Deception-Based Cyber Attacks on Hierarchical Control Systems using Domain-Aware Koopman Learning*

Craig Bakker, Andrew August, Sen Huang, Soumya Vasisht, D. Vrabie
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引用次数: 1

Abstract

Industrial control systems are subject to cyber attacks that produce physical consequences. These attacks can be both hard to detect and protracted. Here, we focus on deception-based sensor bias attacks made against a hierarchical control system where the attacker attempts to be stealthy. We develop a data-driven, optimization-based attacker model and use the Koopman operator to represent the system dynamics in a domain-aware and computationally efficient manner. Using this model, we compute several different attacks against a high-fidelity commercial building emulator and compare the impacts of those attacks to each other. Finally, we discuss some computational considerations and identify avenues for future research.
基于欺骗的基于领域感知Koopman学习的分层控制系统网络攻击*
工业控制系统容易受到网络攻击,造成物理后果。这些攻击很难被发现,而且会持续很长时间。在这里,我们专注于基于欺骗的传感器偏差攻击,攻击者试图隐身的分层控制系统。我们开发了一个数据驱动的,基于优化的攻击者模型,并使用Koopman算子以领域感知和计算效率的方式表示系统动力学。利用该模型,我们计算了针对高保真商业建筑仿真器的几种不同攻击,并比较了这些攻击的影响。最后,我们讨论了一些计算问题,并确定了未来研究的途径。
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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