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Article
Real-Time Detection of False Data Injection in Smart Grid Networks: An Adaptive CUSUM Method and Analysis
IEEE Systems Journal
  • Yi Huang, University of Houston
  • Jin Tang, Illinois Institute of Technology
  • Yu Cheng, Illinois Institute of Technology
  • Husheng Li, University of Tennessee
  • Kristy A. Campbell, Boise State University
  • Zhu Han, University of Houston
Document Type
Article
Publication Date
6-1-2016
DOI
http://dx.doi.org/10.1109/JSYST.2014.2323266
Abstract

A smart grid is delay sensitive and requires the techniques that can identify and react on the abnormal changes (i.e., system fault, attacker, shortcut, etc.) in a timely manner. In this paper, we propose a real-time detection scheme against false data injection attack in smart grid networks. Unlike the classical detection test, the proposed algorithm is able to tackle the unknown parameters with low complexity and process multiple measurements at once, leading to a shorter decision time and a better detection accuracy. The objective is to detect the adversary as quickly as possible while satisfying certain detection error constraints. A Markov-chain-based analytical model is constructed to systematically analyze the proposed scheme. With the analytical model, we are able to configure the system parameters for guaranteed performance in terms of false alarm rate, average detection delay, and missed detection ratio under a detection delay constraint. The simulations are conducted with MATPOWER 4.0 package for different IEEE test systems.

Citation Information
Yi Huang, Jin Tang, Yu Cheng, Husheng Li, et al.. "Real-Time Detection of False Data Injection in Smart Grid Networks: An Adaptive CUSUM Method and Analysis" IEEE Systems Journal (2016)
Available at: http://works.bepress.com/kris_campbell/31/