通过事件分解检测、识别和定位多个攻击

Wei Wang, Li He, P. Markham, H. Qi, Yilu Liu
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引用次数: 8

摘要

大型电力系统的安全主要集中在暂态和动态稳定性上,而故意攻击通常只属于对电网的几种影响类型。许多情况表现为由物理损坏、通信网络中断和/或信息馈送错误引起的设备故障。传统的电力系统被设计成对意外故障具有稳健性。然而,在后9/11环境下,协同多重打击成为现实威胁。因此,一个在线的多重攻击检测、识别和定位系统对于提供准确的控制和驱动信息至关重要。在本文中,我们提出了一个新的概念框架,称为“事件解混”,用于在线分析多个攻击,其中我们将多个攻击引起的干扰解释为多个组成根故障的线性混合。通过将时间戳加入到由不同根故障模式组成的过完备字典的构造中,我们可以基于“事件解混”的概念检测、识别和确定每个故障的开始时间。然后利用基于三角剖分方法的不同传感器检测到的每个单独故障的启动时间进行故障定位。使用PSS/E模拟数据和从频率监测网(FNET)的频率干扰记录仪(fdr)收集的实际数据对所提出的框架进行了评估。实验结果证明了该框架对多重攻击分析的有效性。
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Detection, recognition, and localization of multiple attacks through event unmixing
Security of large power systems is primarily focused on transient and dynamic stability, and intentional attacks generally fall within only a few types of influence upon the grid. Many of the scenarios manifest as equipment failures caused by physical damage, interruption of communication networks, and/or mis-feeding of information. Conventional power systems are designed to be robust to accidental failures. Nevertheless, under the post 9/11 environment, coordinated multiple strikes become a realistic threat. Therefore, an online system for multiple attacks detection, recognition, and localization is essential for providing accurate information to control and actuation. In this paper, we propose a novel conceptual framework, referred to as “event unmixing”, for the online analysis of multiple attacks, where we interpret the disturbance caused by multiple attacks as a linear mixture of more than one constituent root faults. By incorporating temporal stamps into the construction of an overcomplete dictionary, consisting of patterns of different root faults, we are able to detect, recognize and identify the starting time of each fault based on the concept of “event unmixing”. This is followed by the fault localization process by utilizing the starting time of each individual fault detected at different sensors based on the triangulation method. The proposed framework has been evaluated using both PSS/E simulated data and real data collected from the frequency disturbance recorders (FDRs) of the Frequency Monitoring Network (FNET). The experimental results demonstrate the effectiveness of the proposed framework for analysis of multiple attacks.
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