2024
DOI: 10.1021/acs.jpcc.3c07246
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Accelerated Data-Driven Discovery and Screening of Two-Dimensional Magnets Using Graph Neural Networks

Ahmed Elrashidy,
James Della-Giustina,
Jia-An Yan

Abstract: In this study, we employ graph neural networks (GNNs) to accelerate the discovery of novel 2D magnetic materials which have transformative potential in spintronic applications. Using data from the Materials Project database and the Computational 2D materials database, we train three GNN architectures on a dataset of 1190 magnetic monolayers with energy above the convex hull (E hull ) less than 0.3 eV/atom. Our Crystal Diffusion Variational Autoencoder generates 11,100 candidate crystals. Subsequent training on… Show more

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Cited by 3 publications
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“…In JPC C , the special issue papers describe ML and other data science techniques utilized in the scope of nanoparticles and nanostructures; surface and interface processes; electron, ion, and thermal transport; optic, electronic, and optoelectronic materials; and catalysts and catalysis; as well as energy conversion and storage materials and processes. As in the Parts A and B, a number of articles directly address either the development of new methods or the use of ML methods in new ways. Several contributions relate to methods in the use or development of so-called machine learning potentials (MLP) or machine learning interaction potentials (MLIP), including a Perspective on improving these models authored by Maxson et al, as well as other contributions. Interfaces and related phenomena are addressed in several articles. Nanomaterials and their properties are also prominently featured. Another large category in JPC C includes studies that address the calculation of properties of materials for wide-ranging applications. …”
mentioning
confidence: 99%
“…In JPC C , the special issue papers describe ML and other data science techniques utilized in the scope of nanoparticles and nanostructures; surface and interface processes; electron, ion, and thermal transport; optic, electronic, and optoelectronic materials; and catalysts and catalysis; as well as energy conversion and storage materials and processes. As in the Parts A and B, a number of articles directly address either the development of new methods or the use of ML methods in new ways. Several contributions relate to methods in the use or development of so-called machine learning potentials (MLP) or machine learning interaction potentials (MLIP), including a Perspective on improving these models authored by Maxson et al, as well as other contributions. Interfaces and related phenomena are addressed in several articles. Nanomaterials and their properties are also prominently featured. Another large category in JPC C includes studies that address the calculation of properties of materials for wide-ranging applications. …”
mentioning
confidence: 99%