SYCRAug 16, 2020

A Survey of Machine Learning Methods for Detecting False Data Injection Attacks in Power Systems

arXiv:2008.06926v1126 citations
Originality Synthesis-oriented
AI Analysis

This addresses the problem of cyberattacks causing physical and economic damage in power systems, but it is incremental as it surveys existing methods rather than introducing new ones.

The paper reviews machine learning methods for detecting False Data Injection Attacks (FDIAs) in power systems, which bypass traditional Bad Data Detection algorithms to manipulate state estimation, aiming to provide a comprehensive overview of current solutions.

Over the last decade, the number of cyberattacks targeting power systems and causing physical and economic damages has increased rapidly. Among them, False Data Injection Attacks (FDIAs) is a class of cyberattacks against power grid monitoring systems. Adversaries can successfully perform FDIAs in order to manipulate the power system State Estimation (SE) by compromising sensors or modifying system data. SE is an essential process performed by the Energy Management System (EMS) towards estimating unknown state variables based on system redundant measurements and network topology. SE routines include Bad Data Detection (BDD) algorithms to eliminate errors from the acquired measurements, e.g., in case of sensor failures. FDIAs can bypass BDD modules to inject malicious data vectors into a subset of measurements without being detected, and thus manipulate the results of the SE process. In order to overcome the limitations of traditional residual-based BDD approaches, data-driven solutions based on machine learning algorithms have been widely adopted for detecting malicious manipulation of sensor data due to their fast execution times and accurate results. This paper provides a comprehensive review of the most up-to-date machine learning methods for detecting FDIAs against power system SE algorithms.

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