From classical to quantum machine learning: survey on routing optimization in 6G software defined networking

Oumayma Bouchmal, B. Cimoli, Ripalta Stabile, J. V. Vegas Olmos, Idelfonso Tafur Monroy
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Abstract

The sixth generation (6G) of mobile networks will adopt on-demand self-reconfiguration to fulfill simultaneously stringent key performance indicators and overall optimization of usage of network resources. Such dynamic and flexible network management is made possible by Software Defined Networking (SDN) with a global view of the network, centralized control, and adaptable forwarding rules. Because of the complexity of 6G networks, Artificial Intelligence and its integration with SDN and Quantum Computing are considered prospective solutions to hard problems such as optimized routing in highly dynamic and complex networks. The main contribution of this survey is to present an in-depth study and analysis of recent research on the application of Reinforcement Learning (RL), Deep Reinforcement Learning (DRL), and Quantum Machine Learning (QML) techniques to address SDN routing challenges in 6G networks. Furthermore, the paper identifies and discusses open research questions in this domain. In summary, we conclude that there is a significant shift toward employing RL/DRL-based routing strategies in SDN networks, particularly over the past 3 years. Moreover, there is a huge interest in integrating QML techniques to tackle the complexity of routing in 6G networks. However, considerable work remains to be done in both approaches in order to accomplish thorough comparisons and synergies among various approaches and conduct meaningful evaluations using open datasets and different topologies.
从经典机器学习到量子机器学习:6G 软件定义网络中的路由优化调查
第六代(6G)移动网络将采用按需自我重新配置的方式,以同时满足严格的关键性能指标和网络资源使用的整体优化。软件定义网络(SDN)具有网络全局视图、集中控制和可调整的转发规则,使这种动态灵活的网络管理成为可能。由于 6G 网络的复杂性,人工智能及其与 SDN 和量子计算的整合被认为是解决高动态和复杂网络中优化路由等难题的前瞻性方案。本调查报告的主要贡献在于深入研究和分析了近期有关应用强化学习(RL)、深度强化学习(DRL)和量子机器学习(QML)技术解决 6G 网络中 SDN 路由挑战的研究。此外,本文还确定并讨论了该领域的开放研究问题。总之,我们得出结论:在 SDN 网络中采用基于 RL/DRL 的路由策略是一个重大转变,尤其是在过去 3 年中。此外,人们对整合 QML 技术以解决 6G 网络中路由问题的复杂性兴趣浓厚。不过,这两种方法仍有大量工作要做,以便完成各种方法之间的全面比较和协同作用,并利用开放数据集和不同拓扑结构进行有意义的评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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