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Detecting Winding to Ground Fault Locations in Power Transformers Using Back-propagation Neural Networks

机译:使用反向传播神经网络检测电力变压器的接地故障位置绕组

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This paper presents an algorithm based on a combination of Discrete Wavelet Transforms and neural networks for detecting locations of winding to ground faults in a two-winding three-phase transformer. The fault conditions of the transformer are simulated using ATP/EMTP in order to obtain fault current signals used as an input for a training process of a back-propagation neural network. The training process and fault diagnosis decision algorithm are implemented using toolboxes on MATLAB/Simulink. Various cases studies based on Thailand electricity transmission and distribution systems are performed to verify the validity of the algorithm. It is found that the proposed method gives a satisfactory accuracy, and will be particularly useful in a fault diagnosis process for a transformer manufacturer.
机译:本文介绍了一种基于离散小波变换和神经网络的组合的算法,用于检测两个绕组三相变压器中缠绕到接地故障的位置。使用ATP / EMTP模拟变压器的故障条件,以便获得用作背部传播神经网络的训练过程的输入的故障电流信号。使用MATLAB / SIMULINK上的工具箱实现培训过程和故障诊断决策算法。根据泰国电力传输和分配系统进行各种案例研究以验证算法的有效性。结果发现,该方法提供了令人满意的精度,并且在变压器制造商的故障诊断过程中特别有用。

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