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Discrimination between Inrush and Fault in Transformer: ANN Approach

机译:变压器涌流和故障的判别:ANN方法

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Transformer protection is critical issue in power system as the issue lies in the accurate and rapid discrimination of magnetizing inrush current from internal fault current. Artificial neural network has been proposed and has demonstrated the capability of solving the transformer monitoring and fault detection problem using an inexpensive, reliable, and noninvasive procedure. This paper gives algorithm where statistical parameters of detailed d1 level wavelet coefficients of signal are used as an input to the artificial neural network (ANN), which develops in to a novel approach for online detection method to discriminate the magnetizing inrush current and inter-turn fault, and even the location of fault i.e. whether the interturn fault lies in primary winding or secondary winding through the use of discrete wavelet transform and artificial neural-nets (ANNs). A custom-built single-phase transformer was used in the laboratory to collect the data from controlled experiments. After the feature extraction using discrete wavelet transform (DWT), a neural network models MLP has been designed and trained rigorously. The proposed on line detection scheme is also discussed.
机译:变压器保护是电力系统中的关键问题,因为该问题在于准确快速地将励磁涌流与内部故障电流区分开。已经提出了人工神经网络,并且已经证明了使用廉价,可靠且无创的程序解决变压器监视和故障检测问题的能力。本文提出了将信号的详细d1级小波系数统计参数用作人工神经网络(ANN)输入的算法,该算法发展成为一种在线检测方法的新方法,该方法可识别励磁涌流和匝间故障,甚至是故障的位置,即通过使用离散小波变换和人工神经网络(ANN),匝间故障位于初级绕组还是次级绕组。实验室中使用了定制的单相变压器来收集受控实验的数据。使用离散小波变换(DWT)提取特征后,已对神经网络模型MLP进行了严格的设计和训练。还讨论了所提出的在线检测方案。

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