基于图像深度学习的智能电网攻击检测与定位

Mostafa Mohammadpourfard, I. Genc, S. Lakshminarayana, Charalambos Konstantinou
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引用次数: 8

摘要

智能电网的目标是使电力和信息双向流动,同时提供有效、稳健、计算机化和分散的能源输送。这就需要使用基于状态估计的技术和实时分析,以确保正确部署有效的控制措施。然而,对通信技术的依赖使此类系统容易受到复杂的数据完整性攻击,对智能电网的整体可靠性构成严重威胁。为了检测此类攻击,需要先进高效的异常检测解决方案。本文通过嵌入电力系统的特征,精心设计了一个基于两阶段深度学习的框架,实现了精确的攻击检测和定位。首先,我们使用基于图像的表示方法(如Gramian角场(GAF)和递归图(RP))将多变量电力系统时间序列测量的时间相关性编码为二维图像,以获得潜在的数据特征。然后利用这些图像构建一个高度可靠和有弹性的基于深度卷积神经网络(CNN)的多标签分类器,能够学习图像中的低级和高级特征,以检测和发现准确的攻击位置,而无需利用任何先前的统计假设。在IEEE 57总线系统上使用实际负载数据对该方法进行了评估。并进行了比较研究。数值结果表明,所提出的多类网络入侵检测框架优于现有的传统和基于深度学习的攻击检测方法。
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Attack Detection and Localization in Smart Grid with Image-based Deep Learning
Smart grid's objective is to enable electricity and information to flow two-way while providing effective, robust, computerized, and decentralized energy delivery. This necessitates the use of state estimation-based techniques and real-time analysis to ensure that effective controls are deployed properly. However, the reliance on communication technologies makes such systems susceptible to sophisticated data integrity attacks imposing serious threats to the overall reliability of smart grid. To detect such attacks, advanced and efficient anomaly detection solutions are needed. In this paper, a two-stage deep learning-based framework is carefully designed by embedding power system's characteristics enabling precise attack detection and localization. First, we encode temporal correlations of the multivariate power system time-series measurements as 2D images using image-based representation approaches such as Gramian Angular Field (GAF) and Recurrence Plot (RP) to obtain the latent data characteristics. These images are then utilized to build a highly reliable and resilient deep Convolutional Neural Network (CNN)-based multi-label classifier capable of learning both low and high level characteristics in the images to detect and discover the exact attack locations without leveraging any prior statistical assumptions. The proposed method is evaluated on the IEEE 57-bus system using real-world load data. Also, a comparative study is carried out. Numerical results indicate that the proposed multi-class cyber-intrusion detection framework outperforms the current conventional and deep learning-based attack detection methods.
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