用于智能网络物理网格异常检测的无监督堆叠自编码器

Abdulrahman Al-Abassi, Jacob Sakhnini, H. Karimipour
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引用次数: 15

摘要

智能网络物理电网是电力系统技术的新浪潮,它将传感器网络与发电站集成在一起,以实现更高效的发电和配电。利用通信网络在带来巨大优势的同时,也增加了电力系统面对网络攻击的脆弱性。文献中提出了许多安全和攻击检测方法;然而,大多数论文并未考虑实际电力系统中数据的不平衡。在本文中,我们提出了一种基于深度学习的方法,称为集成堆叠自动编码器(ESAE),旨在解决数据不平衡问题。该方法通过开发一种深度表征学习模型来构建新的平衡表征,从而在不平衡数据上取得了优异的性能。利用基于堆叠自编码器和随机森林分类器的集成体系结构从新的表征中检测攻击,提高了检测精度和模型性能。采用IEEE 14总线、30总线和57总线系统的测试用例对该方法进行了各种程度的数据不平衡测试。与几种分类器进行了比较,以证明所提出算法的有效性
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Unsupervised Stacked Autoencoders for Anomaly Detection on Smart Cyber-physical Grids
Smart Cyber Physical Grids are the new wave of power system technology that integrates networks of sensors with power stations for more efficient power generation and distribution. While utilizing communication networks is accompanied with tremendous advantages, it also increases the vulnerability of power systems to cyber attacks. Many methods for security and attack detection have been proposed in literature; however, most papers do not consider the imbalance of data in real power systems. In this paper, we propose a deep learning based method, referred to as Ensemble Stacked AutoEncoder (ESAE), aimed at tackling the problem of data imbalance. This method achieves superior performance on imbalanced data by developing a deep representation learning model to construct new balanced representations. The detection accuracy and model performance is improved by utilizing an ensemble architecture based on Stacked Autoencoders and Random Forest classifiers to detect attacks from the new representations. The proposed method is tested on all degrees of data imbalance using test cases of IEEE 14-bus, 30-bus, and 57-bus systems. Comparisons are made to several classifiers to demonstrate the effectiveness of the proposed algorithm
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