Integrated Intelligent Energy ›› 2026, Vol. 48 ›› Issue (2): 59-67.doi: 10.3969/j.issn.2097-0706.2026.02.006

• Power System Intelligent Control and Data Analysis • Previous Articles     Next Articles

Transformer fault diagnosis method based on multiple-level denoising and recursive graph

ZHANG Ping1(), WU Zhang2(), LIU Feng3(), LIU Feng2(), LI Jian4,*()   

  1. 1. Yuhang District Power Supply CompanyState Grid Zhejiang Electric Power Company LimitedHangzhou 311100, China
    2. Yuhang Qunli Complete Electrical Manufacturing BranchHangzhou Electric Power Equipment Manufacturing Company LimitedHangzhou 311100, China
    3. Linping District Power Supply CompanyState Grid Zhejiang Electric Power Company LimitedHangzhou 311199, China
    4. College of Mechanical EngineeringNortheast Electric Power UniversityJilin 132012, China
  • Received:2025-02-24 Revised:2025-05-01 Published:2026-02-25
  • Contact: LI Jian E-mail:180793377@qq.com;qlgq2023@163.com;guoqiang@hzqunli.com.cn;15957132342@163.com;smxx43ban20@163.com
  • Supported by:
    Science and Technology Development Program of Jilin Province(20220508014RC)

Abstract:

To address the challenges of extracting features from transformer vibration signals under noise interference conditions and the low utilization of temporal information,a fault diagnosis method combining multi-level denoising and recurrence plots is proposed. Multi-level denoising of the vibration signals was achieved through complete ensemble empirical mode decomposition with adaptive noise(CEEMDAN)combined with adaptive wavelet thresholding. Recurrence analysis was then used to transform the time-series signals into recurrence plots,preserving temporal dependencies and nonlinear dynamic features. A convolutional neural network(CNN)was employed to leverage its strengths in image processing,using the recurrence plots as inputs to extract spatial features,thereby enabling transformer fault diagnosis. The results show that the proposed method achieves a low false alarm rate and a diagnostic accuracy of 98.125%,demonstrating its effectiveness for diagnosing transformer faults based on vibration signals.

Key words: transformer, fault diagnosis, deep learning, multi-level denoising, complete ensemble empirical mode decomposition with adaptive noise, recurrence analysis, convolutional neural network

CLC Number: