智能电网系统中电动汽车负载频率控制的网络攻击和防御方法

Mrinal Ranjan, Ravi Shankar, U. Raj, Sarvesh Kumar, Jitendra Kumar
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引用次数: 0

摘要

汽车并网(V2G)技术的最新进展使电动汽车(EV)能够促进频率调节(FR),减轻可再生资源不确定电力波动的影响。然而,各种网络攻击对负载频率控制(LFC)系统和智能电网基础设施构成了威胁,损害了它们的准确性和可靠性。本文的研究重点是网络攻击对依赖于通信网络的智能电网系统中频率调节的影响。研究提出了一个两区系统和一个改进的 IEEE-39 总线三区系统,其中包含间歇性太阳能光伏和风力涡轮机电源、传统常规电源和电动汽车。为确保频率稳定和连接线功率,研究人员引入了级联 FOPIDN-(1+TD) 控制器。其参数采用新颖的准对立优化算法(QOAOA)进行优化。将所提出方法的动态响应与其他常用控制器进行了比较,证明了其在保持稳定性方面的有效性。文章以 LFC 系统为重点,介绍了一种涉及网络物理模型的新方法。文章介绍了一种利用深度学习(特别是利用长短期记忆(LSTM)网络)检测和防御网络攻击的方法。通过在双区互联电力系统和 IEEE-39 总线系统上进行实验,证明了所建议的防御策略的有效性。结果表明,所建议的防御机制能在网络攻击期间有效地维持可接受的电力系统频率和连接线功率水平。此外,通过使用 OPAL-RT 平台的硬件在环(HIL)仿真进行实时分析,验证了控制器性能的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cyber‐attack and defense method for load frequency control in smart grid systems with electric vehicles
The latest advancements in Vehicle‐to‐Grid (V2G) technology enable Electric Vehicles (EVs) to contribute to Frequency Regulation (FR), mitigating the impact of uncertain power fluctuations in renewable resources. However, diverse cyber‐attacks pose threats to the Load Frequency Control (LFC) system and smart grid infrastructure, compromising their accuracy and reliability. This research paper focuses on the effects of cyber‐attacks on frequency regulation in a smart grid system that relies on a communication network. The study proposes a two‐area system and a modified IEEE‐39 bus three‐area system, incorporating intermittent solar photovoltaic and wind turbine sources, traditional conventional sources, and electric vehicles. To ensure frequency stabilization and tie‐line power, the researchers introduce a cascade FOPIDN‐(1+TD) controller. Its parameters are optimized using a novel Quasi Opposition Arithmetic Optimization Algorithm (QOAOA). The proposed approach's dynamic response is compared with other commonly used controllers, demonstrating its effectiveness in maintaining stability. The article focuses on the LFC system and presents a novel approach involving a cyber‐physical model. It introduces a method for detecting and defending against cyber‐attacks using deep learning, specifically utilizing the Long‐Short‐Term‐Memory (LSTM) network. The effectiveness of the proposed defense strategy is demonstrated through experiments conducted on both a two‐area interconnected power system and the IEEE‐39 bus system. The outcomes indicate that the suggested defense mechanism effectively maintains acceptable levels of power system frequency and tie‐line power during cyber‐attacks. Additionally, the validity of the controller's performance is verified through real‐time analysis using Hardware‐In‐The‐Loop (HIL) simulation with the OPAL‐RT platform.
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