Intelligent SDN Traffic Classification Using Deep Learning: Deep-SDN

Ali Malik, Ruairí de Fréin, Mohammed Al-Zeyadi, Javier Andreu-Perez
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引用次数: 18

Abstract

Accurate traffic classification is fundamentally important for various network activities such as fine-grained network management and resource utilisation. Port-based approaches, deep packet inspection and machine learning are widely used techniques to classify and analyze network traffic flows. However, over the past several years, the growth of Internet traffic has been explosive due to the greatly increased number of Internet users. Therefore, both port-based and deep packet inspection approaches have become inefficient due to the exponential growth of the Internet applications that incurs high computational cost. The emerging paradigm of software-defined networking has reshaped the network architecture by detaching the control plane from the data plane to result in a centralised network controller that maintains a global view over the whole network on its domain. In this paper, we propose a new deep learning model for software-defined networks that can accurately identify a wide range of traffic applications in a short time, called Deep-SDN. The performance of the proposed model was compared against the state-of-the-art and better results were reported in terms of accuracy, precision, recall, and f-measure. It has been found that 96% as an overall accuracy can be achieved with the proposed model. Based on the obtained results, some further directions are suggested towards achieving further advances in this research area.
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基于深度学习的智能SDN流量分类:Deep-SDN
准确的流量分类对于各种网络活动(如细粒度网络管理和资源利用)至关重要。基于端口的方法、深度数据包检测和机器学习是广泛用于分类和分析网络流量的技术。然而,在过去的几年里,由于互联网用户数量的大幅增加,互联网流量呈爆炸式增长。因此,由于Internet应用的指数级增长带来了高昂的计算成本,基于端口和深度包检测方法都变得效率低下。新兴的软件定义网络范例重塑了网络架构,将控制平面与数据平面分离,从而形成一个集中的网络控制器,在其域内维护整个网络的全局视图。在本文中,我们提出了一种新的软件定义网络深度学习模型,该模型可以在短时间内准确识别各种流量应用,称为deep - sdn。将所提出的模型的性能与最先进的模型进行比较,并在准确性、精密度、召回率和f-measure方面报告了更好的结果。研究发现,该模型的总体精度可以达到96%。在此基础上,提出了进一步研究的方向。
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