Detection of Cyber-Physical Attacks Using Optimal Recursive Least Square in an Islanded Microgrid

Ahmadreza Abazari, M. Zadsar, Mohsen Ghafouri, C. Assi
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引用次数: 1

Abstract

Islanded microgrids (IMGs) are defined as low-inertia systems compared to conventional power grids due to existing inverter-based topologies and lack of heavy rotational masses in their structures. In this regard, IMGs require an accurate load frequency control (LFC) scheme to regulate the frequency response through a cyber layer on top of the physical layer. This multi-layer structure and the sensitivity of LFC schemes to any disturbance, however, makes MGs an appealing target for a variety of cyber-physical attacks (CPAs). This paper introduces an online detection algorithm for CPAs in IMGs by the use of a recursive least square method along with forgetting factor (RLS-FF). The simulation results verify the performance of the developed detection schemes, particularly when the RLS-FF approach coefficients, i.e., covariance matrix and forgetting factor are optimally selected using particle swarm optimization (PSO) algorithm.
孤岛微电网中基于最优递归最小二乘的网络物理攻击检测
由于现有的基于逆变器的拓扑结构和结构中缺乏大的旋转质量,孤岛微电网(IMGs)被定义为与传统电网相比的低惯性系统。在这方面,img需要一个精确的负载频率控制(LFC)方案,通过物理层之上的网络层来调节频率响应。然而,这种多层结构和LFC方案对任何干扰的敏感性使MGs成为各种网络物理攻击(cpa)的吸引人的目标。本文介绍了一种基于遗忘因子(RLS-FF)的递归最小二乘法在线检测IMGs中cpa的算法。仿真结果验证了所提出的检测方案的性能,特别是采用粒子群优化(PSO)算法对RLS-FF逼近系数即协方差矩阵和遗忘因子进行了优化选择。
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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