4.8 Article

Using Machine Learning and Data Mining to Leverage Community Knowledge for the Engineering of Stable Metal-Organic Frameworks

期刊

JOURNAL OF THE AMERICAN CHEMICAL SOCIETY
卷 143, 期 42, 页码 17535-17547

出版社

AMER CHEMICAL SOC
DOI: 10.1021/jacs.1c07217

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资金

  1. Energy Frontier Research Center - U.S. Department of Energy, Office of Science, Basic Energy Sciences [DE-SC0012702]
  2. National Science Foundation Graduate Research Fellowship [1122374]
  3. DARPA [D18AP00039]
  4. Office of Naval Research [N00014-20-1-2150]
  5. Scientific Interface from the Burroughs Wellcome Fund
  6. AAAS Marion Milligan Mason Award
  7. Inorganometallic Catalysis Design Center

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Researchers have successfully extracted and analyzed key aspects of MOF stability from a large number of published reports using natural language processing and image analysis, enabling faster predictions of stability using machine learning models and structure-property relationships encoding. This allows for more efficient identification of strategies to engineer increased stability into typically unstable MOFs targeted for catalytic applications, with the expectation of accelerating the discovery of stable and practical MOF materials for a wide range of applications.
Although the tailored metal active sites and porous architectures of MOFs hold great promise for engineering challenges ranging from gas separations to catalysis, a lack of understanding of how to improve their stability limits their use in practice. To overcome this limitation, we extract thousands of published reports of the key aspects of MOF stability necessary for their practical application: the ability to withstand high temperatures without degrading and the capacity to be activated by removal of solvent molecules. From nearly 4000 manuscripts, we use natural language processing and image analysis to obtain over 2000 solvent-removal stability measures and 3000 thermal degradation temperatures. We analyze the relationships between stability properties and the chemical and geometric structures in this set to identify limits of prior heuristics derived from smaller sets of MOFs. By training predictive machine learning (ML, i.e., Gaussian process and artificial neural network) models to encode the structure-property relationships with graph- and pore-structure-based representations, we are able to make predictions of stability orders of magnitude faster than conventional physics-based modeling or experiment. Interpretation of important features in ML models provides insights that we use to identify strategies to engineer increased stability into typically unstable 3d-transition-metal-containing MOFs that are frequently targeted for catalytic applications. We expect our approach to accelerate the time to discovery of stable, practical MOF materials for a wide range of applications.

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