Anomaly Detection and Resilience-Oriented Countermeasures against Cyberattacks in Smart Grids

Hossein Shahinzadeh, Arezou Mahmoudi, Jalal Moradi, H. Nafisi, E. Kabalci, Mohamed Benbouzid
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引用次数: 9

Abstract

Security in smart grids has been investigated by many scholars so far. Among the existing security issues, False Data Injection (FDI) attacks in energy, computers, and communication domains are still an ongoing challenge. These attacks have the ability to sabotage the grid through causing misfunctioning of measurements devices as well as changing the state estimation appraisal so that these changes, known as false data, cannot be easily recognized and identified using conventional approaches. In this paper, the degree of network resilience against FDI attacks is analyzed by simulating a randomly generated sample FDI attack, in which the false data vector has different intensity and different quantity. A steady-state AC power flow in accordance with the outage model is employed to simulate and predict the power system response after the incidence of an FDI attack, and the ability of this attack for blackout and shutting down the transmission network has been investigated. In the proposed model, the transmission line outage, load shedding, as well as voltage instability metrics are tested and analyzed on the IEEE 300- bus test network. Given that FDI attacks are considered a serious threat to power systems, the preliminary results imply that the targeted electricity grid is resilient against these attacks in terms of the probability of outage and chain blackouts, but the transient voltage stability can be affected.
智能电网异常检测与面向弹性的网络攻击对策
智能电网的安全问题目前已经得到了很多学者的研究。在现有的安全问题中,能源、计算机和通信领域的虚假数据注入(FDI)攻击仍然是一个持续的挑战。这些攻击有能力通过引起测量设备的故障以及改变状态估计评估来破坏电网,从而使这些变化(称为假数据)无法使用传统方法轻松识别和识别。本文通过模拟随机生成的FDI攻击样本,分析网络对FDI攻击的弹性程度,其中虚假数据向量具有不同强度和不同数量。采用符合停电模型的稳态交流潮流,对FDI攻击发生后的电力系统响应进行了模拟和预测,并研究了FDI攻击对输电网停电和关闭的能力。在该模型中,在IEEE 300总线测试网络上对输电线路的停电、减载和电压不稳定指标进行了测试和分析。鉴于FDI攻击被认为是对电力系统的严重威胁,初步结果表明,就停电和连锁停电的概率而言,目标电网对这些攻击具有弹性,但瞬态电压稳定性可能受到影响。
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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