Journal of shanghai Jiaotong University (Science) ›› 2015, Vol. 20 ›› Issue (3): 353-357.doi: 10.1007/s12204-015-1636-5
Previous Articles Next Articles
REN Fang-yu (任方宇), SI Shu-bin* (司书宾), CAI Zhi-qiang (蔡志强), ZHANG Shuai (张帅)
Published:
2015-06-11
Contact:
SI Shu-bin (司书宾)
E-mail:sisb@nwpu.edu.cn
CLC Number:
REN Fang-yu (任方宇), SI Shu-bin* (司书宾), CAI Zhi-qiang (蔡志强), ZHANG Shuai (张帅). Transformer Fault Analysis Based on Bayesian Networks and Importance Measures[J]. Journal of shanghai Jiaotong University (Science), 2015, 20(3): 353-357.
[1] | Shrivastava K, Choubey A. Data mining approach with IEC based dissolved gas analysis for fault diagnosis of power transformer [J]. International Journal of Engineering Research and Technology, 2013,2(3): 1-11. |
[2] | Liu C H, Chen T L, Yao L T, et al. Using data mining to dissolved gas analysis for power transformer fault diagnosis [C]//Proceedings of the 2012 International Conference on Machine Learning and Cybernetics.Xi’an, China: IEEE, 2012: 1952-1957. |
[3] | Zhu Y L, Huo L M, Lu J L. Bayesian networks-based approach for power systems fault diagnosis [J]. IEEE Transactions on Power Delivery, 2006, 21(2): 634-639. |
[4] | Xie S Y, Peng X F, Zhong X Y, et al. Fault diagnosis of the satellite power system based on the Bayesian network [C]//Proceedings of the 8th International Conference on Computer Science and Education. Colombo,Sri Lanka: IEEE, 2013: 1004-1008. |
[5] | Li S M, Si S B, Xing L D, et al. Integrated importance of multi-state fault tree based on multi-state multi-valued decision diagram [J]. Journal of Risk and Reliability, 2014, 228(2): 200-208. |
[6] | Si S B, Liu G M, Cai Z Q, et al. Using Bayesian networks to build a diagnosis and prognosis model for breast cancer [C]//Proceedings of the 18th International Conference on Industrial Engineering and Engineering Management. Changchun, China: IEEE, 2011:1795-1799. |
[7] | Xie Q, Zeng H, Ruan L, et al. Transformer fault diagnosis based on Bayesian network and rough set reduction theory [C]//Proceedings of the 2013 IEEE TENCON Spring Conference. Sydney, Australia:IEEE, 2013: 262-266. |
[8] | Baesens B, Vertraeten G, van den Poel D, et al.Bayesian network classifiers for identifying the slope of the customer lifecycle of long-life customers [J]. European Journal of Operational Research, 2004, 156(2):508-523. |
[9] | Friedman N, Geiger D, Goldszmidt M. Bayesian network classifiers [J]. Machine Learning, 1997, 29(2-3): 131-163. |
[10] | Kuo W, Zhu X Y. Some recent advances on importance measure in reliability [J]. IEEE Transactions on Reliability, 2012, 61(2): 344-360. |
[1] | XU Yong, CAI Yunze, SONG Lin. Review of Research on Condition Assessment of Nuclear Power Plant Equipment Based on Data-Driven [J]. Journal of Shanghai Jiao Tong University, 2022, 56(3): 267-278. |
[2] | LIU Xiuli, XU Xiaoli. A Fault Diagnosis Method Based on Feature Pyramid CRNN Network [J]. Journal of Shanghai Jiao Tong University, 2022, 56(2): 182-190. |
[3] | NIE Rui, WANG Hongru. Fault Diagnosis of UAV Formation Actuator Based on Neural Network Observer [J]. Air & Space Defense, 2022, 5(2): 32-41. |
