基于原型分析的开放5G/B5G网络实时网络流量标识

Zhichao Zou, Shunqing Zhang, Shugong Xu, Shan Cao
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引用次数: 1

摘要

当前,实时流量占用了大量的网络资源,因此对实时流量的识别和分析成为运营商和商业公司迫切需要解决的问题。通过对流量类型的识别,对体验质量(QoE)的监控和优化、用户行为分析以及网络资源的分配,更有利于开放的5G/超5G (5G/B5G)网络。现有的研究通常采用传输层或应用层信息来识别流量,而我们将两者同时考虑,以实现通用标识。此外,我们还分析了基于流的特征,以降低相应的复杂度,实现低复杂度。在分析网络流量识别的基础上,提出了一种实时流量类型识别框架。在主流的VoIP (voice over Internet protocol)呼叫和视频流业务中,与其他传统方案相比,该方法的识别精度提高了30%以上,识别延迟降低了20%以上。
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A Real-Time Network Traffic Identifier for Open 5G/B5G Networks via Prototype Analysis
Nowadays real-time traffic occupies lots of network resources, thus identification and analysis for this network traffic becomes urgent for operator and commercial company. With the identified traffic types, quality of experience (QoE) monitoring and optimization, user behavior analysis and network resource allocation are more beneficial for open 5G/Beyond 5G (5G/B5G) networks. Exiting studies usually adopt transport or application layer information to identify traffic, while we jointly consider them simultaneously to achieve general purpose identifier. Besides, we also analyze the flow-based features to reduce the corresponding complexity for low-complexity implementation. Based on anatomy of network traffic identification, we propose a traffic type identification framework for real-time traffic. In mainstream voice over Internet protocol (VoIP) call and video streaming services, the proposed method can achieve as much as 30% identification accuracy improvement and have more than 20% reduction in terms of the identification delay if compared with other conventional schemes.
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