TY - JOUR
T1 - A multi-objective optimization to characterize the diffusion of nanocavities in tungsten
AU - De Backer, Andrée
AU - Souidi, Abdelkader
AU - Hodille, Etienne A.
AU - Autissier, Emmanuel
AU - Genevois, Cécile
AU - Haddad, Farah
AU - Della Noce, Antonin
AU - Domain, Christophe
AU - Becquart, Charlotte S.
AU - Barthe, Marie France
N1 - Publisher Copyright:
© 2024 The Authors
PY - 2025/2/1
Y1 - 2025/2/1
N2 - We characterize the diffusion properties of nanocavities and their uncertainties by designing a multi-objective optimization approach. In this work, the nanocavity diffusion on the 0.3–4 nm size range is the input of a multi-scale simulation that is adjusted to reproduce experimental results of a systematic study of nanocavity growth with temperature up to 1773 K. Under irradiation, in the material microstructure, the damage evolution results from a complicated interplay of the defects and their clusters (formed from the vacancies and self-interstitials created) which diffuse, recombine and grow. The simulation of the whole experiment, based on an Object Kinetic Monte Carlo algorithm, can take several hours per condition which is a strong limitation for the optimization scheme. We describe the method that succeeds for our problem. Starting from a rough and random sampling of the space of parameters, we then consider that each simulation is one point of the hypersurface in the high dimensional space formed by the optimized parameters and objectives. We iteratively improve the characterization of this hypersurface where the objectives are optimum thanks to a systematic search of patterns formed by points on the coordinate planes. The non-dominated solutions, i.e. the equally good solutions, also named the Pareto front, are finally characterized. They draw two “valleys” in the subspace of parameters, delimiting the uncertainties on the searched diffusion properties, which cannot be reduced with the experimental data and the model in their current form.
AB - We characterize the diffusion properties of nanocavities and their uncertainties by designing a multi-objective optimization approach. In this work, the nanocavity diffusion on the 0.3–4 nm size range is the input of a multi-scale simulation that is adjusted to reproduce experimental results of a systematic study of nanocavity growth with temperature up to 1773 K. Under irradiation, in the material microstructure, the damage evolution results from a complicated interplay of the defects and their clusters (formed from the vacancies and self-interstitials created) which diffuse, recombine and grow. The simulation of the whole experiment, based on an Object Kinetic Monte Carlo algorithm, can take several hours per condition which is a strong limitation for the optimization scheme. We describe the method that succeeds for our problem. Starting from a rough and random sampling of the space of parameters, we then consider that each simulation is one point of the hypersurface in the high dimensional space formed by the optimized parameters and objectives. We iteratively improve the characterization of this hypersurface where the objectives are optimum thanks to a systematic search of patterns formed by points on the coordinate planes. The non-dominated solutions, i.e. the equally good solutions, also named the Pareto front, are finally characterized. They draw two “valleys” in the subspace of parameters, delimiting the uncertainties on the searched diffusion properties, which cannot be reduced with the experimental data and the model in their current form.
KW - Defect microstructure
KW - Irradiation damage
KW - Multi-objective optimization
KW - Nanocavity diffusion
KW - OKMC
KW - Pareto front
UR - https://www.scopus.com/pages/publications/85211445963
U2 - 10.1016/j.commatsci.2024.113570
DO - 10.1016/j.commatsci.2024.113570
M3 - Article
AN - SCOPUS:85211445963
SN - 0927-0256
VL - 248
JO - Computational Materials Science
JF - Computational Materials Science
M1 - 113570
ER -