Litcius/Paper detail

A Novel Series Arc Fault Detection Method Based on CEEMDAN and IFAW-1DCNN

Jinming Wu, Wei Wang, Tongtong Shang, Junteng Cao

2024IEEE Transactions on Dielectrics and Electrical Insulation21 citationsDOI

Abstract

Machine learning-based fault detection technology gains significant attention in recent years. However, the practical implementation of such technologies often encounters challenges in selecting appropriate fault characteristics and network parameters. This study proposes a novel method for series arc fault detection based on the combined approach of complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) and improved fireworks algorithm-1-D convolutional neural network (IFWA-1DCNN). Following CEEMDAN utilization to decompose the current signal to obtain a set of intrinsic mode functions (IMF), the Spearman correlation coefficient and energy value are utilized to select the characteristic IMF, addressing the issue of some IMF lacking or containing insufficient fault features. To address the problem of manual parameter selection for 1DCNN and the difficulty in obtaining optimal parameters, an IFWA is then proposed for parameter optimization and selection in 1DCNN. The experimental results indicate that the proposed method achieved a fault recognition accuracy of 98.23%, outperforming traditional methods that use the original current signal as input for 1DCNN. Overall, these findings highlight the enhanced recognition capability of the proposed method.

Topics & Concepts

Hilbert–Huang transformFault (geology)Convolutional neural networkComputer sciencePattern recognition (psychology)Noise (video)Artificial intelligenceSeries (stratigraphy)AlgorithmArtificial neural networkSet (abstract data type)Machine learningData miningWhite noiseSeismologyBiologyGeologyImage (mathematics)PaleontologyTelecommunicationsProgramming languageElectrical Fault Detection and ProtectionIntegrated Circuits and Semiconductor Failure AnalysisMachine Fault Diagnosis Techniques