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Efficient Discovery of Air Separation Adsorbents via Multi-Fidelity Bayesian Optimization

ORAL

Abstract

Metal-organic frameworks provide seemingly endless choices of metal and organic species to tune small molecule adsorption behavior. Specifically, we examine MFU-4l and its variants as a platform for O2/N2 gas separation, an application where solid adsorbents promise to dramatically reduce the energy intensity of a traditionally costly and inefficient process. We enumerate a set of possible structure modifications of MFU-4l as combinations of metal species and organic ligands to develop a list of over 10,000 structures, and we screen their binding affinity for O2 and N2 using ab initio density functional theory calculations. To reduce computational effort, we use a Bayesian optimization approach with a multi-fidelity surrogate model that combines both ab initio and experimentally-obtained binding energy data. Through this work, we present candidate materials that can selectively separate O2 from N2 at ambient conditions with dramatically decreased energy cost relative to current adsorbents.

Presenters

  • Eric Taw

    University of California, Berkeley

Authors

  • Eric Taw

    University of California, Berkeley

  • Yuto Yabuuchi

    University of California, Berkeley

  • Kurtis M Carsch

    University of California, Berkeley

  • Rachel Rohde

    University of California, Berkeley

  • Jeffrey R Long

    University of California, Berkeley, University of California Berkeley

  • Jeffrey B Neaton

    Lawrence Berkeley National Laboratory, University of California, Berkeley, Department of Physics, University of California, Berkeley; Materials Sciences Division, Lawrence Berkeley National Laboratory; Kavli Energy NanoScience Institute at Berkeley