Using GRU neural network for cyber-attack detection in automated process control systems

D. Lavrova, D. Zegzhda, Anastasiia Yarmak
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引用次数: 26

Abstract

This paper provides an approach to the detection of information security breaches in automated process control systems (APCS), which consists in forecasting multivariate time series formed from the values of the operating parameters of the end system devices. Using an experimental model of water treatment, a comparison was made of the forecasting results for the parameters characterizing the operation of the entire model, and for the parameters characterizing the flow of individual subprocesses implemented by the model. For forecasting, GRU-neural network training was performed.
GRU神经网络用于自动化过程控制系统中的网络攻击检测
本文提供了一种检测自动化过程控制系统(APCS)信息安全漏洞的方法,该方法包括预测由终端系统设备的运行参数值形成的多元时间序列。利用一个水处理实验模型,对整个模型的运行参数和模型实现的单个子过程的流量参数的预测结果进行了比较。对于预测,进行gru -神经网络训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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