物联网网络中使用智能机器学习算法的分布式DoS检测

S. Binny, Shamili Srimani Pendyala, S. J. Pimo, Sagaya Aurelia, P. Reddy, D. Satyanarayana
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引用次数: 1

摘要

分布式拒绝服务(DDoS)攻击对基于web的服务和应用程序的威胁是严重的。这些攻击只需几分钟就能使这些服务瘫痪,使任何人都无法使用它们。随着不安全的物联网(IoT)设备在互联网上的广泛采用,这个问题进一步持续存在。此外,许多目前使用的基于规则的检测系统是攻击者的弱点。本文对ML算法检测和分类DDoS攻击进行了对比分析。这些分类器比较了Nave Bayes与J48和Random Forest与ZeroR ML以及其他机器学习算法。结果表明,采用主成分分析方法可以找到最优的特征数量。ML是在WEKA工具的帮助下实现的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed DoS Detection in IoT Networks Using Intelligent Machine Learning Algorithms
The threat of a Distributed Denial of Service (DDoS) attack on web-based services and applications is grave. It only takes a few minutes for one of these attacks to cripple these services, making them unavailable to anyone. The problem has further persisted with the widespread adoption of insecure Internet of Things (IoT) devices across the Internet. In addition, many currently used rule-based detection systems are weak points for attackers. We conducted a comparative analysis of ML algorithms to detect and classify DDoS attacks in this paper. These classifiers compare Nave Bayes with J48 and Random Forest with ZeroR ML as well as other machine learning algorithms. It was found that using the PCA method, the optimal number of features could be found. ML has been implemented with the help of the WEKA tool.
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