DocumentCode :
1777347
Title :
Transformer fault diagnosis based on improved fuzzy ISODATA algorithm
Author :
Zheng Xiao-Li ; Wang Shen-Qiang ; Cao Yan-Zhao ; Wei Lei-Yuan
Author_Institution :
Maoming Power Supply Bur., Guangdong Power Grid Co., Maoming, China
fYear :
2014
fDate :
20-22 Oct. 2014
Firstpage :
1279
Lastpage :
1286
Abstract :
Dissolved Gas Analysis (DGA) has already gained its popularity in fault diagnosis for the oil-immersed transformers. However, owing to the fuzziness and uncertainty between the failure phenomena and failure mechanisms, power equipment failure reasons are very complicated and the accuracy of existing algorithms is low. Diagnostic methods based on artificial intelligence are commonly introduced in the field above. Because of the complexity of the network, the speed of the algorithm convergence is badly affected. With the limitation of artificial guidance and expertise, the current algorithms are short of the self-learning ability. That is why there is no common diagnostic program can be formed. Based on this reason, the Iterative Self-Organizing Data Analysis Techniques Algorithm (ISODATA) based on DGA is proposed. First, the feasibility of transformer fault diagnosis method based on the ISODATA and DGA are analyzed, as well as its limitations. In order to improve the efficiency of the algorithm, a genetic algorithm is introduced to optimize the transformer fault diagnosis model by reducing the dependence of the initial clustering for ISODATA based on DGA. Through these methods, the accuracy and efficiency of optimizing diagnosis are improved. With the analysis of the principles of fuzzy ISODATA algorithm and genetic algorithm, and the optimization the initial cluster centers on ISODATA algorithm, the feasibility of the optimized transformer fault diagnosis program is proved. Finally, a specific case is programmed and compared to prove its accuracy and efficiency by analysis and comparing indicators before and after improvement. It is shown in the experimental comparison that the number of iterations is less after the improvement with the same precision and the operating speed is faster with the less error. The results showed that the fuzzy ISODATA algorithm optimized by the genetic algorithms is more in line with actual needs by largely overcoming the dependence on - nitial cluster center and can be easily applied to oil-immersed transformer fault diagnosis.
Keywords :
chemical analysis; fault diagnosis; fuzzy set theory; genetic algorithms; pattern clustering; power engineering computing; transformer oil; DGA; algorithm convergence; artificial intelligence; dependence reduction; dissolved gas analysis; failure mechanisms; failure phenomena; fuzziness; genetic algorithm; improved fuzzy ISODATA algorithm; initial cluster centers; oil-immersed transformer fault diagnosis method; power equipment failure reasons; Algorithm design and analysis; Clustering algorithms; Fault diagnosis; Genetic algorithms; Oil insulation; Power transformer insulation; DGA; clustering optimization; fault diagnosis; fuzzy ISODATA; genetic algorithm; transformer;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Power System Technology (POWERCON), 2014 International Conference on
Conference_Location :
Chengdu
Type :
conf
DOI :
10.1109/POWERCON.2014.6993582
Filename :
6993582
Link To Document :
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