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Transformer incipient fault diagnosis on the basis of energy-weighted DGA usingan arti cial neural network

机译:基于神经网络的基于能量加权DGA的变压器早期故障诊断

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In this paper, a transformer incipient fault diagnosis model has been developed with the help of an artificial neural network (ANN), taking into account the difference in the energy required to produce the different fault gases. The key fault gases are indicative of the fault type prevailing in the transformer. However, in conventional studies, the energy difference in fault gas formation is not considered while adopting the key gas method for fault diagnosis. In this work, a weighting factor has been used to take into account this relative difference in energy requirement for various fault gas formations. The fault gas concentrations have been suitably weighted by their respective weighting factors before being used in the incipient fault diagnosis process. A backpropagation ANN has been appropriately trained using the weighted fault gas concentration for transformer incipient fault identification. The model has been trained to identify fault types as enlisted in the transformer fault-interpreting standard IEC-599. The developed ANN model has been tested for its diagnostic capability using a reported fault database. The comparative diagnosis results presented here show clear improvement in the diagnosis of transformer internal faults using the energy-weighted ANN model over the unweighted ANN model. Keywords: Power transformer, fault diagnosis, dissolved gas analysis, arti cial neural networks Full Text: PDF.
机译:在本文中,考虑到产生不同故障气体所需能量的差异,借助人工神经网络(ANN)开发了变压器初期故障诊断模型。关键故障气体指示变压器中普遍存在的故障类型。然而,在常规研究中,在采用关键气体方法进行故障诊断时并未考虑断层气体形成中的能量差异。在这项工作中,已使用加权因子来考虑各种断层气形成所需能量的相对差异。在用于早期故障诊断过程之前,已通过其各自的加权因子对故障气体浓度进行了适当的加权。已经使用加权故障气体浓度对逆传播ANN进行了适当的训练,以用于变压器初期故障识别。该模型已经过培训,可以识别变压器故障解释标准IEC-599中列出的故障类型。已开发的ANN模型已使用报告的故障数据库测试了其诊断能力。此处给出的比较诊断结果表明,与未加权的ANN模型相比,使用能量加权的ANN模型可以更好地诊断变压器内部故障。关键词:电力变压器,故障诊断,溶解气体分析,人工神经网络全文:PDF。

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