5G系统中网络切片和自愈的深度学习

Mohammed Mobasserul Haque, D. Agrawal, Pranat Dixit, B. Bhattacharyya
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引用次数: 0

摘要

第五代蜂窝网络采用以用户为中心的方法,而不是像3G那样以运营商为中心或像4G那样以服务为中心。在5G网络中,资源的有效配置是可能的,这在前几代网络中是不可行的。网络被平等地分配给所有用户,而它应该根据使用情况进行分配。玩AR/VR游戏的用户应该获得比发送短信的用户更多的带宽。本文的主要目标是开发一种解决方案,可以管理来自身份不明设备的传入网络请求的网络切片。我们比较了各种机器学习算法预测网络切片的准确性。此外,提出了一种混合CNN-LSTM深度学习模型,用于理解用户使用模式和基于时间序列的切片利用率、活跃用户、资源使用和工作负载预测。讨论了自愈网络的概念,以提高体验质量(QoE)和故障检测、异常检测诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning for Network Slicing and Self-Healing in 5G Systems
The 5th generation cellular network works on a user-centric methodology rather than operator-centric as in 3G or service-centric as seen for 4G. Efficient allocation of resources is possible in 5G networks, something which was not feasible in the previous network generations. The network was equally allocated to all users, whereas it should be allocated depending on the usage. A user playing AR/VR games should be given more bandwidth than a user who is just sending text messages. The main objective of this paper is to develop a solution that can manage the network slice for incoming network requests from unidentified devices. We have compared various machine learning algorithms based on their accuracy to predict the network slice. Also, a Hybrid CNN-LSTM Deep Learning model is proposed for understanding user usage patterns and time series based forecasting of slice utilization, active users, resource usage and workload. The Concept of Self-Healing Networks for better Quality of Experience (QoE) and fault detection, anomaly detection diagnosis is discussed.
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