Article, 2024

Cascading symmetry constraint during machine learning-enabled structural search for sulfur-induced Cu(111)- ( 43 × 43 ) surface reconstruction

Journal of Chemical Physics, ISSN 0021-9606, 1089-7690, Volume 160, 17, 10.1063/5.0201421

Contributors

Brix F. 0000-0003-0107-5963 [1] Verner Christiansen M.-P. 0000-0002-3550-8379 [1] Hammer B. 0000-0002-7849-6347 (Corresponding author) [1]

Affiliations

  1. [1] Aarhus University
  2. [NORA names: AU Aarhus University; University; Denmark; Europe, EU; Nordic; OECD]

Abstract

In this work, we investigate how exploiting symmetry when creating and modifying structural models may speed up global atomistic structure optimization. We propose a search strategy in which models start from high symmetry configurations and then gradually evolve into lower symmetry models. The algorithm is named cascading symmetry search and is shown to be highly efficient for a number of known surface reconstructions. We use our method for the sulfur-induced Cu (111) ( 43 × 43 ) surface reconstruction for which we identify a new highly stable structure that conforms with the experimental evidence.

Funders

  • Villum Fonden
  • Danmarks Grundforskningsfond

Data Provider: Elsevier