Atomistic structure search using local surrogate mode
Rønne, Nikolaj, Christiansen, Mads-Peter V., Slavensky, Andreas Møller, Tang, Zeyuan, Brix, Florian, Pedersen, Mikkel Elkjær, Bisbo, Malthe Kjær, Hammer, Bjørk
–arXiv.org Artificial Intelligence
We describe a local surrogate model for use in conjunction with global structure search methods. The model follows the Gaussian approximation potential (GAP) formalism and is based on a the smooth overlap of atomic positions descriptor with sparsification in terms of a reduced number of local environments using mini-batch $k$-means. The model is implemented in the Atomistic Global Optimization X framework and used as a partial replacement of the local relaxations in basin hopping structure search. The approach is shown to be robust for a wide range of atomistic system including molecules, nano-particles, surface supported clusters and surface thin films. The benefits in a structure search context of a local surrogate model are demonstrated. This includes the ability to transfer learning from smaller systems as well as the possibility to perform concurrent multi-stoichiometry searches.
arXiv.org Artificial Intelligence
Aug-19-2022
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