Quasi-combinatorial energy landscapes for nanoalloy structure optimisation

We formulate nanoalloy structure prediction as a mixed-variable optimisation problem, where the homotops can be associated with an effective, quasi-combinatorial energy landscape in permutation space. We survey this effective landscape for a representative set of binary systems modelled by the Gupta...

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Veröffentlicht in:Physical chemistry chemical physics : PCCP 2015-01, Vol.17 (42), p.28331-28338
Hauptverfasser: Schebarchov, D, Wales, D. J
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Sprache:eng
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Zusammenfassung:We formulate nanoalloy structure prediction as a mixed-variable optimisation problem, where the homotops can be associated with an effective, quasi-combinatorial energy landscape in permutation space. We survey this effective landscape for a representative set of binary systems modelled by the Gupta potential. In segregating systems with small lattice mismatch, we find that homotops have a relatively straightforward landscape with few local optima - a scenario well-suited for local (combinatorial) optimisation techniques that scale quadratically with system size. Combining these techniques with multiple local-neighbourhood structures yields a search for multiminima, and we demonstrate that generalised basin-hopping with a metropolis acceptance criterion in the space of multiminima can then be effective for global optimisation of binary and ternary nanoalloys. Nanoalloy energy landscapes explored in continuous and discrete metric spaces simultaneously.
ISSN:1463-9076
1463-9084
DOI:10.1039/c5cp01198a