用于表面代码的卷积神经解码器

Hyunwoo Jung;Inayat Ali;Jeongseok Ha
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引用次数: 0

摘要

要在量子计算机中执行可靠的信息处理,量子纠错(QEC)代码对于检测和纠正量子比特中的错误至关重要。在量子纠错码中,拓扑量子纠错码旨在使相邻的量子比特之间产生相互作用,这是一个很有前途的特性,可以简化实施要求。此外,量子比特的局部性还提供了对局部错误的非同寻常的容错能力。最近,人们提出了各种基于机器学习的解码算法,以改善 QEC 编码的解码性能和延迟。在这项工作中,我们针对表面编码(即拓扑编码的一种类型)提出了一种新的解码算法,它使用了针对表面编码的拓扑晶格结构而定制的卷积神经网络(CNN)。具体而言,所提议的算法利用了综合征模式,将其表示为矩形网格的一部分,作为 CNN 的输入。矩形网格的剩余部分由精心挑选的非相干值填充,以获得更好的逻辑错误率性能。此外,我们还介绍了如何根据给定表面代码的网格结构优化 CNN 中的超参数。这降低了整体解码复杂度,使基于 CNN 的解码器在计算上更适合实现。数值结果表明,与各种量子错误模型上的现有算法相比,所提出的解码算法在逻辑错误率方面有效地提高了解码性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convolutional Neural Decoder for Surface Codes
To perform reliable information processing in quantum computers, quantum error correction (QEC) codes are essential for the detection and correction of errors in the qubits. Among QEC codes, topological QEC codes are designed to interact between the neighboring qubits, which is a promising property for easing the implementation requirements. In addition, the locality to the qubits provides unusual tolerance to local errors. Recently, various decoding algorithms based on machine learning have been proposed to improve the decoding performance and latency of QEC codes. In this work, we propose a new decoding algorithm for surface codes, i.e., a type of topological codes, by using convolutional neural networks (CNNs) tailored for the topological lattice structure of the surface codes. In particular, the proposed algorithm takes advantage of the syndrome pattern, which is represented as a part of a rectangular lattice given to the CNN as its input. The remaining part of the rectangular lattice is filled with a carefully selected incoherent value for better logical error rate performance. In addition, we introduce how to optimize the hyperparameters in the CNN, according to the lattice structure of a given surface code. This reduces the overall decoding complexity and makes the CNN-based decoder computationally more suitable for implementation. The numerical results show that the proposed decoding algorithm effectively improves the decoding performance in terms of logical error rate as compared to the existing algorithms on various quantum error models.
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