Numerical differential protection of power transformer using ANN as a pattern classifier

H. Balaga, D. N. Vishwakarma, Amrita Sinha
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引用次数: 11

Abstract

This paper presents the use of ANN as a pattern classifier for differential protection of power transformer, which makes the discrimination among normal, magnetizing inrush, over-excitation, external fault and internal fault currents. This scheme has been realized through two ANN architectures, which are designed and trained using feed forward back propagation algorithm with experimental data and finally one architecture is selected. The results amply demonstrate the capabilities of ANN in terms of accuracy and speed for identification of different events of power transformer. The trained and tested results indicate that it is fast and reliable.
基于神经网络模式分类器的电力变压器数值差动保护
将人工神经网络作为一种模式分类器应用于电力变压器差动保护中,实现了正常电流、励磁涌流、过励磁、外部故障电流和内部故障电流的区分。该方案通过两种人工神经网络体系结构来实现,采用前馈-反向传播算法结合实验数据进行设计和训练,最终选择一种体系结构。结果充分证明了人工神经网络在识别电力变压器不同事件的准确性和速度方面的能力。训练和测试结果表明,该方法快速可靠。
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