Energies (Feb 2022)

Earth-Mover-Distance-Based Detection of False Data Injection Attacks in Smart Grids

  • Zhengwei Qu,
  • Jingchuan Yang,
  • Yansheng Lang,
  • Yunjing Wang,
  • Xiaoming Han,
  • Xinyue Guo

DOI
https://doi.org/10.3390/en15051733
Journal volume & issue
Vol. 15, no. 5
p. 1733

Abstract

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The high integration of power information physical system improves the efficiency of power transmission, but it also brings new threats to power grid. False data injection attacks can use traditional bad data to detect vulnerabilities and maliciously tamper with measurement data to affect the state estimation results. In order to achieve a higher security level for power systems, we propose an earth mover distance method to detect false data injection attacks in smart grids. The proposed method is built on the dynamic correlation of measurement data between adjacent moments. Firstly, a joint-image-transformation-based scheme is proposed to preprocess the measurement data variation, so that the distribution characteristics of measurement data variation are more significant. Secondly, the deviation between the probability distribution of measurement data variation and the histogram are obtained based on the earth’s mover distance. Finally, a reasonable detection threshold is selected to judge whether there are false data injection attacks. The proposed method is tested using IEEE 14 bus system considering the state variable attacks on different nodes. The results verified that the proposed method has a high detection accuracy against false data injection attacks.

Keywords