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Fault classification in power transformer using polarization depolarization current analysis

机译:基于极化去极化电流分析的电力变压器故障分类

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The decomposition of insulation structure due to ageing and faults in transformer will changes its material properties, i.e. material conductivity and its charging and discharging current behavior. The primary aim of this work is to investigate effect of faults in transformer on polarization and depolarization current spectra. This paper also utilized Artificial Neutral Network (ANN) to identify each spectrum characteristic for faults identification purposed. The insulation oil from in-service power transformers with normal and different fault conditions were sampled and tested for Dissolved Gases Analysis (DGA) and Polarization and Depolarization Current (PDC) Analysis. The result shows that transformers with normal, partial discharge, overheating and arcing fault can be identified based on its polarization and depolarization current pattern. The ANN study had found that the faults identification is more accurate when using depolarization current compared with polarization current. A detailed analysis has demonstrated that depolarization current can provide more detailed information on the condition of transformer.
机译:由于变压器的老化和故障而导致的绝缘结构的分解将改变其材料特性,即材料的电导率及其充电和放电电流行为。这项工作的主要目的是研究变压器故障对极化和去极化电流谱的影响。本文还利用人工神经网络(ANN)来识别用于故障识别的每个频谱特征。对正常和不同故障条件下的在役电力变压器的绝缘油进行了采样和测试,以进行溶解气体分析(DGA)和极化和去极化电流(PDC)分析。结果表明,根据其极化和去极化电流模式,可以识别出具有正常,局部放电,过热和电弧故障的变压器。 ANN研究发现,与极化电流相比,使用去极化电流时的故障识别更为准确。详细的分析表明,去极化电流可以提供有关变压器状况的更多详细信息。

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