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A Semi-Supervised Approach for Detection of SCADA Attacks in Gas Pipeline Control Systems

机译:一种在燃气管道控制系统中检测SCADA攻击的半监督方法

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摘要

The imperative role played by Supervisory Control And Data Acquisition (SCADA) systems in providing a centralized control for modern infrastructure have made them into one of the most desired targets for malicious attackers owing to its rapid evolution as well as widespread adoption of these systems. To counter these attacks, it is necessary that more robust approaches be adopted. The advent of Machine Learning has shown great potential for its usage along with existing Intrusion Detection Systems (IDS). This paper presents a novel approach to detect malicious behaviour in SCADA data used to control gas pipeline system. As most of the data available in this industry are unsupervised, this paper uses an approach that makes use of a Semi-Supervised Deep Learning architecture- Autoencoder, that is believed to be most suited for this type of tasks. The effectiveness of this deep learning network is due to the fact that it reconstructs the input as the output and in the training process learns only the most important features of normal observations that are representative of the input data; thus malicious data is easily detected due to a high reconstruction error. The proposed algorithm is validated on gas pipeline control system dataset and found to give excellent results in detection.
机译:监督控制和数据采集(SCADA)系统在为现代基础架构提供集中控制中起着至关重要的作用,由于其快速发展和广泛采用,这些使之成为恶意攻击者最期望的目标之一。为了应对这些攻击,有必要采用更可靠的方法。机器学习的出现显示了其与现有入侵检测系统(IDS)一起使用的巨大潜力。本文提出了一种新的方法来检测用于控制天然气管道系统的SCADA数据中的恶意行为。由于该行业中可用的大多数数据都是不受监督的,因此本文采用的方法是利用半监督的深度学习体系结构自动编码器,该方法被认为最适合此类任务。这种深度学习网络的有效性归因于以下事实:它将输入重构为输出,并且在训练过程中仅学习代表输入数据的正常观测的最重要特征;因此,由于高重构错误,很容易检测到恶意数据。将该算法在天然气管道控制系统数据集上进行了验证,发现具有良好的检测效果。

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