Litcius/Paper detail

Fa-Mb-ResNet for Grounding Fault Identification and Line Selection in the Distribution Networks

Liulin Yang, Yu Li, Zhi Wei

2021IEEE Internet of Things Journal29 citationsDOI

Abstract

Accurate and fast identification of the fault types and the fault feeders can improve the distribution networks’ power supply reliability. This article focuses on two issues of classifiers in performing fault identification and line selection of the distribution networks, namely, the low utilization rate of fault information and the insufficient accuracy. We propose to use multilabel and multiclassification and build a fast-multibranch residual network (Fa-Mb-ResNet) to accomplish the identification and line selection of the distribution network grounding fault simultaneously. Our work has the following contributions. First, we propose a method of frequency division and time division for learning the features of the time–frequency matrix based on wavelet transformation. Second, we propose an improved residual unit (IRU) structure, which employs different small branches and convolution kernels to achieve the fusion of abstract fault feature information in different dimensions and enhance learning efficiency. Finally, the IRU structure is connected end to end. The new approach fully exploits the side fault information. Our extensive experiments show that the Fa-Mb-ResNet is faster, more adaptable, and has better anti-interference than the state-of-the-art methods in fault identification and line selection of the distribution network.

Topics & Concepts

Computer scienceGroundIdentification (biology)Selection (genetic algorithm)Residual neural networkLine (geometry)Computer networkArtificial intelligenceArtificial neural networkEngineeringElectrical engineeringGeometryBotanyMathematicsBiologyPower Systems Fault DetectionElectrical Fault Detection and ProtectionPower Line Inspection Robots