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Machine learning the quantum-chemical properties of metal–organic frameworks for accelerated materials discovery

Authors :
Randall Q. Snurr
Andrew S. Rosen
Laura Gagliardi
Shaelyn M. Iyer
Alán Aspuru-Guzik
Debmalya Ray
Zhenpeng Yao
Justin M. Notestein
Source :
Matter. 4:1578-1597
Publication Year :
2021
Publisher :
Elsevier BV, 2021.

Abstract

Summary The modular nature of metal–organic frameworks (MOFs) enables synthetic control over their physical and chemical properties, but it can be difficult to know which MOFs would be optimal for a given application. High-throughput computational screening and machine learning are promising routes to efficiently navigate the vast chemical space of MOFs but have rarely been used for the prediction of properties that need to be calculated by quantum mechanical methods. Here, we introduce the Quantum MOF (QMOF) database, a publicly available database of computed quantum-chemical properties for more than 14,000 experimentally synthesized MOFs. Throughout this study, we demonstrate how machine learning models trained on the QMOF database can be used to rapidly discover MOFs with targeted electronic structure properties, using the prediction of theoretically computed band gaps as a representative example. We conclude by highlighting several MOFs predicted to have low band gaps, a challenging task given the electronically insulating nature of most MOFs.

Details

ISSN :
25902385
Volume :
4
Database :
OpenAIRE
Journal :
Matter
Accession number :
edsair.doi...........d89cb0b45c3ba86eb22eb1b0380b31e0
Full Text :
https://doi.org/10.1016/j.matt.2021.02.015