会议专题

A Fault Diagnosis Method for Power Transformer Using Bayesian Data Analysis

This paper presents a fault diagnosis method for power transformer. Fault diagnosis plays an importance role in the efforts for transformer diagnosis to shift form“preventive maintenance to “condition based maintenance (CBM), and consequently to reduce the maintenance cost. Ever since its birth, numerous techniques have been researched in this field, each method however, has its own advantages and disadvantages. Fault diagnosis is a challenging problem because there are numerous fault situations that can possibly happen to a electrical transformer. Temperature is one of the most importance parameters for the diagnosis of electrical transformers fault situation. Based on the appearance information of temperature, a fault monitoring system can make diagnosis intelligently, therefore it can provide a rapid scientific treatment options for the field staff. For the problem of transformer fault diagnosis based on temperature information, we use Bayesian probability density theory method to explain the equipment fault diagnosis results. The maximum membership probability principle will be adapted to judge whether the equipment is malfunctioning. The results shows that when the working temperature is between 64-72°C, the diagnosis results without compensation is working on normal state, while the diagnosis results with compensation is general fault state. Therefore, the diagnosis results without compensation have large error with the actual situation. The proposed methodology in this paper was testified having important significance in improving the reliability and the information level of transformer operation.

transformers Bayesian probability density theory fault diagnosis

Cui Haoyang Tang Zhong Fang Yong Liu Jun Ye Bo

School of Computer Science and Information Engineering Shanghai University of Electric Power Shangha School of Computer Science and Information Engineering Shanghai University of Electric Power Shangha School of Communication and Information Engineering Shanghai University Shanghai China Hangzhou Qianjiang River Electic Group Co., Ltd Hangzhou China

国际会议

2010 3rd IEEE International Conference on Computer Science and Information Technology(第三届IEEE计算机科学与信息技术国际会议 ICCSIT 2010)

成都

英文

567-570

2010-07-07(万方平台首次上网日期,不代表论文的发表时间)