An Unsupervised Adversarial Autoencoder for Cyber Attack Detection in Power Distribution Grids

Mehdi Jabbari Zideh, Mohammad Reza Khalghani, Sarika Khushalani Solanki
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Abstract

Detection of cyber attacks in smart power distribution grids with unbalanced configurations poses challenges due to the inherent nonlinear nature of these uncertain and stochastic systems. It originates from the intermittent characteristics of the distributed energy resources (DERs) generation and load variations. Moreover, the unknown behavior of cyber attacks, especially false data injection attacks (FDIAs) in the distribution grids with complex temporal correlations and the limited amount of labeled data increases the vulnerability of the grids and imposes a high risk in the secure and reliable operation of the grids. To address these challenges, this paper proposes an unsupervised adversarial autoencoder (AAE) model to detect FDIAs in unbalanced power distribution grids integrated with DERs, i.e., PV systems and wind generation. The proposed method utilizes long short-term memory (LSTM) in the structure of the autoencoder to capture the temporal dependencies in the time-series measurements and leverages the power of generative adversarial networks (GANs) for better reconstruction of the input data. The advantage of the proposed data-driven model is that it can detect anomalous points for the system operation without reliance on abstract models or mathematical representations. To evaluate the efficacy of the approach, it is tested on IEEE 13-bus and 123-bus systems with historical meteorological data (wind speed, ambient temperature, and solar irradiance) as well as historical real-world load data under three types of data falsification functions. The comparison of the detection results of the proposed model with other unsupervised learning methods verifies its superior performance in detecting cyber attacks in unbalanced power distribution grids.
用于配电网网络攻击检测的无监督广告自动编码器
由于不确定和随机系统固有的非线性特性,在配置不平衡的智能配电网中检测网络攻击是一项挑战。它源于分布式能源资源(DER)发电和负荷变化的间歇性特征。此外,网络攻击的未知行为,尤其是配电网中具有复杂时间相关性的虚假数据注入攻击(FDIAs),以及有限的标记数据量,都增加了电网的脆弱性,给电网的安全可靠运行带来了高风险。为了应对这些挑战,本文提出了一种无监督对抗自动编码器(AAE)模型,用于检测与 DER(即光伏系统和风力发电)集成的不平衡配电网中的 FDIA。为了评估该方法的有效性,我们在 IEEE 13 总线和 123 总线系统上使用历史气象数据(风速、环境温度和太阳辐照度)以及历史实际负载数据,根据三种数据伪造函数对该方法进行了测试。将所提模型的检测结果与其他无监督学习方法进行比较,验证了其在检测不平衡配电网中的网络攻击方面的卓越性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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