Artificial neural network based identification of deviation in frequency response of power transformer windings

Ketan R. Gandhi, K. Badgujar
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引用次数: 12

Abstract

Deformations in windings can be diagnosed by a reliable and powerful method called sweep frequency response analysis (SFRA). In this work the deviation in the frequency response plots is derived in terms of statistical indicators. Nine statistical indicators have been used for the purpose. These indicators, then, complemented using artificial neural network approach, to derive a useful conclusion regarding the deviation based on the frequency responses. Winding deformation case data along with healthy transformer case data have been used to train a multilayer feed-forward neural network with the backpropagation algorithm. The trained neural network can help an expert to analyse statistical indicators to verify the level of deviation and in turn the level of deformation.
基于人工神经网络的电力变压器绕组频响偏差识别
扫描频响分析(SFRA)是一种可靠而有效的方法,可用于诊断绕组的变形。在这项工作中,频率响应图的偏差是根据统计指标推导出来的。为此目的使用了九项统计指标。然后,使用人工神经网络方法对这些指标进行补充,得出关于基于频率响应的偏差的有用结论。利用绕组变形情况数据和变压器健康情况数据,用反向传播算法训练多层前馈神经网络。经过训练的神经网络可以帮助专家分析统计指标来验证偏差的程度,进而验证变形的程度。
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