Transformer fault diagnosis based on bayesian network and hypothesis testing
CSTR:
Author:
Clc Number:

TM86

  • Article
  • | |
  • Metrics
  • |
  • Reference [15]
  • | | | |
  • Comments
    Abstract:

    Accurate diagnosis of power transformer faults is essential to the reliable operation of the power grid. To achieve this goal, this paper proposes a new multiclass probabilistic diagnostic model based on bayesian network and hypothesis testing of dissolved gas analysis. The bayesian network model can embed expert knowledge, learn data patterns from data and infer uncertainties related to diagnosis results, and improve the data selection process through hypothesis testing. Based on the IEC TC10 data set, this paper compares three traditional diagnostic methods to perform diagnostic experiments to verify the effectiveness of the proposed model. The results show that the maximum diagnostic accuracy of the proposed diagnostic model is 88.9%, which is greatly improved compared to traditional diagnostic methods.

    Reference
    [1] 黄春梅,马宏忠,付明星,等.基于混沌理论和KPCM聚类的变压器绕组松动状态监测[J].高压电器,2019,55(1):95-102.HUANG Chunmei,MA Hongzhong,FU Mingxing,et al.Looseness state monitoring of transformer winding based on chaos theoryand KPCM clustering method[J].High Voltage Apparatus,2019,55(1):95-102.
    [2] 徐阳,谢天喜,周志成,等.基于多维度信息融合的实用型变压器故障诊断专家系统[J].中国电力,2017,50(1):85-91.XU Yang,XIE Tianxi,ZHOU Zhicheng,et al.Practical expert system for transformer fault diagnosis based on multidimensional information fusion technology[J].Electric Power,2017,50(1):85-91.
    [3] 康兵,杨勇,李振兴,等.基于实际运行数据的配电变压器故障原因多维度分析[J].智慧电力,2019,47(3):66-70+116.KANG Bing,YANG Yong,LI Zhenxing,et al.Multidimensional analysis of causes of distribution transformer fault based on actual operation data[J].Smart Power,2019,47(3):66-70+116.
    [4] 党东升,张树永,葛鹏江,等.基于改进量子粒子群优化支持向量机的变压器故障诊断方法[J].电力科学与技术学报,2019,34(3):108-113.DANG Dongsheng,ZHANG Shuyong,GE Pengjiang,et al.Transformer fault diagnosis method based on support vector machine optimized by improved quantumbehaved particle swarm optimization[J].Journal of Electric Power Science and Technology,2019,34(3):108-113.
    [5] 程宏波,刘嘉,康嘉斌,等.一种变压器健康状态的改进免疫识别方法[J].电力科学与技术学报,2018,33(2):141-147.CHENG Hongbo,LIU Jia,KANG Jiabin,et al.Improved immune recognition method of transformer health[J].Journal of Electric Power Science and Technology,2018,33(2):141-147.
    [6] Jin Zhuorui,Sun Jian,Yang Qing,et al.A novel transformer winding fault diagnosis method based on damped oscillation wave[J].Journal of Physics:Conference Series,2020,1619(1):52-57.
    [7] Zhao Mingyue.Failure of power transformer and diagnosis method[J].International Core Journal of Engineering,2020,6(7):14-18.
    [8] 朱保军,咸日常,范慧芳,等.WRSR与改进朴素贝叶斯融合的变压器故障诊断技术研究[J].电力系统保护与控制,2021,49(20):120-128.ZHU Baojun,XIAN Richang,FAN Huifang,et al.Transformer fault diagnosis technology based on the fusion of WRSR and improved naive Bayes[J].Power System Protection and Control,2021,49(20):120-128.
    [9] 赵莉华,程胤璋,武立平,等.基于模态分析的变压器铁芯故障诊断[J].电测与仪表,2019,56(11):8-13.ZHAO Lihua,CHENG Yinzhang,WU Liping,et al.Transformer core fault diagnosis based on modal analysis[J].Electrical Measurement & Instrumentation,2019,56(11)8-13.
    [10] 段炼,黄锦增,唐娴,等.基于AttentionRBF神经网络的配电变压器电流骤降点辨识方法[J].供用电,2020,37(12):31-39.DUAN Lian,HUANG Jinzeng,TANG Xian,et al.Identification model of distribution transformer current sag point based on AttentionRBF neural network[J].Distribution & Utilization,2020,37(12):31-39.
    [11] 陈子辉,吴智影,刘贺,等.基于纵横交叉算法的变压器三相不平衡损耗研究[J].电网与清洁能源,2020,36(7):57-63.CHEN Zihui,WU Zhiying,LIU He,et al.Research on threephase unbalanced loss of transformers based on crisscross optimization algorithm[J].Power System and Clean Energy,2020,36(7):57-63.
    [12] Ni Hui,Xu Xiaolu,Gong Hao,et al.Design of fast fault diagnosis system for transformer equipment based on CBR and RBR[J].IOP Conference Series:Earth and Environmental Science,2020,546(5):052004.
    [13] Neapolitan R E.Learning bayesian networks[M].Englewood,CO:Prentice Hall,2004:150-155.
    [14] Huang Xinyi,Huang Xiaoli,Wang Binrong,et al.Fault diagnosis of transformer based on modified grey wolf optimization algorithm and support vector machine[J].IEEJ Transactions on Electrical and Electronic Engineering,2020,15(3):409-417.
    [15] 位一鸣,童力,罗麟,等.基于卷积神经网络的主变压器外观缺陷检测方法[J].浙江电力,2019,38(4):61-68.WEI Yiming,TONG Li,LUO Ling,et al.An exterior defects detecting method of main transformer based on convolutional neural networks[J].Zhejiang Electric Power,2019,38(4):61-68.
    Related
    Cited by
    Comments
    Comments
    分享到微博
    Submit
Get Citation

何宁辉,朱洪波,李秀广,潘亮亮,周秀,倪辉.基于贝叶斯网络和假设检验的变压器故障诊断[J].电力科学与技术学报英文版,2021,36(6):20-27. HE Ninghui, ZHU Hongbo, LI Xiuguang, PAN Liangliang, ZHOU Xiu, NI Hui. Transformer fault diagnosis based on bayesian network and hypothesis testing[J]. Journal of Electric Power Science and Technology,2021,36(6):20-27.

Copy
Share
Article Metrics
  • Abstract:338
  • PDF: 1233
  • HTML: 0
  • Cited by: 0
History
  • Online: January 05,2022
Article QR Code