Error-Mitigated Quantum Simulation of Interacting Fermions with Trapped
Ions
- URL: http://arxiv.org/abs/2302.10436v1
- Date: Tue, 21 Feb 2023 04:27:30 GMT
- Title: Error-Mitigated Quantum Simulation of Interacting Fermions with Trapped
Ions
- Authors: Wentao Chen, Shuaining Zhang, Jialiang Zhang, Xiaolu Su, Yao Lu, Kuan
Zhang, Mu Qiao, Ying Li, Jing-Ning Zhang, and Kihwan Kim
- Abstract summary: probabilistic error cancellation (PEC) has been proposed as a general and systematic protocol.
PEC has been tested in two-qubit systems and a superconducting multi-qubit system.
We benchmark PEC using up to four trapped-ion qubits.
- Score: 17.707261555353682
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Quantum error mitigation has been extensively explored to increase the
accuracy of the quantum circuits in noisy-intermediate-scale-quantum (NISQ)
computation, where quantum error correction requiring additional quantum
resources is not adopted. Among various error-mitigation schemes, probabilistic
error cancellation (PEC) has been proposed as a general and systematic protocol
that can be applied to numerous hardware platforms and quantum algorithms.
However, PEC has only been tested in two-qubit systems and a superconducting
multi-qubit system by learning a sparse error model. Here, we benchmark PEC
using up to four trapped-ion qubits. For the benchmark, we simulate the
dynamics of interacting fermions with or without spins by applying multiple
Trotter steps. By tomographically reconstructing the error model and
incorporating other mitigation methods such as positive probability and
symmetry constraints, we are able to increase the fidelity of simulation and
faithfully observe the dynamics of the Fermi-Hubbard model, including the
different behavior of charge and spin of fermions. Our demonstrations can be an
essential step for further extending systematic error-mitigation schemes toward
practical quantum advantages.
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