English

The performance of Minima Hopping and Evolutionary Algorithms for cluster structure prediction

Other Condensed Matter 2009-11-13 v1

Abstract

We compare Evolutionary Algorithms with Minima Hopping for global optimization in the field of cluster structure prediction. We introduce a new {\em average offspring} recombination operator and compare it with previously used operators. Minima Hopping is improved with a {\em softening} method and a stronger feedback mechanism. Test systems are atomic clusters with Lennard-Jones interaction as well as silicon and gold clusters described by force fields. The improved Minima Hopping is found to be well-suited to all these homoatomic problems. The evolutionary algorithm is more efficient for systems with compact and symmetric ground states, including LJ150_{150}, but it fails for systems with very complex energy landscapes and asymmetric ground states, such as LJ75_{75} and silicon clusters with more than 30 atoms. Both successes and failures of the evolutionary algorithm suggest ways for its improvement.

Keywords

Cite

@article{arxiv.0810.2055,
  title  = {The performance of Minima Hopping and Evolutionary Algorithms for cluster structure prediction},
  author = {Sandro E. Schoenborn and Stefan Goedecker and Shantanu Roy and Artem R. Oganov},
  journal= {arXiv preprint arXiv:0810.2055},
  year   = {2009}
}
R2 v1 2026-06-21T11:29:48.937Z