Research on fault diagnosis for power transformer based on random forests and wavelet transform

被引:1
作者
Zhang M. [1 ]
Fang C. [1 ]
Ji S. [1 ]
机构
[1] State Grid Jilin Electric Power Co., Ltd., Siping Power Supply Company, Jilin, Siping
关键词
fault diagnosis; power transformer; random forests; wavelet transform;
D O I
10.1504/IJWMC.2024.138857
中图分类号
学科分类号
摘要
Transformers are electrical equipment widely used in power systems and electronic circuits. In order to improve the accuracy of power transformer fault diagnosis and condition monitoring, this paper proposes a fault diagnosis method for power transformers based on Random Forests (RFs) and wavelet transform. Firstly, the wavelet transform method is adopted to decompose the noisy vibration signal into multi-scales, and then the detailed signals at different scales are processed to achieve fault feature extraction of the power transformer vibration signals. Secondly, the mapping relationship between fault features and fault types of vibration signals is established by RFs algorithm, and the fault diagnosis model is trained by RFs algorithm. Finally, by identifying the experimental data of the normal and fault states of the power transformers, the accuracy reached 96.52%, which is suitable for monitoring and diagnosing the different working states of the power transformers. © 2024 Inderscience Enterprises Ltd.
引用
收藏
页码:354 / 360
页数:6
相关论文
共 29 条
  • [1] Ahmadi S-A., Sanaye-Pasand M., Abedini M., Samimi M.H., Online sensitive turn-to-turn fault detection in power transformers, IEEE Transactions on Industrial Electronics, 69, 12, pp. 13555-13564, (2022)
  • [2] Akbari M., Rezaei-Zare A., Cheema M.A.M., Kalicki T., Air gap inductance calculation for transformer transient model, IEEE Transactions on Power Delivery, 36, 1, pp. 492-494, (2021)
  • [3] Bagheri M., Zollanvari A., Nezhivenko S., Transformer fault condition prognosis using vibration signals over cloud environment, IEEE Access, 6, pp. 9862-9874, (2018)
  • [4] Chen Z., Zhou Q., Ding G., Wu X., Wu J., Zhang Y., Influence of magnetic state variation on transformer core vibration characteristics and its measurement, IEEE Transactions on Instrumentation and Measurement, 71, pp. 1-8, (2022)
  • [5] Demirci M., Gozde H., Taplamacioglu M.C., Improvement of power transformer fault diagnosis by using sequential Kalman filter sensor fusion, International Journal of Electrical Power and Energy Systems, 149, (2023)
  • [6] Gao S., Wang J., Yu L., Et al., A multilayer Bayesian network approach-based predictive probabilistic risk assessment for overhead contact lines under external weather conditions, IEEE Transactions on Transportation Electrification, 9, 1, pp. 236-253, (2023)
  • [7] Hong K., Jin M., Huang H., Transformer winding fault diagnosis using vibration image and deep learning, IEEE Transactions on Power Delivery, 36, 2, pp. 676-685, (2021)
  • [8] Ji T.Y., Mo C., Zhang L.L., Wu Q.H., Duty cycle-based differential protection scheme for power transformers, IEEE Transactions on Power Delivery, 37, 3, pp. 1380-1390, (2022)
  • [9] Kou L., Liu C., Cai G., Zhou J., Et al., Data-driven design of fault diagnosis for three-phase PWM rectifier using random forests technique with transient synthetic features, IET Power Electronics, (2020)
  • [10] Kou L., Wu J., Zhang F., Image encryption for offshore wind power based on 2D-LCLM and Zhou Yi Eight Trigrams, International Journal of Bio-Inspired Computation, 22, 1, pp. 53-64, (2023)