Calculation of proper energy barriers for atomistic kinetic Monte Carlo simulations on rigid lattice with chemical and strain field long-range effects using artificial neural networks

Research output: Contribution to journalArticle

Institutes & Expert groups

Documents & links

DOI

Abstract

In this paper we take a few steps further in the development of an approach based on the use of an artificial neural network ANN to introduce long-range chemical effects and zero temperature relaxation elastic strain effects in a rigid lattice atomistic kinetic Monte Carlo AKMC model. The ANN is trained to predict the vacancy migration energies as calculated given an interatomic potential with the nudged elastic band method, as functions of the local atomic environment. The kinetics of a single-vacancy migration is thus predicted as accurately as possible, within the limits of the given interatomic potential. The detailed procedure to apply this method is described and analyzed in detail. A novel ANN training algorithm is proposed to deal with the necessarily large number of input variables to be taken into account in the mathematical regression of the migration energies. The application of the ANN-basedAKMC method to the simulation of a thermal annealing experiment in Fe–20%Cr alloy is reported. The results obtained are found to be in better agreement with experiments, as compared to already published simulations, where no atomic relaxation was taken into account and chemical effects were only heuristically allowed for.

Details

Original languageEnglish
Pages (from-to)074507-074507
JournalThe Journal of Chemical Physics
Volume132
Issue number7
DOIs
Publication statusPublished - 21 Feb 2010

Keywords

  • Artificial Neural Networks, vacancy migration, Atomistic Kinetic Monte Carlo, thermal annealing

ID: 382639