duan, Xianbao
Wang, Zhaojie
Wen, Yanwei
Chen, Rong
Zhang, Aimin
Shan, Bin
Source :
Computational Materials Science. Mar2024, Vol. 237, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

[Display omitted] Under extended radiation exposure and elevated temperatures, helium (He) accumulation can compromise the integrity of Tantalum (Ta), a material showing substantial promise for nuclear fusion reactor applications. An imperative step towards understanding and enhancing the performance of Ta-based materials lies in the development of an accurate potential for Ta-He interactions. In this study, we introduce a neural network modified lattice inversion potential (NN-LIP) specifically designed for nuanced, element-specific Ta-He interactions. The conventional atomic density descriptors have been augmented to encompass sub-atomic characteristics, ensuring an accurate representation of varied local chemical environments across the energy spectrum. The lattice inversion potential for individual atoms introduces an atomic cross-potential, bolstering the transferability and robustness of NN-LIP, thereby amplifying its extrapolation capacity. Empirical calculations centered on pivotal properties of the Ta-He system affirm the precision of the multi-element NN-LIP potential. Our comprehensive dataset, spanning 19162 samples, covers a gamut from Ta bulk properties to point defects, He vacancies, and migration traits, achieving a validation set accuracy of 5.14 meV/atom. Notably, the migration barrier prediction accuracy displayed marked improvement over prior studies. The formulated multi-element NN-LIP offers a detailed examination of Ta-He interactions and holds potential for modeling analogous metal-helium interactions in nuclear substrates. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09270256
Volume :
237
Database :
Academic Search Index
Journal :
Computational Materials Science
Publication Type :
Academic Journal
Accession number :
175963535
Full Text :
https://doi.org/10.1016/j.commatsci.2024.112899