Discovery of New Air Separation Metal-Organic Frameworks via Bayesian Optimization
ORAL
Abstract
The discovery of new metal-organic frameworks (MOFs) for gas separations is highly labor- and time-intensive. Recent studies propose using high-throughput computational screening, though this approach requires a trade-off between computational expense and exploration of a wide chemical space. Because density functional theory (DFT) calculations are expensive and often require manual intervention, DFT is often limited to a small set of structurally similar MOFs. Here, we mitigate the expense-exploration trade-off by using Bayesian optimization to minimize the number of expensive yet accurate DFT calculations required to evaluate a new MOF for air separation. We first benchmark the ability for PBE-D3+U calculations to recover experimentally determined enthalpies of adsorption of O2, then proceed to calculate the same for promising candidate MOFs proposed by our Bayesian optimization procedure. By identifying MOFs that have a binding enthalpy of O2 around -45 kJ/mol, we propose a candidate material that is predicted to dramatically reduce the energy cost of air separation compared to standard industrial 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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Jeffrey B Neaton
Lawrence Berkeley National Laboratory, University of California, Berkeley; Lawrence Berkeley National Laboratory; Kavli Energy NanoSciences Institute at Berkeley, Department of Physics, University of California, Berkeley; Materials Sciences Division, Lawrence Berkeley National Laboratory; Kavli Energy NanoScience Institute at Berkeley, Department of Physics, University of California, Berkeley, CA 94720; Materials Sciences Division, Lawrence Berkeley National Laboratory, Berkeley, CA 94720; Kavli Energy Nano