Title of article
A Semi-Supervised IDS for Cyber-Physical Systems Using a Deep Learning Approach
Author/Authors
Salehi ، Amirhosein Information Systems and Security Lab, Department of Electrical Engineering - Sharif University of Technology , Ahmadi ، Siavash Electronics Research Institute - Sharif University of Technology , Aref ، Mohammad Reza Information Systems and Security Lab, Department of Electrical Engineering - Sharif University of Technology
From page
43
To page
50
Abstract
Industrial control systems are widely used in industrial sectors and critical infrastructures to monitor and control industrial processes. Recently, the security of industrial control systems has attracted a lot of attention, because these systems are now increasingly interacting with the Internet. Classic systems are suffering from many security problems and with the expansionof Internet connectivity, they are now exposed to new types of threats and cyber-attacks. Addressing this, intrusion detection technology is one of the most important security solutions that is used in industrial control systems to identifypotential attacks and malicious activities. In this paper, we propose Stacked Autoencoder-Deep Neural Network (SAE-DNN), as a semi-supervised Intrusion Detection System (IDS) with appropriate performance and applicability on a wide range of Cyber-Physical Systems (CPSs). The proposed approach comprises a stacked autoencoder, a deep learning-based feature extractor, helping us with a low dimension and low noise representation of data. In addition, our system includes a deep neural network (DNN)-based classifier, which is used to detect anomalies with a high detection rate and low false positive rate in a real-time process. The SAE-DNN’s performance is evaluated on the WADI dataset, which is a real testbed for a water distribution system. The results indicate the superior performance of our approach over existing supervised and unsupervised methods while using a few percentages of labeled data.
Keywords
Autoencoder , Cyber , Attack , Industrial Control Systems , Intrusion Detection System , Deep Learning
Journal title
ISeCure - The ISC International Journal of Information Security
Journal title
ISeCure - The ISC International Journal of Information Security
Record number
2759957
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