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Study on Fault Diagnosis for Power Transformer Based on Cloud Matter Element Analysis Principle and DGA

机译:基于云物元分析原理和DGA的电力变压器故障诊断研究

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摘要

Dissolved gas-in-oil analysis (DGA) is an important method to find the hidden or incipient insulation faults of oil-immersed power transformer. Matter element theory was employed to research the fault diagnosis of transformer with qualitative and quantity advantages. However, the method did not consider the uncertain essence of the fault diagnosis of transformer. And in the fact, there were two uncertain characteristic in it, random and fuzzy. Hence a new fault diagnosis method is presented in this paper. The method has two advantages of considering two uncertain characteristic and realizing fault diagnosis qualitatively and quantitatively based on cloud model and matter element theory. By building the cloud matter element models of transformer fault diagnosis and calculating the correlation function of feature matter element models and standard ones, fault modes of transformer are identified effectively. Then, the results of examples research indicate the method is effective.
机译:溶解油中气体分析(DGA)是发现油浸式电力变压器隐患或初期绝缘故障的重要方法。利用物元理论,从质和量两方面研究了变压器的故障诊断方法。但是,该方法没有考虑变压器故障诊断的不确定性。实际上,它具有两个不确定的特征:随机和模糊。因此,本文提出了一种新的故障诊断方法。该方法具有考虑两个不确定性特征,基于云模型和物元理论定性,定量实现故障诊断的两个优点。通过建立变压器故障诊断的云物元模型,并计算特征物元模型和标准物元模型的相关函数,可以有效地识别变压器的故障模式。然后,实例研究结果表明该方法是有效的。

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