Litcius/Paper detail

Dynamic Reduced-Order Observer-Based Detection of False Data Injection Attacks With Application to Smart Grid Systems

Jing-Jing Yan, Guang‐Hong Yang, Yu Wang

2022IEEE Transactions on Industrial Informatics52 citationsDOI

Abstract

This article investigates the problem of attack detection of false data injection attacks for a class of large-scale smart grid systems in the context of cyber–physical systems. First, by exploiting the graph theory to decompose the considered system into multiple interconnected subsystems, a bank of dynamic reduced-order observers are delicately constructed to generate residual signals for the attack detection task. Then, a novel decentralized attack detection scheme is proposed based on the adaptive detection thresholds with prescribed performance. Compared with the existing results, the proposed detection scheme has less conservative thresholds and enhanced robustness against process disturbance and measurement noise, such that the detectability is improved. Finally, the effectiveness and availability of the proposed scheme are verified by two simulation examples and the experimental results from IEEE 30-bus system built in the OPAL-RT real-time simulator.

Topics & Concepts

Robustness (evolution)Computer scienceSmart gridReal-time computingGridResidualEngineeringAlgorithmElectrical engineeringBiochemistryGeometryGeneChemistryMathematicsSmart Grid Security and ResilienceSecurity and Verification in ComputingNetwork Security and Intrusion Detection
Dynamic Reduced-Order Observer-Based Detection of False Data Injection Attacks With Application to Smart Grid Systems | Litcius