Impact of high-rank excitations on accuracy of the unitary coupled
cluster downfolding formalism
- URL: http://arxiv.org/abs/2305.09911v1
- Date: Wed, 17 May 2023 02:42:24 GMT
- Title: Impact of high-rank excitations on accuracy of the unitary coupled
cluster downfolding formalism
- Authors: Karol Kowalski, Bo Peng, Nicholas P. Bauman
- Abstract summary: We evaluate the accuracy of the Hermitian form of the downfolding procedure utilizing the double unitary coupled cluster Ansatz.
We show that this approach can offset problems of the corresponding SR-CC theories associated with losing the variational character of corresponding energies.
- Score: 5.774827369850958
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this paper, we evaluate the accuracy of the Hermitian form of the
downfolding procedure utilizing the double unitary coupled cluster Ansatz
(DUCC) on the H6 and H8 benchmark systems. The computational infrastructure
employs the occupation-number-representation codes to construct the matrix
representation of arbitrary second-quantized operators, enabling the exact
representation of exponentials of various operators. The tests utilize external
excitations estimated from standard single-reference coupled cluster methods
(SR-CC) to demonstrate that higher-rank SR-CC external amplitudes were
necessary to describe the energies in the strongly correlated regime
adequately. We show that this approach can offset problems of the corresponding
SR-CC theories associated with losing the variational character of
corresponding energies.
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