基于机器学习算法的异常检测检测TCP Flood DDoS攻击

Berkay Özçam, H. Kilinç, A. Zaim
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引用次数: 2

摘要

人们可以通过互联网访问一切,这一事实创造了舒适区,导致近年来互联网使用率的增加。5G、物联网(IoT)、云/边缘/雾计算等概念的兴起表明,这种使用将日益增加。这种增长在给人类带来便利的同时,也增加了恶意之人的胃口。网络攻击日益增多,许多个人或企业用户受到了伤害。在本研究中,它旨在检测分布式拒绝服务(DDoS)攻击,这是我们提到的欺凌中最常见和最有害的攻击。我们专注于检测TCP-Flood攻击,这是最受欢迎的DDoS攻击类型之一,使用各种机器学习算法。使这项工作变得困难和不同的部分是实时检测的目标。
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Detecting TCP Flood DDoS Attack by Anomaly Detection based on Machine Learning Algorithms
The comfort area created by the fact that people can access everything via the internet has led to an increase in the rate of internet use in recent years. The rise of concepts such as 5G, Internet of Things(IoT), Cloud/Edge/Fog Computing shows that this usage will increase day by day. While this increase brings convenience to humanity, it also increases the appetite of malicious people. Cyber attacks are increasing day by day and many individual or corporate users are harmed. In this study, it is aimed to detect Distributed Denial of Service(DDoS) attacks, which are the most common and most harmful of the bullying we mentioned. We focused on detecting TCP-Flood attacks, which is one of the most preferred DDoS attack types, using various machine learning algorithms. The part that made this job difficult and different was the targeting of real-time detection.
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