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김광수

Kim, Kwang S.
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Fast atomic structure optimization with on-the-fly sparse Gaussian process potentials *

Author(s)
Hajibabaei, AmirUmer, MuhammadAnand, RohitHa, MiranKim, Kwang S.
Issued Date
2022-06
DOI
10.1088/1361-648X/ac76ff
URI
https://scholarworks.unist.ac.kr/handle/201301/59077
Citation
JOURNAL OF PHYSICS-CONDENSED MATTER, v.34, no.34, pp.344007
Abstract
We apply on-the-fly machine learning potentials (MLPs) using the sparse Gaussian process regression (SGPR) algorithm for fast optimization of atomic structures. Great acceleration is achieved even in the context of a single local optimization. Although for finding the exact local minimum, due to limited accuracy of MLPs, switching to another algorithm may be needed. For random gold clusters, the forces are reduced to similar to 0.1 eV angstrom(-1) within less than ten first-principles (FP) calculations. Because of highly transferable MLPs, this algorithm is specially suitable for global optimization methods such as random or evolutionary structure searching or basin hopping. This is demonstrated by sequential optimization of random gold clusters for which, after only a few optimizations, FP calculations were rarely needed.
Publisher
IOP Publishing Ltd
ISSN
0953-8984
Keyword (Author)
structure optimizationmachine learning potentialssparse Gaussian process potentials
Keyword
SELECTIVE OXIDATIONGLOBAL OPTIMIZATIONGOLD NANOCLUSTERSGENETIC ALGORITHMCLUSTERSNANOPARTICLESCHEMISTRY

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