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Introducing the embedded random phase approximation: H2 dissociative adsorption on Cu(111) as an exemplar

Ziyang Wei, John Mark P. Martirez, Emily A. Carter

2023The Journal of Chemical Physics19 citationsDOIOpen Access PDF

Abstract

The random phase approximation (RPA) as a means of treating electron correlation recently has been shown to outperform standard density functional theory (DFT) approximations in a variety of cases. However, the computational cost of the RPA is substantially more than DFT, especially when aiming to study extended surfaces. Properly accounting for sufficient surface ensemble size, Brillouin zone sampling, and vacuum separation of periodic images in standard periodic-planewave-based DFT code raises the cost to achieve converged results. Here, we show that sub-system embedding schemes enable use of the RPA for modeling heterogeneous reactions at reduced computational cost. We explore two different embedded RPA (emb-RPA) approaches, periodic emb-RPA and cluster emb-RPA. We use the (experimentally and theoretically) well-studied H2 dissociative adsorption on Cu(111) as our exemplar, and first perform full periodic RPA calculations as a benchmark. The full RPA results match well the semi-empirical barrier fit to experimental observables and others derived from high-level computations, e.g., from recent embedded n-electron valence second order perturbation theory [Zhao et al., J. Chem. Theory Comput. 16(11), 7078-7088 (2020)] and quantum Monte Carlo [Doblhoff-Dier et al., J. Chem. Theory Comput. 13(7), 3208-3219 (2017)] simulations. Among the two emb-RPA approaches tested, the cluster emb-RPA accurately reproduces the energy profile (maximum error of 50 meV along the reaction pathway) while reducing the computational cost by approximately two orders of magnitude. We therefore expect that the embedded cluster approach will enable wider RPA implementation in heterogeneous catalysis.

Topics & Concepts

Random phase approximationDensity functional theoryQuantum Monte CarloStatistical physicsCoupled clusterMonte Carlo methodPerturbation theory (quantum mechanics)ComputationRandomnessComputer sciencePhysicsQuantum mechanicsMathematicsMoleculeAlgorithmStatisticsAdvanced Chemical Physics StudiesMachine Learning in Materials ScienceSurface Chemistry and Catalysis
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