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Deep Semi-Supervised Learning Method for False Data Detection Against Forgery and Concealing of Faults in Cyber-Physical Power Systems

Guoteng Wang, Chongyu Wang, Mohammad Shahidehpour, Wei Lin

2023IEEE Transactions on Smart Grid17 citationsDOI

Abstract

This paper proposes a deep semi-supervised numerical false data detection (DSS-NFDD) method, where hidden data in labeled and unlabeled datasets are leveraged simultaneously, to detect the false data in CPPS. Two types of false data are considered in this study: one is the forged fault data, which makes operators mistakenly believe that there is a fault in their operating system; the other is the false data used to conceal actual faults. First, a data dimension reduction method is proposed based on the PageRank algorithm to avoid the excessive noise caused by high-dimension data. Then, a semi-supervised deep learning framework is established to detect false data samples, which consists of two parts: one is the priori estimation module, and the other is a false data scoring network. A novel concentration loss function is presented for training the false data scoring network, which minimizes the impacts of noise pollution and sample bias. Next, a false feature location method is proposed to help human operators eliminate anomalies. Finally, the effectiveness and the superiorities of the proposed DSS-NFDD method are verified by analyzing the simulation results for the IEEE-39 bus and IEEE-118 bus systems.

Topics & Concepts

Computer scienceData miningNoise (video)Fault detection and isolationDimension (graph theory)Artificial intelligenceDimensionality reductionFault (geology)Pattern recognition (psychology)Deep learningNoise reductionData modelingMathematicsGeologyImage (mathematics)DatabasePure mathematicsSeismologyActuatorElectricity Theft Detection TechniquesPower System Reliability and MaintenanceSmart Grid Security and Resilience
Deep Semi-Supervised Learning Method for False Data Detection Against Forgery and Concealing of Faults in Cyber-Physical Power Systems | Litcius