: 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 distills a low-dimensional chart of the structural landscape. This strategy is found to give rise to a physically meaningful and differentiable mapping of the atom positions to a low-dimensional manifold in which the main structural moti...
Machine learning models are known to be sensitive to the features used to train them, but there is c...
Automated analyses of the outcome of a simulation have been an important part of atomistic modeling ...
This data repository contains the codes for preprocessing point cloud data from MD simulation trajec...
: A general method to obtain a representation of the structural landscape of nanoparticles in terms ...
© 2023 The Author(s). Published by the Royal Society of Chemistry. This is an open-access article di...
Nanoscale L12-type ordered structures are widely used in face-centered cubic (FCC) alloys to exploit...
Gold nanoclusters in the size range of 3-8 nm in diameter (923-10179) atoms were studied using the e...
Gold nanoclusters have been the focus of numerous computational studies, but an atomistic understand...
In this study we use a new topological structure measure to analyze the local environment of 923 ato...
Machine learning is a useful way of identifying representative or pure nanoparticle shapes as part o...
In the nanometer lengthscale, the boundaries between physics, chemistry and biology disappear and al...
Properties of mono- and bimetallic metal nanoparticles (NPs) may depend strongly on their compositio...
Gold nanoclusters have been the focus of numerous computational studies, but an atomistic understand...
The self-assembly of nanostructures has been of growing interest in materials science, with particul...
Gold nanoclusters have been shown to be a most promising nanomaterial with a wide range of potential...
Machine learning models are known to be sensitive to the features used to train them, but there is c...
Automated analyses of the outcome of a simulation have been an important part of atomistic modeling ...
This data repository contains the codes for preprocessing point cloud data from MD simulation trajec...
: A general method to obtain a representation of the structural landscape of nanoparticles in terms ...
© 2023 The Author(s). Published by the Royal Society of Chemistry. This is an open-access article di...
Nanoscale L12-type ordered structures are widely used in face-centered cubic (FCC) alloys to exploit...
Gold nanoclusters in the size range of 3-8 nm in diameter (923-10179) atoms were studied using the e...
Gold nanoclusters have been the focus of numerous computational studies, but an atomistic understand...
In this study we use a new topological structure measure to analyze the local environment of 923 ato...
Machine learning is a useful way of identifying representative or pure nanoparticle shapes as part o...
In the nanometer lengthscale, the boundaries between physics, chemistry and biology disappear and al...
Properties of mono- and bimetallic metal nanoparticles (NPs) may depend strongly on their compositio...
Gold nanoclusters have been the focus of numerous computational studies, but an atomistic understand...
The self-assembly of nanostructures has been of growing interest in materials science, with particul...
Gold nanoclusters have been shown to be a most promising nanomaterial with a wide range of potential...
Machine learning models are known to be sensitive to the features used to train them, but there is c...
Automated analyses of the outcome of a simulation have been an important part of atomistic modeling ...
This data repository contains the codes for preprocessing point cloud data from MD simulation trajec...