基于集成elm的电力系统网络攻击防御机制

Wenli Xue, Huaizhi Wang, Ting Wu, Jianchun Peng, Yangyang Liu
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引用次数: 1

摘要

状态估计对电力系统的正常运行至关重要。然而,由于电力基础设施的老化,电网变得更容易受到网络攻击。为此,本文提出了基于场景的智能电网完全和不完全网络信息两阶段稀疏网络攻击模型。在以往的传统状态估计器中,为了防止电力系统因坏数据而产生的非定常系统的涂抹效应,采用了坏数据检测器。然而,已有研究指出,BDD无法识别了解电力系统拓扑结构的黑客发起的异常状态。然后,为了有效地检测虚假数据,我们提出了一种新的基于极限学习机(ELM)的检测机制。在提出的防御机制中,我们将ELM的数量与一定的规则相结合,目的是提高检测的精度。最后,在标准的ieee14总线和aieee57总线系统上验证了该方法的有效性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Ensembled ELMs Based Defense Mechanism Against Cyber Attack on Power Systems
State estimation is critical for the normal operation of power system. However, due to the aging of electric infrastructures, the power grid become more vulnerable to cyber-attack. Therefore, in this paper, scenario-based two-stage sparse cyber-attack models for smart grid with complete and incomplete network information are proposed. In previous traditional state estimator, bad data detector (BDD) is used to prevent power systems from the smearing effect of the unsteady power system caused by the bad data. However, the researches have pointed out that BDD can’t recognize the abnormal state which launch by the hackers who know the topologies of the power system. Then, in order to detect false data effectively, we proposed a new detect mechanism based on extreme learning machine (ELM). In the proposed defense mechanism, we combine numbers of ELM whit certain rules, which objective is to improve the precision of the detection. Finally, the effectiveness and validation of the proposed method is verified on standard IEEE14-bus AIEEE57-bus system.
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