改进非稳态噪声下的概率误差消除

Samudra Dasgupta;Travis S. Humble
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引用次数: 0

摘要

在本文中,我们研究了非平稳噪声存在时概率误差消除(PEC)结果的稳定性,非平稳噪声是实现精确可观测估计的障碍。利用贝叶斯方法,我们设计了一种增强 PEC 稳定性和准确性的策略。我们在 ibm_kolkata 设备上使用伯恩斯坦-瓦齐拉尼算法的五量子比特实现进行了实验,发现与非自适应 PEC 相比,准确性提高了 42%,稳定性提高了 60%。这些结果凸显了自适应估计过程对有效解决非稳态噪声的重要性,这对提高 PEC 的实用性至关重要。
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Improving Probabilistic Error Cancellation in the Presence of Nonstationary Noise
In this article, we investigate the stability of probabilistic error cancellation (PEC) outcomes in the presence of nonstationary noise, which is an obstacle to achieving accurate observable estimates. Leveraging Bayesian methods, we design a strategy to enhance PEC stability and accuracy. Our experiments using a five-qubit implementation of the Bernstein–Vazirani algorithm and conducted on the ibm_kolkata device reveal a 42% improvement in accuracy and a 60% enhancement in stability compared to nonadaptive PEC. These results underscore the importance of adaptive estimation processes to effectively address nonstationary noise, vital for advancing PEC utility.
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