支持向量机在溶解气体分析下的变压器诊断

A. Mehta, R. N. Sharma, S. Chauhan, S. Saho
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引用次数: 33

摘要

电力变压器是电力系统中的重要设备。因此,电力变压器的任何故障都可能导致供电中断,由此造成的经济损失也将是巨大的。因此,及早发现变压器的早期故障是十分重要的。在现有的早期断层识别方法中,溶解气体分析(DGA)是最常用和最成功的方法。变压器内部的任何一种故障都会引起过热,并在变压器油中产生特征量的气体。本文首先对关键气体法、罗杰斯比法和杜瓦尔三角法等经典的诊断方法进行了综述,并论证了与人工智能(AI)方法相结合以提高诊断性能的必要性。本文提出了一种基于溶解气体分析的变压器故障诊断的新型高效人工智能技术——支持向量机(SVM)。所提出的方法即支持向量机是一种基于统计学习理论的分类工具。本文采用一对一、一对全和二叉决策树三种多类支持向量机方法进行故障诊断。每种支持向量机方法都经过了大量电力变压器实际故障数据的训练和测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transformer diagnostics under dissolved gas analysis using Support Vector Machine
Power transformer is vital equipment in any electrical power system. So any fault in the power transformer may lead to the interruption of power supply and accordingly the financial losses will also be great. So it is important to detect the incipient faults of transformer as early as possible. Among the existing methods for identifying the incipient faults, dissolved gas analysis (DGA) is the most popular and successful method. Any kind of fault inside transformer gives rise to overheating and will produce characteristics amount of gases in transformer oil. In this paper classical methods of DGA such as Key Gas Method, Rogers Ratio Method and Duval Triangle Method are reviewed first and the need to integrate with the artificial intelligence (AI) methods for improving the performance of diagnosis is justified. Reported work presents a new and efficient artificial intelligence technique that is support vector machine (SVM) for transformer fault diagnosis using dissolved gas analysis. The proposed method i.e. Support Vector Machine is a classification tool based on statistical learning theory. Here 3 types of multiclass SVM method that is One - against-One, One-against-All and binary decision tree have been used for the fault diagnosis. Each SVM method has been trained and tested with many practical fault data of power transformers.
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