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Scalable Low-overhead Superconducting Non-local Coupler with Exponentially Enhanced Connectivity

Haonan Xiong, Jiahui Wang, Juan Song, Jize Yang, Zenghui Bao,Yan Li,Zhen-Yu Mi,Hongyi Zhang,Hai-Feng Yu,Yipu Song,Luming Duan

arXiv · (2025)

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Abstract
Quantum error correction codes with non-local connections such as quantum low-density parity-check (qLDPC) incur lower overhead and outperform surface codes on large-scale devices. These codes are not applicable on current superconducting devices with nearest-neighbor connections. To rectify the deficiency in connectivity of superconducting circuit system, we experimentally demonstrate a convenient on-chip coupler of centimeters long and propose an extra coupler layer to map the qubit array to a binary-tree connecting graph. This mapping layout reduces the average qubit entangling distance from O(N) to O(logN), demonstrating an exponentially enhanced connectivity with eliminated crosstalk. The entangling gate with the coupler is performed between two fluxonium qubits, reaching a fidelity of 99.37 rate remains as low as 144 Hz without active cancellation or circuit parameter targeting. With the scalable binary tree structure and high-fidelity non-local entanglement, novel quantum algorithms can be implemented on the superconducting qubit system, positioning it as a strong competitor to other physics systems regarding circuit connectivity.
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要点】:本文提出了一种具有指数增强连接性的可扩展、低开销超导非局部耦合器,能够显著提升超导量子比特系统的连接性能,适用于量子错误校正码的实现。

方法】:作者通过实验展示了一种厘米级的芯片上耦合器,并提出了额外的耦合器层,将量子比特阵列映射到二叉树连接图中,从而显著减少量子比特纠缠的平均距离。

实验】:实验在两个fluxonium量子比特之间使用耦合器执行纠缠门,达到99.37%的保真度,并且纠缠速率保持在144 Hz,未使用主动消除或电路参数目标设定。所使用的数据集未在文本中明确提及。