Facilitating Screening of MOFs for Mixed Matrix Membranes Using Machine Learning and the Maxwell Model.

Journal: The journal of physical chemistry. C, Nanomaterials and interfaces
Published Date:

Abstract

Metal organic framework (MOF)-based mixed-matrix membranes (MMMs), which embed MOF particles in polymer matrices, combine the advantages of polymeric and inorganic membranes. Multiple previous studies have used the Maxwell model together with molecular simulations and machine learning (ML) to predict the performance of MOF/polymer MMMs. However, the assumption of rigid MOF frameworks in molecular simulations limited the accuracy of the data used in the predictions, particularly in predicting molecular diffusivities. We developed a novel workflow integrating ML models with consideration of MOF flexibility to predict the permeability and selectivity of 131,722 MMMs for CO/CH, O/N and He/H separations. The full range of achievable MMM performance within the Maxwell model was analyzed, and several promising MOFs were identified using this workflow. This approach offers an efficient tool for screening any polymer and MOF combination in gas separation applications.

Authors

  • Xiaohan Yu
    School of Chemical & Biomolecular Engineering, Georgia Institute of Technology, Atlanta, Georgia 30332-0100, United States.
  • Jia Yuan Chng
    School of Chemical & Biomolecular Engineering, Georgia Institute of Technology, Atlanta, Georgia 30332-0100, United States.
  • David S Sholl
    Oak Ridge National Laboratory, Oak Ridge, Tennessee 37830, United States.

Keywords

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