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N-BaIoT—Network-Based Detection of IoT Botnet Attacks Using Deep Autoencoders

Yair MeidanBen-Gurion University of the NegevMichael BohadanaBen-Gurion University of the NegevYael MathovBen-Gurion University of the NegevYisroel MirskyBen-Gurion University of the NegevAsaf ShabtaiBen-Gurion University of the NegevDominik BreitenbacherSingapore University of Technology and DesignYuval EloviciSingapore University of Technology and Design
2018en
ABI

Аннотация

The proliferation of IoT devices that can be more easily compromised than desktop computers has led to an increase in IoT-based botnet attacks. To mitigate this threat, there is a need for new methods that detect attacks launched from compromised IoT devices and that differentiate between hours- and milliseconds-long IoT-based attacks. In this article, we propose a novel network-based anomaly detection method for the IoT called N-BaIoT that extracts behavior snapshots of the network and uses deep autoencoders to detect anomalous network traffic from compromised IoT devices. To evaluate our method, we infected nine commercial IoT devices in our lab with two widely known IoT-based botnets, Mirai and BASHLITE. The evaluation results demonstrated our proposed methods ability to accurately and instantly detect the attacks as they were being launched from the compromised IoT devices that were part of a botnet.

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Цитирований: 2Использованных источников: 0