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Series Arc Fault Identification Method Based on Multi-Feature Fusion

Quanyi Gong, Ke Peng, Wei Wang, Bingyin Xu, Xinhui Zhang, Yu Chen

2022Frontiers in Energy Research20 citationsDOIOpen Access PDF

Abstract

With the increase of various loads connected to the low-voltage distribution system, the difficulty of identifying low-voltage series fault arcs has greatly increased, which seriously threatens the electricity safety. Aiming at such problems, a neural network algorithm based on multi-feature fusion is proposed. The fault current has the characteristics of randomness, high frequency noise, and singularity. A GA-BP neural network model is built, and the wavelet analysis method (based on singularity), Fourier transform method (based on high frequency noise), current cycle difference method (based on randomness), and current cycle similarity derivation method (based on randomness) are used for feature extraction and can more comprehensively reflect the characteristics of arc faults. Simulation results show that the multi-feature fusion algorithm has a higher recognition rate than other algorithms. Moreover, compared with the support vector machine model, logistic regression model, and AlexNet model, the GA-BP neural network model has a higher recognition accuracy than the other three models, which can reach 99%.

Topics & Concepts

RandomnessArtificial neural networkFault (geology)Pattern recognition (psychology)Computer scienceFeature (linguistics)Noise (video)Feature extractionSPARK (programming language)AlgorithmArtificial intelligenceSupport vector machineWavelet transformSingularityWaveletMathematicsLinguisticsStatisticsProgramming languagePhilosophySeismologyMathematical analysisGeologyImage (mathematics)Electrical Fault Detection and ProtectionOccupational Health and Safety ResearchRisk and Safety Analysis
Series Arc Fault Identification Method Based on Multi-Feature Fusion | Litcius