Gas-insulated switch-gear mechanical fault detection based on acoustic feature analysis using a multi-state pre-trained neural network

Zhihua Wang, Zipeng Zhang, Yuying Shao, Kun Qian, Houguang Liu, Bin Hu, Björn W. Schuller

Research output: Contribution to journalArticlepeer-review

Abstract

The acoustic-based approach is a prevalent way for non-contact fault diagnosis on gas-insulated switch-gear (GIS). GIS always works under different voltages causing great diversity in acoustic frequency. However, based on the frequency principle, neural networks always focus on a specific frequency, which challenges robust fault detection on GIS. This paper introduces a novel multi-stage training method to improve the robustness of fault detection on GIS. The proposed method consists of three components: a multi-channel based frequency regressor (MCBFR), an audio spectrogram transformer auto-encoder (AST-AE), and a feature interaction module (FIM). MCBFR and AST-AE are optimised to extract specific features from acoustics during the pre-training stage. The FIM fuses components extracted by MCBFR and AST when training the model that can indicate the final result. Also, we apply a multi-stage training strategy during the training stage to reduce the cost of potential model retraining. The efficacy of the proposed method was validated using experimental data from a real GIS, and it shows competitive performance in fault detection compared to existing methods.

Original languageEnglish
Article number076121
JournalMeasurement Science and Technology
Volume35
Issue number7
DOIs
StatePublished - Jul 2024

Keywords

  • audio spectrogram transformer
  • auto-encoder
  • fault diagnosis
  • gas-insulated switch-gear

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