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2020 | OriginalPaper | Buchkapitel

SDN-Enabled IoT Anomaly Detection Using Ensemble Learning

verfasst von : Enkhtur Tsogbaatar, Monowar H. Bhuyan, Yuzo Taenaka, Doudou Fall, Khishigjargal Gonchigsumlaa, Erik Elmroth, Youki Kadobayashi

Erschienen in: Artificial Intelligence Applications and Innovations

Verlag: Springer International Publishing

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Abstract

Internet of Things (IoT) devices are inherently vulnerable due to insecure design, implementation, and configuration. Aggressive behavior change, due to increased attacker’s sophistication, and the heterogeneity of the data in IoT have proven that securing IoT devices is a making challenge. To detect intensive attacks and increase device uptime, we propose a novel ensemble learning model for IoT anomaly detection using software-defined networks (SDN). We use a deep auto-encoder to extract handy features for stacking into an ensemble learning model. The learned model is deployed in the SDN controller to detect anomalies or dynamic attacks in IoT by addressing the class imbalance problem. We validate the model with real-time testbed and benchmark datasets. The initial results show that our model has a better and more reliable performance than the competing models showcased in the relevant related work.

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Metadaten
Titel
SDN-Enabled IoT Anomaly Detection Using Ensemble Learning
verfasst von
Enkhtur Tsogbaatar
Monowar H. Bhuyan
Yuzo Taenaka
Doudou Fall
Khishigjargal Gonchigsumlaa
Erik Elmroth
Youki Kadobayashi
Copyright-Jahr
2020
DOI
https://doi.org/10.1007/978-3-030-49186-4_23

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