High-performance chemical information database towards accelerating discovery of metal-organic frameworks for gas adsorption with machine learning

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Abstract

Chemical structure searching based on databases and machine learning has attracted great attention recently for fast screening materials with target functionalities. To this end, we established a high-performance chemical structure database based on MYSQL engines, named MYDB. More than 160000 metal-organic frameworks (MOFs) have been collected and stored by using new retrieval algorithms for efficient searching and recommendation. The evaluations results show that MYDB could realize fast and efficient key-word searching against millions of records and provide real-time recommendations for similar structures. Combining machine learning method and materials database, we developed an adsorption model to determine the adsorption capacitor of metal-organic frameworks toward argon and hydrogen under certain conditions. We expect that MYDB together with the developed machine learning techniques could support large-scale, low-cost, and highly convenient structural research towards accelerating discovery of materials with target functionalities in the field of computational materials research.

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Hao, Z. K., Lv, H. F., Wang, D. Y., & Wu, X. J. (2021). High-performance chemical information database towards accelerating discovery of metal-organic frameworks for gas adsorption with machine learning. Chinese Journal of Chemical Physics, 34(4), 436–442. https://doi.org/10.1063/1674-0068/cjcp2104079

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