基于深度学习的智能电网窃电发电系统攻击检测器

Maymouna Ezeddin, A. Albaseer, M. Abdallah, S. Bayhan, M. Qaraqe, S. Al-Kuwari
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引用次数: 5

摘要

本文研究了发电领域的窃电攻击问题。在这次攻击中,攻击者的目标是通过入侵监控可再生分布式发电的智能电表,操纵读数,以向电网注入更高的能量,从而使公用事业公司收取过高的费用。在之前的研究中,开发了基于深度学习(DL)的检测器来检测此类行为,尽管它们依赖于不同的数据源,并且忽略了攻击者可以将其集成到其报告能量中的小扰动的关键影响。本文通过提出一种高效的基于dl的检测器来解决这一差距,该检测器通过添加两个特征来增强性能,仅使用单个数据源就可以提供更高的准确性和检测率。随后,所提出的检测器被进一步扩展,以应对攻击者可能添加的小扰动。我们使用真实数据集进行了广泛的仿真,结果表明,所提出的模型即使在小扰动下也能以更高的检测率检测对手。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Deep Learning Based Detector for Electricity Theft Generation System Attacks in Smart Grid
This paper investigates the problem of electricity theft attacks in the generation domain. In this attack, the adversaries aim to manipulate readings to claim higher energy injected into the grid for overcharging utility companies by hacking smart meters monitoring renewable-based distributed generation. In prior research, deep learning (DL) based detectors were developed to detect such behavior, though they relied on different data sources and overlooked the critical impact of small perturbations which an attacker could integrate into its reported energy. This paper takes advantage of addressing this gap by proposing an efficient DL-based detector that can offer much higher accuracy and detection rate using only a single source of data by adding two features to enhance the performance. Subsequently, the proposed detector is further extended to cope with the small perturbations that attackers can add. We carry out extensive simulation using realistic data sets, and the results show that the proposed models detect the adversaries with higher rate detection even with small perturbations.
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