企业无线网络中的流量分类研究

Sipra Behera, B. Panigrahi, H. Rath, Jyotirmoy Karjee
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引用次数: 0

摘要

今天的企业正在迅速采用智能、自适应和灵活的无线通信技术,以符合工业4.0的要求。与此相关的技术挑战之一是向应用程序提供支持服务质量(QoS)的网络连接。来自应用程序的各种QoS需求迫使底层无线网络变得灵活和自适应。由于应用程序本质上是多种多样的,因此必须有一种机制来近乎实时地了解应用程序类型,以便相应地供应网络。本文提出了一种基于机器学习(ML)的应用流量分类方法。该方法不同于现有的基于端口和基于深度包检测(DPI)的方法,它利用了与应用相关的网络流量统计特征。我们在基于sdn化WiFi设置的实验室中验证了所提出模型的性能。SDNization确保所提出的模型可以在实践中部署。
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On Traffic Classification in Enterprise Wireless Networks
Enterprises today are quickly adopting intelligent, adaptive, and flexible wireless communication technologies in order to become compliant with Industry 4.0. One of the technological challenges related to this is to provide Quality of Services (QoS)-enabled network connectivity to the applications. Diverse QoS demands from the applications intimidate the underlying wireless networks to be agile and adaptive. Since the applications are diverse in nature, there must be a mechanism to learn the application types in near real-time so that the network can be provisioned accordingly. In this paper, we propose a Machine Learning (ML) based method to classify the application traffic. Our method is different from the existing port based and Deep Packet Inspection (DPI) based methods and uses statistical features of the network traffic related to the applications. We validate the performance of the proposed model in a lab based SDNized WiFi set-up. SDNization ensures that the proposed model can be deployed in practice.
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