With the advantages of high-speed parallel processing, quantum computers can efficiently solve large-scale complex optimization problems in future networks. However, due to the uncertain qubit fidelity and quantum channel noise, distributed quantum computing which relies on quantum networks connected through entanglement faces a lot of challenges for exchanging information across quantum computers. In this paper, we propose an adaptive distributed quantum computing approach to manage quantum computers and quantum channels for solving optimization tasks in future networks. Firstly, we describe the fundamentals of quantum computing and its distributed concept in quantum networks. Secondly, to address the uncertainty of future demands of collaborative optimization tasks and instability over quantum networks, we propose a quantum resource allocation scheme based on stochastic programming for minimizing quantum resource consumption. Finally, based on the proposed approach, we discuss the potential applications for collaborative optimization in future networks, such as smart grid management, IoT cooperation, and UAV trajectory planning. Promising research directions that can lead to the design and implementation of future distributed quantum computing frameworks are also highlighted.
翻译:由于高速平行处理的优势,量子计算机可以有效解决未来网络中大规模复杂的优化问题,然而,由于不确定的量子忠实和量子频道噪音,依赖通过缠绕连接的量子网络的分布式量子计算面临着在量子计算机之间交流信息的诸多挑战。在本文件中,我们提议采用适应性分布式量子计算方法来管理量子计算机和量子渠道,以解决未来网络中的优化任务。首先,我们描述了量子计算的基本原理及其在量子网络中的分布概念。第二,为了解决未来对协作优化任务的需求的不确定性和量子网络的不稳定性,我们提议了以随机程序为基础的量子资源分配计划,以尽量减少量子资源的消耗。最后,我们根据拟议的方法,讨论了未来网络中合作优化的潜在应用,如智能电网管理、IOT合作和UAVV轨迹规划。还重点介绍了能够导致设计和实施未来分布量子计算框架的预测研究方向。