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  4. Architecture of an intelligent Intrusion Detection System for Smart Home
 
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2020
  • Konferenzbeitrag

Titel

Architecture of an intelligent Intrusion Detection System for Smart Home

Abstract
Increasing cyber-attacks on Internet of Things (IoT) environments are a growing problem of digitized households worldwide. The purpose of this study is to investigate how an intelligent Intrusion Detection System (iIDS) can provide more security in IoT networks with a novel architecture, combining multiple classical and machine learning approaches. By combining classical security analysis methods and modern concepts of artificial intelligence, we increase the quality of attack detection and can therefore conduct dedicated attack suppression. The architectural image of the iIDS consists of different layers, which in parts achieve self-sufficient results. The results of the different modules are calculated by means of statement variables and evaluation techniques adapted for the individual module elements and subsequently combined by limit value considerations. The architecture image combines approaches for the analysis and processing of IoT network traffic and evaluates it to an aggregated score. From this result it can be determined whether the analyzed data indicates device misuse or attempted break-ins into the network. This study answers the questions whether a connection between classical and modern concepts for monitoring and analyzing IoT network traffic can be implemented meaningfully within a reliable architecture of an iIDS.
Author(s)
Graf, J.
Neubauer, K.
Fischer, S.
Hackenberg, R.
Hauptwerk
IEEE International Conference on Pervasive Computing and Communications Workshops, PerCom Workshops 2020
Konferenz
International Conference on Pervasive Computing and Communications (PerCom) 2020
Thumbnail Image
DOI
10.1109/PerComWorkshops48775.2020.9156168
Language
Englisch
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