(A Little) Ignorance is Bliss: The Effect of Imperfect Model Information on Stealthy Attacks in Power Grids

S. Harshbarger, Mohsen Hosseinzadehtaher, Balaji Natarajan, Eugene Y. Vasserman, M. Shadmand, G. Amariucai
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引用次数: 6

Abstract

Stealthy attacks on control systems have the potential to cause serious harm, as they are not readily detectable by any intrusion detection system. However, it is often the case that neither the controller nor the attacker can gather perfect information about the system model. We show that while a small mismatch between model and reality can easily be managed by a robust controller, an attacker's imperfect knowledge of the system can thwart the stealth of the attack. This opens the door to a whole new class of defense mechanisms, which focus on maximizing the attacker's uncertainty about the system while maintaining the controller's uncertainty within the bounds of its robustness. We demonstrate our findings on the simple quadruple tank control process and on a realistic power grid model, showing that the time to detect a stealthy attack depends on the attacker's level of uncertainty about the model.
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无知是福:不完善的模型信息对电网隐形攻击的影响
对控制系统的隐形攻击有可能造成严重危害,因为它们不容易被任何入侵检测系统检测到。然而,通常情况下,无论是控制器还是攻击者都无法收集到关于系统模型的完美信息。我们表明,虽然模型和现实之间的小不匹配可以很容易地通过鲁棒控制器进行管理,但攻击者对系统的不完善知识可以挫败攻击的隐身性。这为一种全新的防御机制打开了大门,这种机制的重点是最大化攻击者对系统的不确定性,同时保持控制器的不确定性在其鲁棒性的范围内。我们在简单的四缸控制过程和现实的电网模型上展示了我们的发现,表明检测隐形攻击的时间取决于攻击者对模型的不确定程度。
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