Session N21: Computational Methods: Multiscale Modeling
8:00 AM–11:00 AM, Wednesday, March 7, 2007
Colorado Convention Center Room: 106
Sponsoring Unit:
DCOMP
Chair: Brian Good, NASA Glenn
Abstract ID: BAPS.2007.MAR.N21.2
Abstract: N21.00002 : Finding the minimum-energy atomic configuration in large multi-atom structures: Genetic Algorithm versus the Virtual-Atom Approach
8:12 AM–8:24 AM
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Abstract
Authors:
Mayeul d'Avezac
(National Renewable Energy Lab)
Alex Zunger
(National Renewable Energy Lab)
In many problems in molecular and solid state structures one needs to determine the energy-minimizing decoration of sites by different atom-types (i.~e.\emph{configuration}). The sheer size of this configurational space can be horrendous even if the underlying lattice-type is known. The ab-initio total-energy surface for different (relaxed) configurations can often be parameterized by a spin-like Hamiltonian (\emph{Cluster-Expansion}) with discrete spin -variables denoting the type of atom occupying each site. We compare two search strategies for the energy-minimizing configuration: (i) A discrete-variable genetic-algorithm approach( S. V. Dudiy and A. Zunger, PRL {\bf 97}, 046401 (2006) ) and (ii) a continuous-variable approach (M. Wang et al, J. Am. Chem. Soc. {\bf 128}, 3228 (2006) ) where the discrete-spin functional is mapped onto a continuous-spin functional (\emph{virtual atoms}) and the search is guided by local gradients with respect to each spin. We compare their efficiency at locating the ground-state configurations of fcc Au-Pd Alloy in terms of number of calls to the functional. We show that a GA approach with diversity-enhancing constraints and reciprocal-space mating easily outperforms the VA approach.
To cite this abstract, use the following reference: http://meetings.aps.org/link/BAPS.2007.MAR.N21.2
