Towards catalysis modeling with QMC

ORAL

Abstract

Predictive modeling of catalytic processes on surfaces is challenging because of large uncertainties in computed energetics using density functional theory (DFT), and exponential dependence of catalyst performance on energies. In particular, the use of various DFT functionals and approximations results in qualitatively different results. The problem is compounded when treating transition metal oxides where a host of DFT errors persist. In this work, made possible by leadership scale high performance computers, we use quantum Monte Carlo (QMC) to determine the adsorption energies of the CO molecule on Cu$_2$O (110) surface for various geometries determined by different DFT approximations. The relationships between geometry and energies, and between DFT and QMC results, will be discussed.

*An award of computer time was provided by the Innovative and Novel Computational Impact on Theory and Experiment (INCITE) program. This research used resources of the Argonne Leadership Computing Facility, which is a DOE Office of Science User Facility supported under Contract DE-AC02-06CH11357.

Presenters

  • Viraaj Jayaram

    • University of Chicago

Authors

  • Viraaj Jayaram

    • University of Chicago
  • Ryan Pederson

    • Argonne National Lab
    • Department of Physics, Virginia Tech
  • Liang Li

    • Argonne National Laboratory
    • Argonne National Lab
    • Center for Nanoscale Materials, Argonne National Laboratory
  • Anouar Benali

    • Argonne Leadership Computing Facility, Argonne National Laboratory
    • Argonne National Lab
  • Ye Luo

    • Argonne National Laboratory
    • Argonne National Lab
  • Maria Chan

    • Argonne National Lab
    • Argonne National Laboratory
    • Center for Nanoscale Materials, Argonne National Laboratory