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Translationally adaptive fuzzy classifier for transformer impulse fault identification

机译:变压器脉冲故障识别的平移自适应模糊分类器

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The determination of transformer fault categories using soft-computing based techniques has been the subject of much research in the recent past. The development of an adaptive fuzzy classifier which can effectively determine various classes or categories of series and shunt impulse faults in a wide range of power transformers is described. The system employs a self-generating module to automatically derive a fuzzy rule base from predefined input and output membership functions (MFs) and a given data set for different fault classes. The accuracy of the system is further improved by translationally adapting output MF(s) either forward or backward, keeping their size and shape invariant. The database for different classes of faults is developed from FFT operation on current and voltage waveforms, obtained for different possible fault conditions simulated for given transformer models (EMTP) using an electromagnetic transients program. This database is used to create training and testing data sets required to design the fuzzy based classifier system. The usefulness of the proposed fuzzy based classifier is demonstrated on the basis of performances shown for four example power transformers of 1 MVA, 3 MVA, 5 MVA and 60 MVA ratings.
机译:近年来,使用基于软计算的技术确定变压器故障类别一直是许多研究的主题。描述了一种自适应模糊分类器的开发,该分类器可以有效地确定各种电力变压器中的串联和并联冲击故障的各种类别或类别。该系统采用了一个自生成模块,可以根据预定义的输入和输出隶属度函数(MF)和针对不同故障类别的给定数据集自动得出模糊规则库。通过向前或向后平移输出MF,使其尺寸和形状保持不变,可以进一步提高系统的精度。不同类别故障的数据库是根据电流和电压波形的FFT操作开发的,该波形是使用电磁瞬变程序针对给定变压器模型(EMTP)模拟的不同可能故障条件而获得的。该数据库用于创建设计基于模糊的分类器系统所需的训练和测试数据集。基于所示的四个额定功率为1 MVA,3 MVA,5 MVA和60 MVA的示例电力变压器的性能,论证了所提出的基于模糊的分类器的有效性。

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