CS-RVM and its application in fault diagnosis of power transformers

被引:1
作者
Yin, Jinliang [1 ]
Liu, Lingling [2 ]
机构
[1] School of Automation Engineering, Tianjin University of Technology
[2] Engineering Training Center, Tianjin University of Technology
来源
Dianli Zidonghua Shebei/Electric Power Automation Equipment | 2014年 / 34卷 / 05期
关键词
Cost-sensitive learning; Fault diagnosis; Misclassification cost; Power transformers; Relevance vector machine;
D O I
10.3969/j.issn.1006-6047.2014.05.017
中图分类号
学科分类号
摘要
Since different severities of damage may be induced by misclassification of transformer faults, the classification correctness alone may not be practically meaningful, for which, the CS-RVM (Cost-Sensitive Relevance Vector Machine) is proposed. It takes the minimum misclassification cost as its objective and applies Bayesian risk theory to predict the class of new sample. A typical case is studied to verify its cost sensitivity, based on which, it is adopted to the transformer fault diagnosis. The transformer fault diagnosis based on DGA (Dissolved Gas Analysis) shows that, the global diagnosis correctness of CS-RVM is slightly higher than that of BPNN (BP Neural Network) or SVM (Support Vector Machine) and slightly lower than that of M-RVM, while the diagnosis correctness of CS-RVM for the fault class with higher misdiagnosis cost is higher, showing its cost sensitivity. The diagnosis speed of CS-RVM meets the requirement of projects for transformer fault diagnosis.
引用
收藏
页码:111 / 115
页数:4
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