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Algorithmic inversion and dynamical functionals to address correlations in materials

ORAL

Abstract

Energy functionals of the Green's function (GF) provide a suitable alternative to density-functional theory (DFT), offering the flexibility to accurately predict both spectral and ground state quantities. Functionals of the GF are dynamical, i.e., they are stationary for the solution of the Dyson equation featuring a self-energy; as opposed to the static Kohn-Sham equations of DFT they are much more difficult to treat. In this talk I address the challenges of frequency-dependent formulations by introducing the algorithmic-inversion method on sum-over-poles (AIM-SOP), showing a link between the Dyson equation and non-linear eigenvalue problems and solving it via embedding theory. Furthermore, I discuss a generalization of the DFT+Hubbard functional to host a frequency-dependent screening, resulting in an energy functional of the local Green's function, termed dynamical Hubbard. This allows to perform charge or full self-consistent calculations, that I showcase on the paradigmatic example of SrVO3, calculating its spectrum, equation of state, and phonons at Gamma, obtaining results comparable to experiments and state-of-the art DMFT methods.

T. Chiarotti, A. Ferretti, and N. Marzari, PRR 6, L032023 (2024)

Publication: T. Chiarotti, A. Ferretti, and N. Marzari, PRR 6, L032023 (2024)

Presenters

  • Tommaso Chiarotti

    California Institute of Technology (CALTECH), Pasadena, California, USA, Caltech, California Institute of Technology

Authors

  • Tommaso Chiarotti

    California Institute of Technology (CALTECH), Pasadena, California, USA, Caltech, California Institute of Technology

  • Mario Caserta

    Federal Institute of Technology (EPFL)

  • Andrea Ferretti

    CNR Institute for Nanoscience

  • Nicola Marzari

    Ecole Polytechnique Federale de Lausanne, École Polytechnique Fédérale de Lausanne (EPFL), Ecole Polytechnique Federale de Lausanne (EPFL), Paul Scherrer Institut (PSI)