4.8 Article

Diversifying Databases of Metal Organic Frameworks for High-Throughput Computational Screening

期刊

ACS APPLIED MATERIALS & INTERFACES
卷 13, 期 51, 页码 61004-61014

出版社

AMER CHEMICAL SOC
DOI: 10.1021/acsami.1c16220

关键词

MOFs; molecular simulations; machine learning; diversity; carbon capture; hydrogen storage

资金

  1. European Research Council (ERC) under the European Union's Horizon 2020 research and innovation programme [666983]
  2. NCCR-MARVEL - Swiss National Science Foundation
  3. PrISMa Project through the ACT Programme (Accelerating CCS Technologies, Horizon 2020) [299659, 294766]
  4. Department for Business, Energy & Industrial Strategy (BEIS)
  5. NERC Research Council, United Kingdom
  6. EPSRC Research Council, United Kingdom
  7. Research Council of Norway (RCN)
  8. Swiss Federal Office of Energy (SFOE)
  9. U.S. Department of Energy
  10. TOTAL
  11. Equinor

向作者/读者索取更多资源

This study developed a database of around 20,000 hypothetical MOFs, visualizing and quantifying their diversity using machine learning techniques. The addition of these structures improved the overall diversity metrics of the databases, especially in terms of the chemistry of metal nodes. Evaluations using grand-canonical Monte Carlo simulations showed that many of these diverse structures outperformed benchmark materials in post-combustion carbon capture and hydrogen storage applications.
By combining metal nodes and organic linkers, an infinite number of metal organic frameworks (MOFs) can be designed in silico. Therefore, when making new databases of such hypothetical MOFs, we need to ensure that they not only contribute toward the growth of the count of structures but also add different chemistries to the existing databases. In this study, we designed a database of similar to 20,000 hypothetical MOFs, which are diverse in terms of their chemical design space-metal nodes, organic linkers, functional groups, and pore geometries. Using machine learning techniques, we visualized and quantified the diversity of these structures. We find that on adding the structures of our database, the overall diversity metrics of hypothetical databases improve, especially in terms of the chemistry of metal nodes. We then assessed the usefulness of diverse structures by evaluating their performance, using grand-canonical Monte Carlo simulations, in two important environmental applications-post-combustion carbon capture and hydrogen storage. We find that many of these structures perform better than widely used benchmark materials such as Zeolite-13X (for post-combustion carbon capture) and MOF-5 (for hydrogen storage). All the structures developed in this study, and their properties, are provided on the Materials Cloud to encourage further use of these materials for other applications.

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