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首页> 外文期刊>International journal of communication systems >Identifying LDoS attack traffic based on wavelet energy spectrum and combined neural network
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Identifying LDoS attack traffic based on wavelet energy spectrum and combined neural network

机译:基于小波能谱和组合神经网络的LDoS攻击流量识别

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摘要

As a special type of denial of service (DoS) attacks, the TCP-targeted low-rate denial of service (LDoS) attacks have the characteristics of low average rate and strong concealment, so it is difficult to identify such attack traffic. As multifractal characteristics exist in network traffic, a new identification approach based on wavelet transform and combined neural network is proposed to classify normal network traffic and LDoS attack traffic. Wavelet energy spectrum coefficients extracted from the sampled traffic are used for multifractal analysis of traffic over different time scale. The combined neural network is designed to classify these multiscale spectrum coefficients that show different multifractal characteristics belonging to normal network traffic and LDoS attack traffic. Test results of test-bed experiments indicate that the proposed approach can identify LDoS attack traffic accurately.
机译:以TCP为目标的低速率拒绝服务(LDoS)攻击是拒绝服务(DoS)攻击的一种特殊类型,具有平均速率低和隐蔽性强的特点,因此很难识别此类攻击流量。针对网络流量存在多重分形特征的问题,提出了一种基于小波变换和组合神经网络的识别方法,对正常网络流量和LDoS攻击流量进行分类。从采样流量中提取的小波能量谱系数用于不同时间尺度上流量的多分形分析。组合神经网络旨在对这些多尺度频谱系数进行分类,这些系数显示出属于正常网络流量和LDoS攻击流量的不同多重分形特征。测试平台实验的测试结果表明,该方法可以准确识别LDoS攻击流量。

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