基于反向传播神经网络的DoS攻击检测技术

Monika Khandelwal, D. Gupta, Pradeepkumar Bhale
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引用次数: 9

摘要

拒绝服务攻击是一种试图使一个小工具或框架的资源被其提议的客户端占用的攻击。DoS攻击通过发送大量的虚假请求,消耗受害者的框架资产,如数据传输能力、内存、CPU等,使目标用户无法获得服务,从而导致拒绝服务的发生。提出了一种智能检测拒绝服务攻击的方法。利用反向传播神经网络(BPNN)可以很容易地检测到DoS攻击。该技术中使用的参数是CPU使用率、帧长度和流量。在该技术中,通过对服务器资产和网络流量的分析来训练和测试检测方法的能力,结果表明该方法检测DoS攻击的准确率为96.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DoS attack detection technique using back propagation neural network
Denial of Service attack is an endeavor to make a gadget or framework resources occupied to its proposed clients. DoS attack expends casualty's framework assets, for example, data transfer capacity, memory, CPU by sending gigantic number of fake requests so that the intended user cannot obtain services and denial of service happens. This paper presents an intelligent technique for the detection of denial of service attack. This technique can easily detect DoS attack by using back-propagation neural network (BPNN). The parameters used in this technique are CPU usage, frame length and flow rate. In this technique, analysis of server assets and network traffic for training and testing the ability of detection method and the results shows that the proposed method can detect DoS attack with 96.2% accuracy.
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