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Coupled Cluster Molecular Dynamics of Condensed Phase Systems Enabled by Machine Learning Potentials: Liquid Water Benchmark

János Daru, Harald Forbert, Jörg Behler, Dominik Marx

2022Physical Review Letters100 citationsDOIOpen Access PDF

Abstract

Coupled cluster theory is a general and systematic electronic structure method, but in particular the highly accurate "gold standard" coupled cluster singles, doubles and perturbative triples, CCSD(T), can only be applied to small systems. To overcome this limitation, we introduce a framework to transfer CCSD(T) accuracy of finite molecular clusters to extended condensed phase systems using a high-dimensional neural network potential. This approach, which is automated, allows one to perform high-quality coupled cluster molecular dynamics, CCMD, as we demonstrate for liquid water including nuclear quantum effects. The machine learning strategy is very efficient, generic, can be systematically improved, and is applicable to a variety of complex systems.

Topics & Concepts

Cluster (spacecraft)Benchmark (surveying)Coupled clusterMolecular dynamicsComputer scienceStatistical physicsPhase (matter)Variety (cybernetics)QuantumComplex systemPhysicsQuantum mechanicsMoleculeArtificial intelligenceGeodesyProgramming languageGeographyMachine Learning in Materials ScienceQuantum, superfluid, helium dynamicsAdvanced Chemical Physics Studies
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