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Characterizing charge-parity detection based on an offset-charge-tunable transmon qubit via randomized benchmarking
arXiv
Authors: Yao-Yao Jiang, Tang Su, Yuxiang Liu, Yi-Ming Guo, Yidong Song, Yu-Long Li, Yanjie Zeng, Guang-Ming Xue, Wei-Jie Sun, Mei-Ling Li, Yi-Rong Jin, Junhua Wang, Xuegang Li, Hai-Feng Yu
Year
2026
Paper ID
45147
Status
Preprint
Abstract Read
~2 min
Abstract Words
152
Citations
N/A
Abstract
Superconducting qubits are compelling platforms for charge-parity detection and, due to their theoretical sensitivity on the meV energy scale, hold promise for rare event searches. In this work, we realize high-fidelity mapping of charge-parity states onto qubit states using an offset-charge-tunable transmon qubit and efficiently characterize the fidelity of the charge-parity detection via randomized benchmarking. Specifically, a gate control line is applied to control offset charge, allowing us to achieve the single-qubit gate fidelity up to 99.96%. We combine a net-zero-based pulse on the gate line with a spin-echo-based sequence to realize charge-parity mapping, achieving a fidelity of 99.37%. Then, we demonstrate continuous monitoring of the charge-parity state with over 93.4% fidelity at a 4-μs sampling interval. Finally, an error analysis of charge-parity detection is performed, and it is found that qubit readout is currently the largest source of error. We believe this work lays the foundation for future exploration of ultra-low energy particles.
Why This Paper Matters
- This paper contributes to the Quantum Foundations research area in the Quantum Articles archive.
- It adds a 2026 reference point for readers tracking recent quantum research.
- Superconducting qubits are compelling platforms for charge-parity detection and, due to their theoretical sensitivity on the meV energy scale, hold promise for rare event searches.
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