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Gaussian Mixture Modeling for Detecting Integrity Attacks in Smart Grids

机译:高斯混合模型,用于检测智能电网中的完整性攻击

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The thematics focusing on inserting intelligence in cyber-physical critical infrastructures (CI) have been receiving a lot of attention in the recent years. This paper presents a methodology able to differentiate between the normal state of a system composed of interdependent infrastructures and states that appear to be normal but the system (or parts of it) has been compromised. The system under attack seems to operate properly since the associated measurements are simply a variation of the normal ones created by the attacker, and intended to mislead the operator while the consequences may be of catastrophic nature. Here, we propose a holistic modeling scheme based on Gaussian mixture models estimating the probability density function of the parameters coming from linear time invariant (LTI) models. LTI models are approximating the relationships between the datastreams coming from the CI. The experimental platform includes a power grid simulator of the IEEE 30 bus model controlled by a cyber network platform. Subsequently, we implemented a wide range of integrity attacks ( replay , ramp , pulse , scaling , and random ) with different intensity levels. An extensive experimental campaign was designed and we report satisfying detection results.
机译:近年来,专注于在网络物理关键基础架构(CI)中插入智能的主题已引起了很多关注。本文提出了一种方法,可以区分由相互依赖的基础结构组成的系统的正常状态和看似正常但系统(或其部分)受到损害的状态。受攻击的系统似乎可以正常运行,因为相关的测量值仅仅是攻击者创建的正常测量值的一种变体,旨在误导操作员,而后果可能是灾难性的。在这里,我们提出了一种基于高斯混合模型的整体建模方案,该模型估计了来自线性时不变(LTI)模型的参数的概率密度函数。 LTI模型正在近似来自CI的数据流之间的关系。实验平台包括由网络平台控制的IEEE 30总线模型的电网模拟器。随后,我们实施了各种强度级别不同的范围广泛的完整性攻击(重放,渐变,脉冲,缩放和随机)。设计了广泛的实验活动,我们报告了令人满意的检测结果。

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