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Detection of data injection attack in industrial control system using long short term memory recurrent neural network

机译:基于长期记忆递归神经网络的工业控制系统数据注入攻击检测

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In 2010, the outbreak of Stuxnet sounded a warning in the field of industrial control.security. As the major attack form of Stuxnet, data injection attack is characterized by high concealment and great destructiveness. This paper proposes a new method to detect data injection attack in Industrial Control Systems (ICS), in which Long Short Term Memory Recurrent Neural Network (LSTM-RNN) is a temporal sequences predictor. We then use the Euclidean detector to identify attacks in a model of a chemical plant. With simulation and evaluation in Tennessee Eastman (TE) process, we show that this method is able to detect various types of data injection attacks.
机译:2010年,Stuxnet的爆发在工业控制安全领域发出了警告。数据注入攻击是Stuxnet的主要攻击形式,其隐蔽性高,破坏性大。本文提出了一种在工业控制系统(ICS)中检测数据注入攻击的新方法,其中长期短期记忆循环神经网络(LSTM-RNN)是时间序列预测器。然后,我们使用欧几里得检测器来识别化工厂模型中的攻击。通过田纳西州伊士曼(TE)流程的仿真和评估,我们证明了该方法能够检测各种类型的数据注入攻击。

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