基于对电网不利影响的攻击路径重构,重点研究监控层攻击

J. Wang, C. Moya
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引用次数: 4

摘要

监控层(ML)攻击注入虚假测量来操纵操作决策。现有的机器学习攻击模型研究有一个内在的缺陷:攻击者的目标是通过错误的测量来建模的,而不是通过对电网的最终后果来建模的。在本文中,我们提出了一种基于不良物理后果的ml攻击模型。所提出的建模方法对于电力系统取证中的攻击路径重构以及未来针对ML攻击的防御机制的发展至关重要。给出了分输电系统和低压配电系统攻击路径重构的实例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attack path reconstruction from adverse consequences on power grids with a focus on Monitoring-Layer attacks
The Monitoring Layer (ML) attacks injects false measurements to manipulate operation decisions. Existing research on ML attacking models have an intrinsic deficiency: an attacker's goal is modeled by erroneous measurements, but not by final consequences on power grids. In this paper, we propose an ML-attack model based on adverse physical consequences. The proposed modeling method is essential to reconstruct attack paths in power system forensics and to future development of defense mechanisms against ML attacks. Examples of attack paths reconstruction are presented, on a sub-transmission system and a low voltage distribution system.
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