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Analysis of Anomaly Detection Approaches Performed Through Deep Learning Methods in SCADA Systems

机译:SCADA系统深层学习方法进行异常检测方法分析

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Supervisory control and data acquisition (SCADA) systems are used with monitoring and control purposes for the process not to fail in industrial control systems. Today, the increase in the use of standard protocols, hardware, and software in the SCADA systems that can connect to the internet and institutional networks causes these systems to become a target for more cyber-attacks. Intrusion detection systems are used to reduce or minimize cyber-attack threats. The use of deep learning-based intrusion detection systems also increases in parallel with the increase in the amount of data in the SCADA systems. The unsupervised feature learning present in the deep learning approaches enables the learning of important features within the large datasets. The features learned in an unsupervised way by using deep learning techniques are used in order to classify the data as normal or abnormal. Architectures such as convolutional neural network (CNN), Autoencoder (AE), deep belief network (DBN), and long short-term memory network (LSTM) are used to learn the features of SCADA data. These architectures use softmax function, extreme learning machine (ELM), deep belief networks, and multilayer perceptron (MLP) in the classification process. In this study, anomaly-based intrusion detection systems consisting of convolutional neural network, autoencoder, deep belief network, long short-term memory network, or various combinations of these methods on the SCADA networks in the literature were analyzed and the positive and negative aspects of these approaches were explained through their attack detection performances.
机译:监督控制和数据采集(SCADA)系统用于监控和控制目的,用于在工业控制系统中不得失败的过程。今天,在可以连接到互联网和机构网络的SCADA系统中使用标准协议,硬件和软件的增加导致这些系统成为更多网络攻击的目标。入侵检测系统用于减少或最小化网络攻击威胁。利用深度学习的入侵检测系统也与SCADA系统中数据量的增加同时同时增加。在深度学习方法中存在的无监督特征学习使得能够在大型数据集中学习重要的功能。使用使用深度学习技术以无监督方式学习的特征,以便将数据分类为正常或异常。诸如卷积神经网络(CNN),AutoEncoder(AE),深度信仰网络(DBN)和长短期内存网络(LSTM)等体系结构用于学习SCADA数据的功能。这些架构在分类过程中使用SoftMax函数,极端学习机(ELM),深度信仰网络和多层感知(MLP)。在本研究中,分析了由卷积神经网络,自动统计学家,深度信仰网络,长短期记忆网络,长短短期记忆网络的基于异常的入侵检测系统,以及这些方法的各种方法在文献中的SCADA网络上进行了正面和负面方面通过其攻击检测表演来解释这些方法。

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