Localized Quantum Chemistry on Quantum Computers
- URL: http://arxiv.org/abs/2203.02012v1
- Date: Thu, 3 Mar 2022 20:52:22 GMT
- Title: Localized Quantum Chemistry on Quantum Computers
- Authors: Matthew Otten and Matthew R. Hermes and Riddhish Pandharkar and Yuri
Alexeev and Stephen K. Gray and Laura Gagliardi
- Abstract summary: Quantum chemistry calculations are typically limited by the computation cost that scales exponentially with the size of the system.
We present a quantum algorithm that combines a localization of multireference wave functions of chemical systems with quantum phase estimation.
- Score: 0.6649973446180738
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Quantum chemistry calculations of large, strongly correlated systems are
typically limited by the computation cost that scales exponentially with the
size of the system. Quantum algorithms, designed specifically for quantum
computers, can alleviate this, but the resources required are still too large
for today's quantum devices. Here we present a quantum algorithm that combines
a localization of multireference wave functions of chemical systems with
quantum phase estimation (QPE) and variational unitary coupled cluster singles
and doubles (UCCSD) to compute their ground state energy. Our algorithm, termed
"local active space unitary coupled cluster" (LAS-UCC), scales linearly with
system size for certain geometries, providing a polynomial reduction in the
total number of gates compared with QPE, while providing accuracy above that of
the variational quantum eigensolver using the UCCSD ansatz and also above that
of the classical local active space self-consistent field. The accuracy of
LAS-UCC is demonstrated by dissociating (H$_2$)$_2$ into two H$_2$ molecules
and by breaking the two double bonds in trans-butadiene and resources estimates
are provided for linear chains of up to 20 H$_2$ molecules.
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