Affiliation:
1. Georgia Institute of Technology Atlanta GA
2. National Supercomputing Center Shenzhen People's Republic of China
3. Toyota Research Institute Los Altos CA
4. Department of Chemistry Brown University Providence RI
Abstract
AbstractThe exchange‐correlation (XC) functional in density functional theory is used to approximate multi‐electron interactions. A plethora of different functionals are available, but nearly all are based on the hierarchy of inputs commonly referred to as “Jacob's ladder.” This paper introduces an approach to construct XC functionals with inputs from convolutions of arbitrary kernels with the electron density, providing a route to move beyond Jacob's ladder. We derive the variational derivative of these functionals, showing consistency with the generalized gradient approximation (GGA), and provide equations for variational derivatives based on multipole features from convolutional kernels. A proof‐of‐concept functional, PBEq, which generalizes the PBE
framework with
being a spatially‐resolved function of the monopole of the electron density, is presented and implemented. It allows a single functional to use different GGAs at different spatial points in a system, while obeying PBE constraints. Analysis of the results underlines the importance of error cancellation and the XC potential in data‐driven functional design. After testing on small molecules, bulk metals, and surface catalysts, the results indicate that this approach is a promising route to simultaneously optimize multiple properties of interest.
Cited by
1 articles.
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1. Training Machine-Learned Density Functionals on Band Gaps;Journal of Chemical Theory and Computation;2024-08-23