量子网络中纠缠图态的优化分布

Xiaojie Fan;Caitao Zhan;Himanshu Gupta;C. R. Ramakrishnan
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引用次数: 0

摘要

建造大规模量子计算机对于展示量子优势至关重要,这是一个关键挑战。量子网络可以通过连接较小的量子计算机来构建大型、强大、更强大的量子计算平台,从而帮助解决这一挑战。此外,与经典系统不同,量子网络可以实现完全安全的长距离通信。因此,量子网络是未来量子信息技术成功的核心。在量子网络中,分布在网络上的多部纠缠态有助于实现和支持许多用于通信、传感和计算的量子网络应用。我们的工作重点是开发最优技术来有效地产生和分配多部纠缠态。先前关于生成一般多部纠缠态的工作主要集中在最小化最大纠缠对的数量上,而忽略了网络节点和链路的异质性以及底层过程的随机性。在这项工作中,我们开发了一个基于超图的线性规划框架,该框架在考虑底层过程的随机性的同时,在网络资源、退相干和保真约束下,为图状态表示的一般多部纠缠提供了最优(在某些假设下)生成方案。我们通过开发路径和树状图状态的特殊情况的生成方案来说明我们的技术,并讨论了更一般类型的图状态的优化生成方案。通过在量子网络模拟器上进行广泛的模拟,我们证明了我们开发的技术的有效性,并表明它们比先前已知的方案高出数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimized Distribution of Entanglement Graph States in Quantum Networks
Building large-scale quantum computers, essential to demonstrating quantum advantage, is a key challenge. Quantum networks can help address this challenge by enabling the construction of large, robust, and more capable quantum computing platforms by connecting smaller quantum computers. Moreover, unlike classical systems, quantum networks can enable fully secured long-distance communication. Thus, quantum networks lie at the heart of the success of future quantum information technologies. In quantum networks, multipartite entangled states distributed over the network help implement and support many quantum network applications for communications, sensing, and computing. Our work focuses on developing optimal techniques to generate and distribute multipartite entanglement states efficiently. Prior works on generating general multipartite entanglement states have focused on the objective of minimizing the number of maximally entangled pairs while ignoring the heterogeneity of the network nodes and links as well as the stochastic nature of underlying processes. In this work, we develop a hypergraph-based linear programming framework that delivers optimal (under certain assumptions) generation schemes for general multipartite entanglement represented by graph states, under the network resources, decoherence, and fidelity constraints, while considering the stochasticity of the underlying processes. We illustrate our technique by developing generation schemes for the special cases of path and tree graph states and discuss optimized generation schemes for more general classes of graph states. Using extensive simulations over a quantum network simulator, we demonstrate the effectiveness of our developed techniques and show that they outperform prior known schemes by up to orders of magnitude.
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