Self Optimizing Network Slicing in 5G for Slice Isolation and High Availability

Shwetha Vittal, A. Franklin
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引用次数: 7

Abstract

5G network supports end-to-end logically isolated networks in the form of network slices, catering to the needs of users of various primary network services, namely enhanced Mobile Broadband (eMBB), ultra Reliable Low Latency Communications (uRLLC), and massive Machine Type Communication (mMTC). Mobile Virtual Network Operators (MVNO)s often face challenges in achieving strong slice isolation and High Availability per slice during overload and scaling situations as the 5G network uses a shared environment for slices with multiple domains, especially considering a variety of services and devices. In this paper, we propose a novel Self Optimizing Network Slicing framework (SONS) leveraging Self Organizing Network by building it as an autonomous slice system in 5G network slicing management for efficient slice sharing and isolation. Precisely, we formulate a system model with Probabilistic Graphical Model (PGM) based Markov Network, building it as an Artificial Intelligence based learning framework. We propose Slice Belief Propagation based algorithms and Deep Learning based Long Short Term Memory (LSTM) methods to aid in serving user requests and reconfiguration of self optimizing slice. Our experiments on the proposed SONS framework shows improvement in serving higher number of users with uninterrupted connectivity by 80% in eMBB, 35% in uRLLC, and 52% in mMTC when compared to standard slice deployments, while handling the worst case of peak traffic in the control plane of 5G Core network.
5G自优化网络切片,实现切片隔离和高可用性
5G网络以网络切片的形式支持端到端的逻辑隔离网络,满足用户对增强移动宽带(eMBB)、超可靠低延迟通信(uRLLC)和海量机器类型通信(mMTC)等多种主要网络业务的需求。移动虚拟网络运营商(MVNO)经常面临在过载和扩展情况下实现强片隔离和每个片高可用性的挑战,因为5G网络为具有多个域的片使用共享环境,特别是考虑到各种服务和设备。在本文中,我们提出了一种新的自优化网络切片框架(SONS),利用自组织网络将其构建为5G网络切片管理中的自治切片系统,以实现高效的切片共享和隔离。准确地说,我们利用基于概率图模型(PGM)的马尔可夫网络建立了一个系统模型,将其构建为一个基于人工智能的学习框架。我们提出了基于切片信念传播的算法和基于深度学习的长短期记忆(LSTM)方法来帮助服务用户请求和自优化切片的重新配置。我们在提出的SONS框架上的实验表明,与标准切片部署相比,在为更多用户提供不间断连接服务方面,eMBB提高了80%,uRLLC提高了35%,mMTC提高了52%,同时处理了5G核心网控制平面高峰流量的最坏情况。
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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