论文标题

5G核心网络的模型漂移检测和适应框架

A Model Drift Detection and Adaptation Framework for 5G Core Networks

论文作者

Manias, Dimitrios Michael, Chouman, Ali, Shami, Abdallah

论文摘要

第五代(5G)和5G网络(5G+)的出现彻底改变了网络运营商考虑其网络的管理和编排的方式。随着通过NWDAF等核心网络功能(例如NWDAF)越来越重视智能和自动化,服务提供商的任务是将机器学习模型和人工智能系统集成到现有的网络操作实践中。由于下一代网络的动态性质及其支持的用例和应用程序,模型漂移是一个严重的问题,这可能会恶化整个网络中部署的智能模型的性能。本文介绍的工作介绍了5G核心网络的模型漂移检测和适应模块。使用5G核心网络的功能原型,模拟用户行为的漂移,并部署和测试了提出的框架。这项工作的结果证明了漂移检测模块准确表征漂移概念的能力,以及漂移适应模块开始必要的补救工作以恢复系统性能的能力。

The advent of Fifth Generation (5G) and beyond 5G networks (5G+) has revolutionized the way network operators consider the management and orchestration of their networks. With an increased focus on intelligence and automation through core network functions such as the NWDAF, service providers are tasked with integrating machine learning models and artificial intelligence systems into their existing network operation practices. Due to the dynamic nature of next-generation networks and their supported use cases and applications, model drift is a serious concern, which can deteriorate the performance of intelligent models deployed throughout the network. The work presented in this paper introduces a model drift detection and adaptation module for 5G core networks. Using a functional prototype of a 5G core network, a drift in user behaviour is emulated, and the proposed framework is deployed and tested. The results of this work demonstrate the ability of the drift detection module to accurately characterize a drifted concept as well as the ability of the drift adaptation module to begin the necessary remediation efforts to restore system performance.

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