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arxiv: 2310.07671 · v2 · pith:6EEK76M2 · submitted 2023-10-11 · cs.CE · cond-mat.mtrl-sci

Discovery of Novel Reticular Materials for Carbon Dioxide Capture using GFlowNets

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classification cs.CE cond-mat.mtrl-sci
keywords materialsgflownetsdatasetdiscoverynovelreticularapplicationscandidates
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Artificial intelligence holds promise to improve materials discovery. GFlowNets are an emerging deep learning algorithm with many applications in AI-assisted discovery. By using GFlowNets, we generate porous reticular materials, such as metal organic frameworks and covalent organic frameworks, for applications in carbon dioxide capture. We introduce a new Python package (matgfn) to train and sample GFlowNets. We use matgfn to generate the matgfn-rm dataset of novel and diverse reticular materials with gravimetric surface area above 5000 m$^2$/g. We calculate single- and two-component gas adsorption isotherms for the top-100 candidates in matgfn-rm. These candidates are novel compared to the state-of-art ARC-MOF dataset and rank in the 90th percentile in terms of working capacity compared to the CoRE2019 dataset. We discover 15 materials outperforming all materials in CoRE2019.

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