监督无线通信:5G核心网实时模型推理的分析框架

Rekha Reddy, Yorman Munoz, C. Lipps, H. Schotten
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引用次数: 0

摘要

提供智能管理的基础正在向超越5G (B5G)和第六代(6G)网络发展。对数据流量日益增长的需求,以及大量网络片的部署,产生了提高资源利用和分配性能的基本需求。异构化和多样化的趋势对实时网络优化的部署策略提出了挑战。本研究通过分析核心网(CN)架构中每个网络功能(NF)的流量,在容器化基础设施中进行模拟,提出了第五代(5G)无线通信的实时预测框架。基于不同范围的超参数进行回归训练,并通过模型跟踪和注册表支持选择最优模型进入推理阶段。在实时预测阶段,如果比较产生较大的差异,则实现消息传递系统以通知特定的权威机构进行进一步调查。最后,实验结果表明了该方法的可行性,具有较高的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervised Wireless Communication: An Analytic Framework for Real-Time Model Inference in the 5G Core Network
The base for providing intelligent management is evolving towards Beyond 5G (B5G) and Sixth Generation (6G) networks. The increasing demand for data traffic, and the deployment of a significant number of network slices, create an essential need to improve the performance of resource utilization and allocation. Deployment strategies for real-time network optimization become challenging with the trends in heterogeneity and diversity. This work proposes the Fifth Generation (5G) wireless communication’s real-time prediction framework by analyzing the traffic of each Network Function (NF) in the Core Network (CN) architecture, simulated in a containerized infrastructure. Based on a varying range of hyperparameters, regressive training is conducted, and an optimal model is chosen for the inference phase through model tracking and registry support. During the real-time prediction stage, if the comparison results in a larger difference, a messaging system is implemented to notify a specific authority for further investigation. Finally, the experimental result shows the feasibility of this proposal to forecast with high accuracy.
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