Publication | Open Access
Accurate and numerically efficient r$^2$SCAN meta-generalized gradient approximation
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2020
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Numerical AnalysisMathematical ProgrammingEngineeringComputational ChemistryEnergy MinimizationNumerical ComputationPde-constrained OptimizationDerivative-free OptimizationRegularization (Mathematics)Approximation TheoryPhysicsRegularized FormLarge Scale OptimizationInverse ProblemsComputer ScienceQuantum ChemistryNumerical PerformanceFunctional MaintainsNatural Sciences
The recently proposed rSCAN functional [J. Chem. Phys. 150, 161101 (2019)] is a regularized form of the SCAN functional [Phys. Rev. Lett. 115, 036402 (2015)] that improves SCAN's numerical performance at the expense of breaking constraints known from the exact exchange-correlation functional. We construct a new meta-generalized gradient approximation by restoring exact constraint adherence to rSCAN. The resulting functional maintains rSCAN's numerical performance while restoring the transferable accuracy of SCAN.