Riemannian quantum circuit optimization based on matrix product operators
- URL: http://arxiv.org/abs/2501.08872v1
- Date: Wed, 15 Jan 2025 15:42:34 GMT
- Title: Riemannian quantum circuit optimization based on matrix product operators
- Authors: Isabel Nha Minh Le, Shuo Sun, Christian B. Mendl,
- Abstract summary: We significantly enhance the simulation accuracy of initial Trotter circuits for Hamiltonian simulation of quantum systems.
Our method imposes no symmetry assumptions, such as translational invariance, on the quantum systems.
We demonstrate the versatility of our method by applying it to molecular systems, specifically lithium hydride, achieving an error improvement of up to eight orders of magnitude.
- Score: 6.017170598457384
- License:
- Abstract: We significantly enhance the simulation accuracy of initial Trotter circuits for Hamiltonian simulation of quantum systems by integrating first-order Riemannian optimization with tensor network methods. Unlike previous approaches, our method imposes no symmetry assumptions, such as translational invariance, on the quantum systems. This technique is scalable to large systems through the use of a matrix product operator representation of the reference time evolution propagator. Our optimization routine is applied to various spin chains and fermionic systems, with a particular focus on one-dimensional systems described by the transverse-field Ising Hamiltonian, the Heisenberg Hamiltonian, and the spinful Fermi-Hubbard Hamiltonian. In these cases, our approach achieves a relative error improvement of up to four orders of magnitude. Furthermore, we demonstrate the versatility of our method by applying it to molecular systems, specifically lithium hydride, achieving an error improvement of up to eight orders of magnitude. This proof of concept highlights the potential of our approach for broader applications in quantum simulations.
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