Power Transformer Differential Protection Based on Neural Network Principal Component Analysis, Harmonic Restraint and Park's Plots

M. Tripathy
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引用次数: 19

Abstract

This paper describes a new approach for power transformer differential protection which is based on the wave-shape recognition technique. An algorithm based on neural network principal component analysis (NNPCA) with back-propagation learning is proposed for digital differential protection of power transformer. The principal component analysis is used to preprocess the data from power system in order to eliminate redundant information and enhance hidden pattern of differential current to discriminate between internal faults from inrush and overexcitation conditions. This algorithm has been developed by considering optimal number of neurons in hidden layer and optimal number of neurons at output layer. The proposed algorithm makes use of ratio of voltage to frequency and amplitude of differential current for transformer operating condition detection. This paper presents a comparative study of power transformer differential protection algorithms based on harmonic restraint method, NNPCA, feed forward back propagation neural network (FFBPNN), space vector analysis of the differential signal, and their time characteristic shapes in Park’s plane. The algorithms are compared as to their speed of response, computational burden, and the capability to distinguish between a magnetizing inrush and power transformer internal fault. The mathematical basis for each algorithm is briefly described. All the algorithms are evaluated using simulation performed with PSCAD/EMTDC and MATLAB.
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基于神经网络主成分分析、谐波约束和帕克图的电力变压器差动保护
提出了一种基于波形识别技术的电力变压器差动保护新方法。提出了一种基于反向传播学习的神经网络主成分分析(NNPCA)的电力变压器数字差动保护算法。采用主成分分析方法对电力系统数据进行预处理,消除冗余信息,增强差动电流的隐藏模式,以区分内部故障、励磁和过励磁。该算法考虑了隐藏层最优神经元数和输出层最优神经元数。该算法利用电压频率比和差动电流幅值对变压器运行状态进行检测。本文对基于谐波约束法、NNPCA、前馈反传播神经网络(FFBPNN)、差分信号的空间矢量分析及其在帕克平面上的时间特征形状的电力变压器差动保护算法进行了比较研究。比较了两种算法的响应速度、计算量以及区分励磁涌流和变压器内部故障的能力。简要描述了每种算法的数学基础。利用PSCAD/EMTDC和MATLAB进行了仿真,对所有算法进行了评估。
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