Traffic Prediction with Network Slicing in 5G: A Survey

Dhanashree A. Kulkarni, Mithra Venkatesan, A. Kulkarni
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引用次数: 1

Abstract

In modern communication systems there are heterogeneous service request from the applications like mobile devices, virtual reality, automatic driving cars, IoT devices. These devices have different QoS requirements in which network slicing enabler plays a vital role in 5G. Network Slicing unfolds a new paradigm for the providers as well as for the users. In this context the resource management has gained importance in the field of networking. Since a huge data is been generated by these devices, it is very difficult to deliver high performance with resource utilization. In such situation these traditional monitoring techniques will not be able to handle such a huge data. Towards this, the researchers have started applying with Deep learning techniques with the network monitoring system. This paper focuses on the work done towards one of the key components of network analysis (i.e.) traffic prediction. This study has reviewed the articles, which have proposed the deep learning techniques for traffic prediction towards resource management in network slicing.*CRITICAL: Do Not Use Symbols, Special Characters, Footnotes, or Math in Paper Title or Abstract. (Abstract)
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基于5G网络切片的流量预测研究
在现代通信系统中,存在来自移动设备、虚拟现实、自动驾驶汽车、物联网设备等应用的异构服务请求。这些设备具有不同的QoS要求,其中网络切片使能器在5G中起着至关重要的作用。网络切片为提供商和用户展示了一个新的范例。在这种背景下,资源管理在网络领域变得越来越重要。由于这些设备产生了大量的数据,因此很难在资源利用率方面提供高性能。在这种情况下,这些传统的监测技术将无法处理如此庞大的数据。为此,研究人员开始将深度学习技术应用于网络监控系统。本文重点介绍了网络分析的一个关键组成部分(即流量预测)所做的工作。本研究回顾了网络切片中基于资源管理的流量预测的深度学习技术。*关键:不要在论文标题或摘要中使用符号,特殊字符,脚注或数学。(抽象)
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