Kousar Anila, Ahmed Saeed, Altamimi Abdullah, Kim Su Min, Khan Zafar A
Department of Electrical Engineering, Mirpur University of Science and Technology (MUST), Mirpur AJK, 10250, Pakistan.
Department of Electrical Engineering, College of Engineering, Majmaah University, Al-Majmaah, 11952, Saudi Arabia.
Heliyon. 2024 Sep 27;10(19):e38470. doi: 10.1016/j.heliyon.2024.e38470. eCollection 2024 Oct 15.
Smart grids arose as the largest cyber-physical systems with the integration of sophisticated control, computing, and state-of-the-art communications. Like all cyber-physical systems, the smart grids are vulnerable to malicious cyber assaults due to their enormous dependency on communication networks. Various machine learning-based schemes are being investigated in the industry and academia to develop robust defense mechanisms to counter cyber assaults. However, the curse of high dimensionality, which increases with the escalating evolution of an electric power system, infringes upon the efficiency of machine learning models employed to detect such assaults. To this end, this paper proposes a deep denoising autoencoder (DAE)-based framework for dimensionality reduction that learns salient feature representation for high-dimensional, multi-variant smart grid measurement data collected from the smart grids. The latent space apprehended by DAE is then fed to binary support vector machine (SVM) to determine the assaulted data. Various standard IEEE test cases are employed in simulations. The results show that the proposed scheme learns more robust features that reveal the nonlinear properties exhibited in the smart grid measurements, further leading to improved detection accuracy of the classifier as compared to existing approaches.
智能电网作为最大的信息物理系统出现,集成了先进的控制、计算和最先进的通信技术。与所有信息物理系统一样,智能电网由于对通信网络的巨大依赖,容易受到恶意网络攻击。行业和学术界正在研究各种基于机器学习的方案,以开发强大的防御机制来应对网络攻击。然而,随着电力系统不断升级发展而增加的高维诅咒,影响了用于检测此类攻击的机器学习模型的效率。为此,本文提出了一种基于深度去噪自动编码器(DAE)的降维框架,该框架为从智能电网收集的高维、多变量智能电网测量数据学习显著特征表示。然后将DAE捕获的潜在空间输入到二元支持向量机(SVM)中,以确定受攻击的数据。在仿真中使用了各种标准的IEEE测试案例。结果表明,与现有方法相比,所提出的方案学习到了更强大的特征,这些特征揭示了智能电网测量中呈现的非线性特性,进一步提高了分类器的检测准确率。