Kohn-Sham regularizer in the bond-dissociation limit
ORAL
Abstract
With standard exchange-correlation (XC) approximations, Kohn-Sham density functional theory (KS-DFT) fails to correctly describe the breaking of a chemical bond. A nonlocal machine-learned XC can provide a good description of such strongly correlated systems when carefully embedded with prior knowledge and trained on accurate results. By training on just two separations, the Kohn-Sham regularizer (KSR) with a nonlocal neural network approximation to the XC energy density is shown to reproduce the entire binding energy curve of one-dimensional H2 with chemical accuracy [1]. We analyze the ingredients of this nonlocal approximation and assess the importance of including prior knowledge in constructing machine-learned functionals. We further evaluate the generalizability of the performance of KSR local, semilocal and nonlocal neural XC approximations for one-dimensional strongly correlated molecules with limited training. We also analyze the machine-learned XC potentials, especially for stretched heteronuclear diatomic molecules where the exact XC potential has a characteristic localized upshift in the region around the more electronegative atom.
1] Li et al. Kohn-Sham equations as regularizer: Building prior knowledge into machine-learned physics. Phys. Rev. Lett. 126, 036401 (2021).
1] Li et al. Kohn-Sham equations as regularizer: Building prior knowledge into machine-learned physics. Phys. Rev. Lett. 126, 036401 (2021).
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Presenters
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Bhupalee Kalita
University of California, Irvine
Authors
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Bhupalee Kalita
University of California, Irvine
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Ryan D Pederson
University of California, Irvine
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Li Li
Google LLC
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Kieron Burke
University of California, Irvine