Investigation on Transformer Oil Parameters Using Support Vector Machine

Birender Singh, A. H. Kumar, C. Reddy
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引用次数: 1

Abstract

Machine Learning has been used to predict the transformer oil parameters by using data obtained from Megger tests and transformer oil test. The relationship among the measured insulation resistance (among distribution transformer’s low tension winding, high tension winding and ground) with breakdown strength, acidity, water content, and interfacial tension of transformer oil is modeled for the prediction. Support Vector Machine is the algorithm used for the prediction of the parameters. A cascaded network approach has been used where stage-wise division has been done to obtain different parameters depending on their correlation with each other. The cascaded network takes insulation resistances as input to predict breakdown and interfacial tension which are further used along with colour as input to predict water content which is further used to predict the acidity. Even though there was a lack of sufficient dataset for training the network the results seemed to be promising. Testing data was used to verify the network and the results were good as evident from the confusion matrices obtained. Therefore it is concluded that SVM is a good technique to predict transformer oil parameters with accuracy.
基于支持向量机的变压器油参数研究
利用兆赫试验和变压器油试验数据,利用机器学习技术对变压器油参数进行预测。建立了实测绝缘电阻(配电变压器低压绕组、高压绕组和接地之间的绝缘电阻)与击穿强度、酸度、含水率和变压器油界面张力之间的关系模型进行预测。支持向量机是用于参数预测的算法。采用级联网络方法,通过逐级划分,根据参数之间的相关性获得不同的参数。级联网络将绝缘电阻作为输入来预测击穿和界面张力,并将其与颜色一起作为输入来预测水的含量,水的含量进一步用于预测酸度。尽管缺乏足够的数据集来训练网络,但结果似乎很有希望。用测试数据对网络进行了验证,得到的混淆矩阵显示出良好的结果。因此,支持向量机是一种较好的变压器油参数准确预测技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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