The goal of Next-Generation Networks is to improve upon the current networking paradigm, especially in providing higher data rates, near-real-time latencies, and near-perfect quality of service. However, existing radio access network (RAN) architectures lack sufficient flexibility and intelligence to meet those demands. Open RAN (O-RAN) is a promising paradigm for building a virtualized and intelligent RAN architecture. This paper presents a Machine Learning (ML)-based Traffic Steering (TS) scheme to predict network congestion and then proactively steer O-RAN traffic to avoid it and reduce the expected queuing delay. To achieve this, we propose an optimized setup focusing on safeguarding both latency and reliability to serve URLLC applications. The proposed solution consists of a two-tiered ML strategy based on Naive Bayes Classifier and deep Q-learning. Our solution is evaluated against traditional reactive TS approaches that are offered as xApps in O-RAN and shows an average of 15.81 percent decrease in queuing delay across all deployed SFCs.
翻译:下一代网络的目标是改进目前的网络模式,特别是提供更高的数据率、近实时延迟和近乎完美的服务质量,然而,现有的无线电接入网络(RAN)结构缺乏足够的灵活性和智慧来满足这些需求。开放RAN(O-RAN)是建设虚拟和智能RAN结构的一个很有希望的模式。本文件介绍了基于机械学习的交通指导(MML)计划,以预测网络堵塞,然后积极主动地引导O-RAN的交通,以避免网络堵塞并减少预期的排队延误。为此,我们提议建立一个优化的架构,重点保护为URLLC应用服务的时间和可靠性。拟议解决方案包括基于Nive Bayes分类器和深入的Q-学习的两级ML战略。我们的解决方案是对照作为XApp在O-RAN提供的传统反应性TS方法进行评估的,并显示在所有部署的SFC中排队平均减少15.81%。</s>