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A novel traffic identification approach based on multifractal analysis and combined neural network

机译:基于多重分形分析和组合神经网络的交通识别新方法

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摘要

An accurate identification of Internet traffic of different applications is highly relevant for a broad range of network management and measurement tasks, including traffic engineering, service differentiation, performance monitoring, and security. Traditional traffic identification approaches have become increasingly inaccurate due to restrictions of port numbers, protocol signatures, traffic encryption, and etc. In this paper, a new traffic identification approach based on multifractal analysis of wavelet energy spectrum and classification of combined neural network models is proposed. The proposed approach is able to achieve the identification of different Internet application traffic by performing classification over the wavelet energy spectrum coefficients that were inferred from the original traffic. Without using any payload information, the proposed approach has more advantages over traditional methods. The experiment results illustrate that the proposed approach has satisfactory identification results.
机译:准确识别不同应用程序的Internet流量与广泛的网络管理和测量任务(包括流量工程,服务区分,性能监控和安全性)高度相关。由于端口号,协议签名,流量加密等因素的限制,传统的流量识别方法变得越来越不准确。本文提出了一种基于小波能谱多分形分析和组合神经网络模型分类的流量识别新方法。 。所提出的方法能够通过对从原始流量中推断出的小波能谱系数进行分类,从而实现对不同Internet应用流量的识别。在不使用任何有效载荷信息的情况下,与传统方法相比,该方法具有更多优势。实验结果表明,该方法具有令人满意的识别效果。

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