Symmetry (Nov 2023)

A Novel Detection and Identification Mechanism for Malicious Injection Attacks in Power Systems

  • Hongfeng Zhang,
  • Xinyu Wang,
  • Lan Ban,
  • Molin Sun

DOI
https://doi.org/10.3390/sym15122104
Journal volume & issue
Vol. 15, no. 12
p. 2104

Abstract

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The integration of advanced sensor technology and control technology has gradually improved the operational efficiency of traditional power systems. Due to the undetectability of these attacks using traditional chi-square detection techniques, the state estimation of power systems is vulnerable to cyber–physical attacks, For this reason, this paper presents a novel detection and identification framework for detecting malicious attacks in power systems from the perspective of cyber–physical symmetry. To consider the undetectability of cyber–physical attacks, a physical dynamics detection model using the unknown input observers (UIOs) and cosine similarity theorem is proposed. Through the design of UIO parameters, the influence of attacks on state estimation can be eliminated. A cosine similarity value-based detection criterion is proposed to replace the traditional detection threshold. To further cut down the effects caused by malicious attacks, an observer combination-based attack identification framework is established. Finally, simulations are given to demonstrate that the proposed security method can detect and identify the injected malicious attacks quickly and effectively.

Keywords