MUS Model:A Deep Learning-Based Architecture for IoT Intrusion Detection  

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作  者:Yu Yan Yu Yang Shen Fang Minna Gao Yiding Chen 

机构地区:[1]College of Information Engineering,University of Engineering of the Chinese People’s Armed Police Force(PAP),Xi’an,710000,China [2]College of Missile Engineering,Rocket Force Engineering University,Xi’an,710000,China

出  处:《Computers, Materials & Continua》2024年第7期875-896,共22页计算机、材料和连续体(英文)

基  金:support and help from the People’s Armed Police Force of China Engineering University,College of Information Engineering Subject Group,which funded this work under the All-Army Military Theory Research Project,Armed Police Force Military Theory Research Project(WJJY22JL0498).

摘  要:In the face of the effective popularity of the Internet of Things(IoT),but the frequent occurrence of cybersecurity incidents,various cybersecurity protection means have been proposed and applied.Among them,Intrusion Detection System(IDS)has been proven to be stable and efficient.However,traditional intrusion detection methods have shortcomings such as lowdetection accuracy and inability to effectively identifymalicious attacks.To address the above problems,this paper fully considers the superiority of deep learning models in processing highdimensional data,and reasonable data type conversion methods can extract deep features and detect classification using advanced computer vision techniques to improve classification accuracy.TheMarkov TransformField(MTF)method is used to convert 1Dnetwork traffic data into 2D images,and then the converted 2D images are filtered by UnsharpMasking to enhance the image details by sharpening;to further improve the accuracy of data classification and detection,unlike using the existing high-performance baseline image classification models,a soft-voting integrated model,which integrates three deep learning models,MobileNet,VGGNet and ResNet,to finally obtain an effective IoT intrusion detection architecture:the MUS model.Four types of experiments are conducted on the publicly available intrusion detection dataset CICIDS2018 and the IoT network traffic dataset N_BaIoT,and the results demonstrate that the accuracy of attack traffic detection is greatly improved,which is not only applicable to the IoT intrusion detection environment,but also to different types of attacks and different network environments,which confirms the effectiveness of the work done.

关 键 词:Cyberspace security intrusion detection deep learning Markov Transition Fields(MTF) soft voting integration 

分 类 号:TP391.44[自动化与计算机技术—计算机应用技术] TP181[自动化与计算机技术—计算机科学与技术]

 

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