Learning-Based Time Delay Attack Characterization for Cyber-Physical Systems

Xin Lou, Cuong Tran, David K. Y. Yau, Rui Tan, H. Ng, T. Fu, M. Winslett
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引用次数: 10

Abstract

The cyber-physical systems (CPSes) rely on computing and control techniques to achieve system safety and reliability. However, recent attacks show that these techniques are vulnerable once the cyber-attackers have bypassed air gaps. The attacks may cause service disruptions or even physical damages. This paper designs the built-in attack characterization scheme for one general type of cyber-attacks in CPS, which we call time delay attack, that delays the transmission of the system control commands. We use the recurrent neural networks in deep learning to estimate the delay values from the input trace. Specifically, to deal with the long time-sequence data, we design the deep learning model using stacked bidirectional long short-term memory (LSTM) units. The proposed approach is tested by using the data generated from a power plant control system. The results show that the LSTM-based deep learning approach can work well based on data traces from three sensor measurements, i.e., temperature, pressure, and power generation, in the power plant control system. Moreover, we show that the proposed approach outperforms the base approach based on k-nearest neighbors.
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基于学习的网络物理系统时延攻击表征
信息物理系统(cps)依靠计算和控制技术来实现系统的安全性和可靠性。然而,最近的攻击表明,一旦网络攻击者绕过气隙,这些技术就很容易受到攻击。这些攻击可能会导致业务中断甚至物理损坏。针对CPS中一种常见的网络攻击,即延迟系统控制命令传输的时延攻击,本文设计了一种内置的攻击表征方案。我们使用深度学习中的递归神经网络从输入轨迹估计延迟值。具体来说,为了处理长时间序列数据,我们设计了使用堆叠双向长短期记忆(LSTM)单元的深度学习模型。利用某电厂控制系统的实测数据对该方法进行了验证。结果表明,基于lstm的深度学习方法可以很好地基于电厂控制系统中温度、压力和发电量三种传感器测量的数据轨迹。此外,我们还证明了该方法优于基于k近邻的基本方法。
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