Abstract

Arc faults induced by residential low-voltage distribution network lines are still one of the main causes of residential fires. When a series arc fault occurs on the line, the value of the fault current in the circuit is limited by the load. Traditional circuit protection devices cannot detect series arcs and generate a trip signal to implement protection. This paper proposes a novel high-frequency coupling sensor for extracting the features of low-voltage series arc faults. This sensor is used to collect the high-frequency feature signals of various loads in series arc state and normal working state. The signal will be transformed into two-dimensional feature gray images according to the temporal-domain sequence. A neural network with a three-layer structure based on convolution neural network is designed, trained and tested using the various typical loads’ arc states and normal states data sets composed of these images. This detection method can simultaneously accurately identify series arc, as well as the load type. Seven different domestic appliances were selected for experimental verification, including a desktop computer, vacuum cleaner, induction cooker, fluorescent lamp, dimmer, heater and electric drill. Then, the stability and universality of the detection algorithm is also verified by using electronic load with adjustable power factor and peak factor. The experimental results show that the designed sensor has the advantages of simple structure and wide frequency response range. The detection algorithm comparison confirms that the classification accuracy of the seven domestic appliances’ work states in the fourteen categories could reach 98.36%. The adjustable load in the two categories could reach above 99%. The feasibility of hardware implementation based on FPGA of this method is also evaluated.

Highlights

  • Arcing can be considered as a complex electromagnetic reaction process

  • A study of series arc fault detection using the high-frequency coupling convolution neural network (HCCNN) method has been presented in this paper

  • The method is dedicated to series arc fault detection in a domestic network (220 V, 50 Hz), and detects arc fault in the following procedure: The gray images of various loads are obtained by using the designed high-frequency coupling (HFC)

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Summary

Introduction

Arcing can be considered as a complex electromagnetic reaction process. According to the. Lezama et al [20] present an embedded system for series arc detection by evaluating the inter-period correlation coefficient of the line current to determine if an arc fault has occurred. These methods [11,12,13,15,16,17,18,19,20] determine a trigger threshold according to the change of extracted eigenvalues. Arc current is an ideal parameter for arc fault detection but the measurement frequency band of common current transformer (CT) and hall sensor (HS) is generally from 0 to 200 kHz [21,22].

Equivalent Circuit and Principle Analysis of the HFC Sensor
Frequency Response Analysis of HFC Sensor
Time and Frequency Characteristic Study
Time Domain
Frequency Domain
Gray-Scale Image Generated from HFC Sensor
The HCCNN Method
Preliminary Theory of CNN
The HCCNN’s Structure
Experimental Setup and Results
Experimental Setup
The Arc Fault Database of Typical Appliances
The Detection Result of Typical Appliances
The Result of Electronic Load Recognition
Assessment of Embedded System Implementation
HCCNN Method
Findings
Conclusions
Full Text
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