Consistent inclusion of triple substitutions within a coupled cluster based static quantum embedding theory
Avijit Shee, Fabian M. Faulstich, K. Birgitta Whaley, Lin Lin, Martin Head-Gordon

TL;DR
This paper develops an advanced static quantum embedding method incorporating triple excitations via coupled cluster theory, improving accuracy for challenging molecular systems by including environment feedback and perturbative corrections.
Contribution
It introduces MPCCSDT(pt) and MPCCSDT(it), novel coupled cluster based embedding approaches with environment feedback and perturbative triples, surpassing previous methods in accuracy.
Findings
Environment triples amplitudes are crucial for accuracy.
Feedback from environment to fragment is important in complex molecules.
Second-order perturbative treatment improves results in challenging cases.
Abstract
We incorporate a solver for the fragment problem with accuracy beyond coupled cluster singles and doubles (CCSD) into the previously proposed static embedding framework, MPCC. To this end, we employ a CCSDT solver for the fragment subsystem. For the environment subsystem, we construct a perturbative estimate of the triples amplitudes, explicitly accounting for feedback from all fragment amplitudes. The resulting approach is denoted MPCCSDT(pt). We further introduce a more complete formulation in which feedback from the environment amplitudes to the fragment amplitudes is also included. This scheme involves an iterative treatment of the environment triples amplitudes and is denoted MPCCSDT(it). In addition, we assess the accuracy of the previously proposed low-level method by introducing a modified low-level approach that incorporates a lowest-order treatment of selected long-range…
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Taxonomy
TopicsAdvanced Chemical Physics Studies · Advanced Physical and Chemical Molecular Interactions · Machine Learning in Materials Science
