Litcius/Paper detail

ArcNet: Series AC Arc Fault Detection Based on Raw Current and Convolutional Neural Network

Yao Wang, Linming Hou, Kamal Chandra Paul, Yunsheng Ban, Chen Chen, Tiefu Zhao

2021IEEE Transactions on Industrial Informatics155 citationsDOI

Abstract

AC series arc is dangerous and can cause serious electric fire hazards and property damage. This article proposed a convolutional neural network -based arc detection model named ArcNet. The database of this research is collected from eight different types of loads according to IEC62606 standard. The two most common types of arcs, including arcs from a loose connection of cables and those caused by the failure of the insulation, are generated in testing and included in the database. Using the database of raw current, experimental results indicate ArcNet can achieve a maximum of 99.47% arc detection accuracy at 10 kHz sampling rate. The model is also implemented in Raspberry Pi 3B for classification accuracy. A tradeoff study between the arc detection accuracy and model runtime has been conducted. The proposed ArcNet obtained an average runtime of 31 ms/sample of 1 cycle at 10 kHz sampling rate, which proves the feasibility of practical hardware deployment for real-time processing.

Topics & Concepts

Computer scienceArc (geometry)Convolutional neural networkArc-fault circuit interrupterArtificial neural networkSampling (signal processing)Failure rateFault (geology)Real-time computingArtificial intelligenceVoltageDetectorReliability engineeringEngineeringElectrical engineeringTelecommunicationsShort circuitMechanical engineeringSeismologyGeologyElectrical Fault Detection and ProtectionOccupational Health and Safety ResearchRisk and Safety Analysis