Quantifying uncertainty in DFT energy corrections
ORAL
Abstract
Density functional theory (DFT) is routinely used to estimate enthalpies of formation, phase stability, and other energy-derived properties. The accuracy of these estimates can be improved by using experimental thermodynamic data to develop energy corrections that remove some of the systematic error in DFT-computed properties. In this work, we demonstrate a method to quantify uncertainty in these energy correction values which captures uncertainty propagated from the underlying experimental data as well as sensitivity to the selection of fit parameters. We then incorporate this method into a new DFT energy correction scheme comprising a mixture of oxidation-state and composition-dependent corrections and show that many chemical systems contain unstable polymorphs that may actually be predicted stable when uncertainty is taken into account.
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Publication: Wang, A., Kingsbury, R., McDermott, M. et al. A framework for quantifying uncertainty in DFT energy corrections. Sci Rep 11, 15496 (2021)
Presenters
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Amanda X Wang
University of Michigan
Authors
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Amanda X Wang
University of Michigan
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Ryan Kingsbury
University of California, Berkeley
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Matthew McDermott
University of California, Berkeley
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Matthew Horton
Lawrence Berkeley National Laboratory
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Anubhav Jain
Lawrence Berkeley National Laboratory
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Shyue Ping Ong
University of California, San Diego
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Shyam Dwaraknath
Lawrence Berkeley National Laboratory
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Kristin Persson
Lawrence Berkeley National Laboratory