基于物联网的神经网络DDoS攻击检测系统

Lulus Wahyu Prasetya Adi, Satria Mandala, Y. Nugraha
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引用次数: 1

摘要

分布式拒绝服务(DDoS)是一种通过计算机网络发起的攻击,目的是使服务器无法向用户提供服务。DDoS还可以有效地用于停止基于消息队列遥测传输(MQTT)协议的物联网系统上的服务。在系统中,攻击者通常攻击用于管理发行者和客户之间数据流量的代理。已经开展了几个研究项目,利用机器学习检测物联网(IoT)中的DDoS。然而,现有的研究项目对DDoS的预测准确率普遍较低。本研究提出了一种基于神经网络(NN)的机器学习模型来检测DDoS,为上述问题提供了解决方案。此外,本研究还将神经网络预测结果与k -最近邻(KNN)进行了比较。本研究采用的方法如下:1。进行文献研究。2. 开发两种机器学习模型。3.进行分析。使用来自其他研究的数据集和通过物联网环境中的DDOS模拟生成的数据集进行了严格的实验。利用仿真生成的数据集,得到的结果表明,NN的准确率优于KNN,分别为99.99%和99.82%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DDoS Attack Detection System using Neural Network on Internet of Things
Distributed Denial-of-Service (DDoS) is an attack launched over a computer network to make the server unable to provide services to users. DDoS is also effectively used to stop services on Internet of Things systems based on the message Queuing Telemetry Transport (MQTT) protocol. In the system, attackers usually attack brokers who are used to manage data traffic between the issuer and the customer. Several research projects have been undertaken to detect DDoS in the Internet of Things (IoT) using machine learning. However, existing research projects still generally have low detection accuracy in predicting DDoS. This study provides a solution to the above problems by proposing the development of a machine learning model based on Neural Network (NN) to detect DDoS. Furthermore, this study also compared the results of NN predictions with K-Nearest Neighbor (KNN). The methods used in this study are as follows: 1. Conducting literature studies. 2. Develop both machine learning models. 3. Conduct analysis. Rigorous experiments have been carried out using dataset derived from other research and dataset generated through DDOS simulations in IoT environments. By using the dataset generated through simulation, the results obtained showed that the accuracy of NN is better than KNN, which is 99.99% and 99.82%, respectively.
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