监督学习检测DDoS攻击后的局域网网络优化

Diego Vallejo-Huanga, Santiago Vizcaíno
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引用次数: 0

摘要

分布式拒绝服务(DDoS)攻击是Internet上最危险的网络攻击之一,因此可以影响任何类型网络上的任何服务器,导致连接问题甚至完全失去服务。机器学习可以解决计算安全问题,并经常用于防御网络攻击。本文提出了一个网络拓扑结构,其中应用了几个DDoS攻击,将通过三种机器学习分类算法检测。从网络中循环的数据包收集中生成了一个数据集,其中包含正常流量和恶意数据包的样本,并对其进行了实验测试。在分类任务中,表现最好的监督学习算法是Random Forest,准确率为100%。最后,在检测到网络上的DDoS攻击时,应用Dijkstra优化算法寻找替代路由来缓解网络过饱和。提出了两种场景,一种是分析受攻击网络中的最优路由,另一种是分析不受攻击网络中的最优路由。结果表明,为了避免应用了DDoS攻击检测的路由,对网络进行了重新配置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LAN Network Optimization after a DDoS Attack Detected with Supervised Learning
The Distributed Denial of Service (DDoS) attack is one of the most dangerous cyberattacks on the Internet, so can affect any server on any type of network, causing connectivity problems and even total loss of services. Machine learning can solve computational security problems and is frequently used to defend against cyber attacks. This article proposes the construction of a network topology where several DDoS attacks were applied, which will be detected by three Machine Learning classification algorithms. A dataset was generated from the collection of packets circulating in the network with samples of normal traffic and malicious packets, on which the experimental tests were carried out. In the classification task, the best performing supervised learning algorithm was Random Forest, with an accuracy of 100%. Finally, upon detecting a DDoS attack on the network, Dijkstra’s optimization algorithm is applied to find an alternative route to mitigate network oversaturation. Two scenarios were proposed, the first analyzes the optimal route in an attacked network and the second without attacks. The results show a reconfiguration in the network to avoid routes where DDoS attack detection was applied.
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