基于边缘的物联网网络中未知攻击检测的混合 CNN 方法

R. R. Papalkar, Abrar S Alvi
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引用次数: 0

摘要

导言:在不断发展的物联网(IoT)中,设备安全至关重要。随着物联网小工具渗透到我们的生活中,检测不可预见的攻击对保护它们至关重要。要防范新的危险,可能需要行为分析、机器学习和协作智能。本短文讨论了检测意外物联网攻击的必要性以及这些互联环境的基本安全策略:本研究利用 BoT-IoT 数据集创建一个增强型物联网入侵检测系统。目标是优化 CNN 架构以实现有效的模式识别,解决不平衡数据问题,并使用精度、召回率、F1-分数和 AUC-ROC 等指标评估模型性能。最终目标是提高物联网生态系统的可靠性和安全性,抵御未知攻击。方法:所提出的方法使用 BoT-IoT 数据集创建一个全面的物联网入侵检测系统。这包括调整卷积神经网络(CNN)架构,以提高模式识别能力。过采样和类加权可解决数据不平衡问题。结果:对我们的创新未知攻击检测方法进行的综合评估显示,该方法可能优于现有方法。使用先进的模型和特征选择方法,准确率、精确率、召回率和 f-measure 均达到 98.23%。这一成果是通过使用旨在识别数据集中未知攻击的特征实现的,证明了所提出的方法是有效的。优化的卷积神经网络架构和不平衡数据处理方法达到了 98.23% 的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid CNN Approach for Unknown Attack Detection in Edge-Based IoT Networks
INTRODUCTION: In the constantly growing Internet of Things (IoT), device security is crucial. As IoT gadgets pervade our lives, detecting unforeseen assaults is crucial to protecting them. Behavioral analysis, machine learning, and collaborative intelligence may be needed to protect against new dangers. This short discusses the need of detecting unexpected IoT attacks and essential security strategies for these interconnected environments.OBJECTIVES: This research uses the BoT-IoT dataset to create an enhanced IoT intrusion detection system. The goals are to optimize a CNN architecture for effective pattern recognition, address imbalanced data, and evaluate model performance using precision, recall, F1-score, and AUC-ROC measures. Improving IoT ecosystem reliability and security against unknown assaults is the ultimate goal.METHODS: The proposed methods use the BoT-IoT dataset to create a comprehensive IoT intrusion detection system. This involves tuning a Convolutional Neural Network (CNN) architecture to improve pattern recognition. Oversampling and class weighting address imbalanced data issues. RESULTS: The comprehensive evaluation of our innovative unknown attack detection method shows promise, suggesting it may be better than existing methods. A high accuracy, precision, recall, and f-measure of 98.23% were attained using an advanced model and feature selection methods. This achievement was achieved by using features designed to identify unknown attacks in the dataset, proving the proposed methodology works.CONCLUSION: This research presents an improved IoT Intrusion Detection System using the BoT-IoT dataset. The optimised Convolutional Neural Network architecture and imbalanced data handling approaches achieved 98.23% accuracy.
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