预测拒绝服务攻击中的网络流量异常——一种非线性方法

Ding-Wei Lau, Y. Leau, S. Tan, Po-Hung Lai
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引用次数: 0

摘要

在任何给定时间通过网络移动的数据量称为网络流量。它是被封装在数据包中并通过网络发送的数据单元。拒绝服务(DDoS)攻击是破坏典型网络、服务或服务器流量的各种尝试。DDoS攻击试图通过发送大量数据包或流量来破坏合法用户的工作和数据传输。本文研究了各种网络流量预测技术,并选择了非线性时间序列方法多层感知器神经网络(MLPNN)来评估网络流量预测。在NSL-KDD数据集上的结果表明,该方法可将预测精度提高98.87%。它以2.26%的准确率优于顺序最小优化(SMO)等其他模型。
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Predicting Network Traffic Anomalies in Denial-of-Service Attacks - A Nonlinear Approach
The amount of data moving across the network at any given time is referred to as network traffic. It is the data units that are encapsulated in packets and sent over a network. Denial-of-Service (DDoS) attacks are various attempts to disrupt typical network, service, or server traffic. DDoS attacks attempt to disrupt legitimate users' work and data transfers by sending large packets or traffic. Various network traffic prediction techniques are investigated in this study, and a nonlinear time series method, Multilayer Perceptron Neural Network (MLPNN), has been chosen to evaluate network traffic prediction. The results with the NSL-KDD dataset show that the approach can improve prediction accuracy by up to 98.87%. With 2.26%, it outperforms other models such as Sequential Minimal Optimization (SMO).
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