Frontiers in Energy Research (Apr 2021)

Coordinated Cyber-Attack Detection Model of Cyber-Physical Power System Based on the Operating State Data Link

  • Lei Wang,
  • Lei Wang,
  • Pengcheng Xu,
  • Zhaoyang Qu,
  • Zhaoyang Qu,
  • Xiaoyong Bo,
  • Xiaoyong Bo,
  • Yunchang Dong,
  • Yunchang Dong,
  • Zhenming Zhang,
  • Zhenming Zhang,
  • Yang Li

DOI
https://doi.org/10.3389/fenrg.2021.666130
Journal volume & issue
Vol. 9

Abstract

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Existing coordinated cyber-attack detection methods have low detection accuracy and efficiency and poor generalization ability due to difficulties dealing with unbalanced attack data samples, high data dimensionality, and noisy data sets. This paper proposes a model for cyber and physical data fusion using a data link for detecting attacks on a Cyber–Physical Power System (CPPS). The two-step principal component analysis (PCA) is used for classifying the system’s operating status. An adaptive synthetic sampling algorithm is used to reduce the imbalance in the categories’ samples. The loss function is improved according to the feature intensity difference of the attack event, and an integrated classifier is established using a classification algorithm based on the cost-sensitive gradient boosting decision tree (CS-GBDT). The simulation results show that the proposed method provides higher accuracy, recall, and F-Score than comparable algorithms.

Keywords