Investigation on machine learning algorithms to support transformer dissolved gas analysis fault identification

被引:16
|
作者
Ekojono [1 ]
Prasojo, Rahman Azis [2 ]
Apriyani, Meyti Eka [1 ]
Rahmanto, Anugrah Nur [1 ]
机构
[1] Politekn Negeri Malang, Informat Technol Dept, Malang 65141, Indonesia
[2] Politekn Negeri Malang, Elect Engn Dept, Malang 65141, Indonesia
关键词
Dissolved gas analysis; Power transformers; Machine learning; Fault identification; IN-OIL ANALYSIS; IEC TC 10; DUVAL TRIANGLE; SYSTEM; SCHEME;
D O I
10.1007/s00202-022-01532-5
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Dissolved gas analysis (DGA) is a powerful tool to monitor the condition of a power transformer. Several interpretation methods have been proposed, one of the most reliable of which is the graphical Duval triangle method (DTM). The method consists of several triangles, which still requires expertise for fault identification. The use of computer-based technology has been implemented in recent years to support transformer fault identification. However, no study has done thorough investigation on the use of suitable machine learning algorithm for the ML-based implementation of this matter. This study examines six commonly used machine learning algorithms to support DGA fault identification of power transformer: decision tree, support vector machine, random forest (RF), neural network, Naive Bayes, and AdaBoost. Three DGA fault identification methods for mineral oil insulated transformer were studied, namely DTM1, DTM4, and DTM5. The training and testing datasets were generated for each DGA method, and trained to each ML algorithm. The tenfold cross validation was used to evaluate the results using five criteria, namely classification accuracy, area under curve, F1, Precision, and Recall. RF models demonstrated the best performance in classifying fault codes of most DGA methods. A validation was carried out using the validation dataset, comparing the selected RF-based models to the graphical DGA fault identification. The combination method was also implemented in the developed model. The results show that the proposed model is reliable, and especially useful to be used for fault identification of a large number of transformer populations.
引用
收藏
页码:3037 / 3047
页数:11
相关论文
共 50 条
  • [31] Statistical Machine Learning and Dissolved Gas Analysis: A Review
    Mirowski, Piotr
    LeCun, Yann
    IEEE TRANSACTIONS ON POWER DELIVERY, 2012, 27 (04) : 1791 - 1799
  • [32] Rogers ratio test for fault diagnosis of transformer using dissolved gas analysis
    Khanna A.
    Bisht P.
    Materials Today: Proceedings, 2022, 71 : 243 - 246
  • [33] Feature Selection in Power Transformer Fault Diagnosis based on Dissolved Gas Analysis
    Samirmi, Farhad Davoodi
    Tang, Wenhu
    Wu, Henry
    2013 4TH IEEE/PES INNOVATIVE SMART GRID TECHNOLOGIES EUROPE (ISGT EUROPE), 2013,
  • [34] Investigate Transformer Fault Diagnosis Performance of Dissolved Gas Analysis with Measurement Error
    Wei, Chenghao
    Long, Hao
    Yan, Long
    ELECTRIC POWER COMPONENTS AND SYSTEMS, 2017, 45 (08) : 894 - 904
  • [35] Transformer fault diagnosis using Dissolved Gas Analysis technology and Bayesian networks
    Lakehal, A.
    Ghemari, Z.
    Saad, S.
    2015 4TH INTERNATIONAL CONFERENCE ON SYSTEMS AND CONTROL (ICSC), 2015, : 194 - 198
  • [36] Dissolved gas analysis based on GA and FCM for power transformer fault diagnosis
    Nanjing University of Aeronautics and Astronautics, Nanjing 210006, China
    不详
    Dianli Zidonghua Shebei / Electric Power Automation Equipment, 2008, 28 (02): : 15 - 18
  • [37] Maximum Likelihood Classification for Transformer Fault Diagnosis Using Dissolved Gas Analysis
    Sreelakshmi, S. M.
    Tharamal, Lakshmi
    Preetha, P.
    2021 IEEE ELECTRICAL INSULATION CONFERENCE (EIC), 2021, : 381 - 384
  • [38] Enhance fault identification in rotary equipment using Machine Learning algorithms
    Sangeetha, V
    Chaudhari, Shilpa Shashikant
    Tanupriya, R.
    Theertha, K.
    Varsha, S. D.
    Vishnupriya, C.
    2024 5TH INTERNATIONAL CONFERENCE ON INNOVATIVE TRENDS IN INFORMATION TECHNOLOGY, ICITIIT 2024, 2024,
  • [39] Fault Detection and Identification of Transformer Based on Dynamical Network Marker Model of Dissolved Gas in Oil
    Zhang Y.
    Fang R.
    Fang, Ruiming (fangrm@126.com), 1600, China Machine Press (35): : 2032 - 2041
  • [40] A Comparative Study of Power Transformer Winding Fault Diagnosis Using Machine Learning Algorithms
    Dlamini, G. A. Z.
    Thango, B. A.
    Bokoro, P. N.
    2024 32ND SOUTHERN AFRICAN UNIVERSITIES POWER ENGINEERING CONFERENCE, SAUPEC, 2024, : 26 - 30