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Main Authors: Yakovenko, Elizaveta, Nevolin, Iurii, Chasovskikh, Anatoliy, Mitrofanov, Artem, Korolev, Vadim
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.10814
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author Yakovenko, Elizaveta
Nevolin, Iurii
Chasovskikh, Anatoliy
Mitrofanov, Artem
Korolev, Vadim
author_facet Yakovenko, Elizaveta
Nevolin, Iurii
Chasovskikh, Anatoliy
Mitrofanov, Artem
Korolev, Vadim
contents Crystal structure prediction (CSP) has proven to be a highly effective route for discovering new materials. Substantial advancements have been made in CSP of inorganic and molecular crystals, while hybrid materials, including metal-organic frameworks (MOFs), have been unfairly overlooked. The ab initio techniques adopted for the CSP of MOFs cannot be scaled to a high-throughput regime, which is required for efficient exploration of the immense chemical space. Here, we propose a data-driven method to tackle current needs of computational MOF discovery. By examining CSP through the lens of reticular chemistry, coarse-grained neural networks were implemented to predict underlying net topology of crystal graphs. The models showed satisfactory performance, which was next enhanced by limiting the applicability domain. Flue gas separation was used as an illustrative example to validate the proposed CSP approach. Several hundred in silico-generated systems revealed a notable discrepancy in adsorption capacity among competing polymorphs.
format Preprint
id arxiv_https___arxiv_org_abs_2408_10814
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Data-driven prediction of structure of metal-organic frameworks
Yakovenko, Elizaveta
Nevolin, Iurii
Chasovskikh, Anatoliy
Mitrofanov, Artem
Korolev, Vadim
Materials Science
Crystal structure prediction (CSP) has proven to be a highly effective route for discovering new materials. Substantial advancements have been made in CSP of inorganic and molecular crystals, while hybrid materials, including metal-organic frameworks (MOFs), have been unfairly overlooked. The ab initio techniques adopted for the CSP of MOFs cannot be scaled to a high-throughput regime, which is required for efficient exploration of the immense chemical space. Here, we propose a data-driven method to tackle current needs of computational MOF discovery. By examining CSP through the lens of reticular chemistry, coarse-grained neural networks were implemented to predict underlying net topology of crystal graphs. The models showed satisfactory performance, which was next enhanced by limiting the applicability domain. Flue gas separation was used as an illustrative example to validate the proposed CSP approach. Several hundred in silico-generated systems revealed a notable discrepancy in adsorption capacity among competing polymorphs.
title Data-driven prediction of structure of metal-organic frameworks
topic Materials Science
url https://arxiv.org/abs/2408.10814