2023
DOI: 10.1021/acsnano.3c05653
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Charting Nanocluster Structures via Convolutional Neural Networks

Emanuele Telari,
Antonio Tinti,
Manoj Settem
et al.

Abstract: A general method to obtain a representation of the structural landscape of nanoparticles in terms of a limited number of variables is proposed. The method is applied to a large data set of parallel tempering molecular dynamics simulations of gold clusters of 90 and 147 atoms, silver clusters of 147 atoms, and copper clusters of 147 atoms, covering a plethora of structures and temperatures. The method leverages convolutional neural networks to learn the radial distribution functions of the nanoclusters and dis… Show more

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