Network Intrusion Detection CNN Model for Realistic Network Attacks Based on Network Traffic Classification

Alla Abd El-Rady, Heba Osama, Rowayda Sadik, Hesham El Badwy
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Abstract

Network intrusion detection has an important role in providing security to networks and computer systems. It applies different artificial intelligence technologies in order to improve performance against various cyber-attacks. Applying Deep Learning (DL) techniques has a considerable impact compared to using traditional Machine Learning (ML) methods. Recently, Convolutional Neural Network (CNN) has been widely used by researchers to enhance Intrusion Detection Systems (IDSs). This paper aims to build a customized CNN model to improve the accuracy of IDSs. The study involves comparing the results obtained from the proposed CNN model with those obtained from Random Forest which is a well-known machine learning technique utilized frequently in IDSs. The performance of both models was evaluated using standard measurements such as accuracy and F-measure. Two datasets were used, UNSW-NB15 and CSE-CICIDS2018, to demonstrate the efficacy of our proposed model. The proposed CNN model achieved better results than the Random Forest algorithm. A comparison with existing recent IDSs was carried out. The result of this study provides insights and proves the effectiveness of using CNNs for IDSs and helps in identifying the best approach for building efficient and accurate CNN based IDSs with the accuracy of 99.18% using CSE-CICIDS2018 dataset and 99.70% using UNSW-NB15 dataset.
基于网络流量分类的网络入侵检测CNN模型
网络入侵检测对于保证网络和计算机系统的安全具有重要的作用。它应用了不同的人工智能技术,以提高应对各种网络攻击的性能。与使用传统的机器学习(ML)方法相比,应用深度学习(DL)技术具有相当大的影响。近年来,卷积神经网络(CNN)被广泛应用于入侵检测系统。本文旨在建立一个定制的CNN模型,以提高ids的精度。该研究涉及将所提出的CNN模型的结果与Random Forest的结果进行比较,Random Forest是ids中常用的一种著名的机器学习技术。这两种模型的性能都是用精度和F-measure等标准测量来评估的。使用UNSW-NB15和CSE-CICIDS2018两个数据集来验证我们提出的模型的有效性。本文提出的CNN模型比Random Forest算法取得了更好的效果。与现有的最近的ids进行了比较。本研究的结果提供了见解并证明了将CNN用于ids的有效性,并有助于确定构建高效准确的基于CNN的ids的最佳方法,使用CSE-CICIDS2018数据集的准确率为99.18%,使用unws - nb15数据集的准确率为99.70%。
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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