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.
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Presenters
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Eric Taw
University of California, Berkeley
Authors
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Eric Taw
University of California, Berkeley
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Yuto Yabuuchi
University of California, Berkeley
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Kurtis M Carsch
University of California, Berkeley
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Rachel Rohde
University of California, Berkeley
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Jeffrey R Long
University of California, Berkeley, University of California Berkeley
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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