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Explaining the Attributes of a Deep Learning Based Intrusion Detection System for Industrial Control Networks

机译:解释基于深度学习的工业控制网络入侵检测系统的属性

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摘要

Intrusion detection is only the initial part of the security system for an industrial control system. Because of the criticality of the industrial control system, professionals still make the most important security decisions. Therefore, a simple intrusion alarm has a very limited role in the security system, and intrusion detection models based on deep learning struggle to provide more information because of the lack of explanation. This limits the application of deep learning methods to industrial control network intrusion detection. We analyzed the deep neural network (DNN) model and the interpretable classification model from the perspective of information, and clarified the correlation between the calculation process of the DNN model and the classification process. By comparing the normal samples with the abnormal samples, the abnormalities that occur during the calculation of the DNN model compared to the normal samples could be found. Based on this, a layer-wise relevance propagation method was designed to map the abnormalities in the calculation process to the abnormalities of attributes. At the same time, considering that the data set may already contain some useful information, we designed filtering rules for a kind of data set that can be obtained at a low cost, so that the calculation result is presented in a more accurate manner, which should help professionals lock and address intrusion threats more quickly.
机译:入侵检测只是工业控制系统的安全系统的初始部分。由于工业控制系统的关键性,专业人员仍然是最重要的安全决策。因此,简单的入侵警报在安全系统中具有非常有限的作用,以及基于深度学习斗争的入侵检测模型,以提供更多信息,因为缺乏解释。这限制了深度学习方法在工业控制网络入侵检测中的应用。从信息的角度分析了深度神经网络(DNN)模型和可解释的分类模型,并阐明了DNN模型的计算过程与分类过程之间的相关性。通过将正常样本与异常样本进行比较,可以找到与正常样本相比计算DNN模型期间发生的异常。基于此,旨在将图形相关性传播方法映射计算过程中的异常映射到属性的异常。同时,考虑到数据集可能已经包含一些有用的信息,我们设计了一种可以以低成本获得的数据集的过滤规则,以便以更准确的方式呈现计算结果应该帮助专业人士锁定和解决入侵威胁。

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