利用机器学习技术检测各种僵尸网络攻击

IF 0.5 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Rituparna Borah, Satyajit Sarmah
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引用次数: 0

摘要

随着与网络连接的物联网(IoT)设备数量的快速增长,网络攻击事件也随之增加,其中包括攻击过量和服务中断事件。压倒性攻击和拒绝服务等网络攻击日益猖獗,对物联网设备构成威胁,导致网络中断和服务中断。由于物联网环境中存在多种多样的异构设备,检测这些攻击具有挑战性,使得传统的基于规则的安全解决方案变得不那么有效。为不同类型的设备开发最佳安全模型具有挑战性。机器学习(ML)提供了另一种方法,它可以利用每种设备特有的经验数据创建有效的安全模型。我们利用机器学习技术来检测物联网(IoT)攻击。我们的重点是针对各种物联网设备的僵尸网络攻击。我们致力于开发基于机器学习的模型,为每个特定类别的设备量身定制,以增强安全性。我们利用 N-BaIoT 数据集,该数据集包含了不同物联网设备类型的注入式僵尸网络攻击(特别是 Gafgyt 和 Mirai),包括门铃、婴儿监视器、安全摄像头和网络摄像头。我们利用各种机器学习算法为每种物联网设备开发了僵尸网络检测模型。模型开发完成后,我们通过分类分析评估了具有强大检测 F1 分数的模型的实用性。这项工作的新颖之处在于精心设计了一个基于机器学习的框架,旨在识别物联网僵尸网络攻击,然后利用该框架在各种物联网设备中成功检测出此类攻击。在 NBaIoT 数据集上最广泛使用的机器学习算法中,决策树、随机森林和 K-Nearest Neighbors (KNN) 表现出了卓越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Various Botnet Attacks Using Machine Learning Techniques
With the rapid growth in the quantity of Internet of Things (IoT) devices linked with the network, there exists a concurrent rise in network attacks, including overwhelming and service disruption incidents. The increasing prevalence of network attacks, such as overwhelming and service denial, poses a threat to IoT devices, leading to network disruptions and service disruption. Detecting these attacks is challenging due to the diverse array of heterogeneous devices in the IoT environment, making traditional rule-based security solutions less effective. Developing optimal security models for diverse device types is challenging. Machine learning (ML) offers an alternative approach, enabling the creation of effective security models by leveraging empirical data specific to each device. We utilize machine learning techniques for the detection of Internet of Things (IoT) attacks. Our focus is on botnet attacks directed at variety of IoT devices. We undertake the development of machine learning-based models tailored to each specific category of device for enhanced security. We utilize the N-BaIoT dataset, which incorporates injected botnet attacks (specifically Gafgyt and Mirai) across diverse IoT device types, including Doorbell, Baby Monitor, Security Camera, and Webcam. We develop models for detecting botnets for each IoT device by utilizing diverse machine learning algorithms. Following model development, we assess the utility of the models with a strong detection F1-score through classification analysis. The novelty of this work lies in crafting a Machine Learning-based framework designed to identify IoT botnet attacks, followed by successful detection of such attacks across diverse IoT devices utilizing this framework. Among the most widely used machine learning algorithms on the NBaIoT dataset, Decision Trees, Random Forests, and K-Nearest Neighbors (KNN) demonstrate superior performance.
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来源期刊
Journal of Electrical Systems
Journal of Electrical Systems ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
1.10
自引率
25.00%
发文量
0
审稿时长
10 weeks
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