[4] | MA Hangyu, ZHOU Di, WEI Yujie, WU Wei, PAN Ershun. Intelligent Bearing Fault Diagnosis Based on Adaptive Deep Belief Network Under Variable Working Conditions [J]. Journal of Shanghai Jiao Tong University, 2022, 56(10): 1368-1377. |
[5] | MA Guohong (马国红), LI Jian (李健), HE Yinshui (何银水), XIAO Wenbo (肖文波). Weld Geometry Monitoring for Metal Inert Gas Welding Process with Galvanized Steel Plates Using Bayesian Network [J]. J Shanghai Jiaotong Univ Sci, 2021, 26(2): 239-244. |
[6] | HU Xiaoqiang,ZHONG Xunyu,ZHANG Xiaoli,PENG Xiafu,HE Ying. A Two-Level Fault Diagnosis Method for Gyro-Quadruplet Assisted by Support Vector Machine [J]. Journal of Shanghai Jiaotong University, 2020, 54(11): 1151-1156. |
[7] | SONG Simeng (宋思蒙), CHEN Xiaoxin (陈孝信), QIAN Yong (钱勇), WANG Hui (王辉), ZHANG Yue (张悦), SHENG Gehao (盛戈皞), JIANG Xiuchen (江秀臣). Research on Time-Domain Transfer Impedance Measurement Technology for High Frequency Current Transformers in Partial Discharge Detection of Cables [J]. J Shanghai Jiaotong Univ Sci, 2020, 25(1): 10-17. |
[8] | LI Dan (李丹), WANG Hongdong (王鸿东), LIANG Xiaofeng *(梁晓锋). Bayesian Network Based Approach for Diagnosis of Modified Sequencing Batch Reactor [J]. Journal of Shanghai Jiao Tong University (Science), 2019, 24(4): 417-429. |
[9] | LU Cheng,XU Tingxue,WANG Hong. Fault Diagnosis of Terminal Guidance Radar Based on Attribute Granulation Clustering and Echo State Network [J]. Journal of Shanghai Jiaotong University, 2018, 52(9): 1112-1119. |
[10] | YU Kun (俞昆), TAN Jiwen (谭继文), LIN Tianran (林天然). Fault Diagnosis of Rolling Element Bearing Using Multi-Scale Lempel-Ziv Complexity and Mahalanobis Distance Criterion [J]. Journal of Shanghai Jiao Tong University (Science), 2018, 23(5): 696-701. |
[11] | DENG Shijie (邓士杰), TANG Liwei (唐力伟), ZHANG Xiaotao (张晓涛). Research of Adaptive Neighborhood Incremental Principal Component Analysis and Locality Preserving Projection Manifold Learning Algorithm [J]. Journal of Shanghai Jiao Tong University (Science), 2018, 23(2): 269-275. |
[12] | JIN Zhijian,HONG Zhiyong,ZHAO Yue,LI Zhuyong,HUANG Zhen,WU Wei,ZHANG Zhiwei,LI Xiaofen,YAO Linpeng,SHENG Jie. Review of Technology and Development in the Power Applications Based on Second-Generation High-Temperature Superconductors [J]. Journal of Shanghai Jiaotong University, 2018, 52(10): 1155-1165. |
[13] |
JIA Lei,DONG Wei,SUN Xinya,JI Yindong,CHEN Hua.
Soft Faults Diagnosis of Track Circuit with Tolerance Based on NodeVoltage Increments [J]. Journal of Shanghai Jiaotong University, 2017, 51(6): 679-685. |
[14] | WU Bin1* (吴斌), XI Lifeng2 (奚立峰), FAN Sixia1 (范思遐), ZHAN Jian1 (占健). Fault Diagnosis for Wind Turbine Based on Improved Extreme Learning Machine [J]. Journal of shanghai Jiaotong University (Science), 2017, 22(4): 466-473. |
[15] | LIU Yinhua1* (刘银华), YE Xialiang1 (叶夏亮), JIN Sun2 (金隼). A Bayesian Based Process Monitoring and Fixture Fault Diagnosis Approach in the Auto Body Assembly Process [J]. Journal of shanghai Jiaotong University (Science), 2016, 21(2): 164-172. |
Viewed | ||||||
Full text |
|
|||||
Abstract |
|
|||||