For the traditional denial-of-service attack detection methods have complex algorithms and high computational overhead, which are difficult to meet the demand of online detection; and the experimental environment is mostly a simulation platform, which is difficult to deploy in real network environment, we propose a real network environment-oriented LDoS attack detection method based on the time-frequency characteristics of traffic data. All the traffic data flowing through the Web server is obtained through the acquisition storage system, and the detection data set is constructed using pre-processing; the simple features of the flow fragments are used as input, and the deep neural network is used to learn the time-frequency domain features of normal traffic features and generate reconstructed sequences, and the LDoS attack is discriminated based on the differences between the reconstructed sequences and the input data in the time-frequency domain. The experimental results show that the proposed method can accurately detect the attack features in the flow fragments in a very short time and achieve high detection accuracy for complex and diverse LDoS attacks; since only the statistical features of the packets are used, there is no need to parse the packet data, which can be adapted to different network environments.
翻译:对于传统的拒绝服务攻击探测方法,传统的拒绝攻击探测方法具有复杂的算法和高计算间接费用,难以满足在线探测的需求;实验环境大多是一个模拟平台,难以在实际网络环境中部署;我们提议根据交通数据的时间频率特点,采用真正的网络环境式LDoS攻击探测方法;通过网络服务器流动的所有交通数据都是通过购置存储系统获得的,探测数据集是使用预处理方法构建的;流动碎片的简单特征被用作输入,深神经网络被用来学习正常交通特征的时间频域特征并生成重建的序列;LDoS攻击基于重建的序列与时间频域输入数据之间的差异而有所区别。实验结果表明,拟议的方法可以在很短的时间内精确地探测流动碎片中的攻击特征,并在复杂和多样的LDoS攻击中实现高度的探测准确性;由于只使用了数据包的统计特征,因此没有必要对可适应不同网络环境的包数据进行分析。