LOW VOLTAGE APPARATUS ›› 2025, Vol. 0 ›› Issue (9): 1-12.doi: 10.16628/j.cnki.2095-8188.2025.09.001

• Research & Analysis •     Next Articles

An AC Series Arc Fault Detection Method Based on Filtering LSTM-Lightweight CNN

HE Jiantao, WANG Zhaorui, BAO Guanghai   

  1. College of Electrical Engineering and Automation,Fuzhou University,Fuzhou 350108,China
  • Received:2025-03-15 Online:2025-09-30 Published:2025-10-31

Abstract:

To address the insufficient generalization performance of deep learning-based arc fault detection methods in unknown multi-load circuits,a Filtering Long Short-Term Memory (Filtering LSTM) neural network driven by high-frequency coupled analog signals is proposed. By combining this network with a Lightweight convolutional neural network (Lightweight CNN),a Filtering LSTM-Lightweight CNN arc fault detection model is constructed. The high-frequency coupled signals of multi-load circuits can be simulated through the linear superposition of high-frequency coupled signals from single-load circuits. These analog signals are then used to drive the Filtering LSTM,which filters out unknown features in the multi-load circuit signals and reconstructs the signals. Finally,a Lightweight CNN optimized by the tree-structured Parzen estimator is employed to perform arc fault detection on the reconstructed signals. Experiments demonstrate that the Filtering LSTM-Lightweight CNN achieves an arc fault detection accuracy of 99.45% among 136 000 unknown multi-load circuit samples. Compared with detection algorithms that do not adopt Filtering LSTM,the proposed method improves the detection accuracy by up to 14.05%,significantly enhancing the generalization ability of the arc fault detection model.

Key words: series arc fault, feature filtering, Lightweight convolutional neural network (Lightweight CNN), fault detection

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