Intrusion Detection System Using Deep Learning for DoS Attack Detection

Andre Arta Kurniawan, Jusak, Musayyanah
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Abstract

Various attacks on a computer network or the internet have generated many incidents and cases, this makes security threats in using the internet or computer networks a major focus. Denial of Service attack or often referred to as DoS attack is one of the attack techniques that carry out flooding packets or requests to the target computer until the target computer is down. Prevention is needed in order to minimize existing attacks. IDS can be used as a detector in network traffic, but because IDS has its limitations, an IDS system is built using Deep Learning to detect DoS attacks. By using the data from the wireshark log as a dataset, it is necessary to do data normalization which will then be inputted into CNN VGG-19. The test results that have been carried out with variations in the data inputted into the CNN VGG- 19 produce an average accuracy of 99.32% with an average loss of 4.08%, and by varying the iteration of the training process the resulting accuracy is 99.17% with an average loss - an average of 4.46%. And the ROC Curve value for the True Positive Rate and the False Positive Rate is 1.
基于深度学习的DoS攻击检测系统
针对计算机网络或互联网的各种攻击已经产生了许多事件和案例,这使得使用互联网或计算机网络的安全威胁成为一个主要焦点。拒绝服务攻击或通常被称为DoS攻击是一种攻击技术,它向目标计算机执行大量数据包或请求,直到目标计算机关闭。为了尽量减少现有的攻击,需要进行预防。IDS可以作为网络流量的检测器,但由于IDS有其局限性,因此使用深度学习构建IDS系统来检测DoS攻击。将wireshark日志中的数据作为数据集,需要对数据进行归一化处理,然后将归一化后的数据输入到CNN VGG-19中。在输入CNN VGG- 19的数据变化情况下进行的测试结果产生的平均准确率为99.32%,平均损失为4.08%,通过改变训练过程的迭代,得到的准确率为99.17%,平均损失为4.46%。真阳性率和假阳性率的ROC曲线值为1。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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