Flow-based intrusion detection on software-defined networks: a multivariate time series anomaly detection approach


연구 분야: Networking



학회: Neural Computing and Applications


초록

In this study, we present and implement the SAnDet (SDN anomaly detector) architecture, an anomaly-based intrusion detection system designed to take advantage of the capabilities offered by software-defined networking (SDN) architecture, as a controller application. The SAnDet system is composed of three modules: statistics collection, anomaly detection, and anomaly prevention. In particular, we utilize replicator neural networks (RNN), which is a specialized variant of the autoencoder, and the LSTM-based encoder–decoder (EncDecAD) method, which is a special type of long short-term memory (LSTM) network that has demonstrated a strong performance on data series particularly, to identify unknown attacks using flow features collected from OpenFlow switches. In our experiments, we utilize flow-based features extracted from network traffic data containing various types of attacks as input to our models in the form of time series. We evaluate the performance of our methods using the accuracy and area under the receiver operating characteristic curve (AUC) metrics. Our experimental results demonstrate that EncDecAD outperforms RNN and that our approach offers several benefits over previously conducted research.


Author Profile
Sultan Zavrak

Department of Computer Engineering Duzce University 81620 Duzce Turkey

Turkey
Author Profile
Murat Iskefiyeli

Department of Computer Engineering Sakarya University Sakarya Turkey

Turkey

📄 논문 정보

발행 연도 2023년
인용수 22
출판 국가 Turkey
사이트 Springer
좋아요 수 0

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