遗传算法训练主从神经网络在电力变压器差动保护中的应用

D. N. Vishwakarma, H. Balaga, Harshit Nath
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引用次数: 11

摘要

将人工神经网络(ANN)作为一种模式分类器应用于电力变压器差动保护,实现了正常、励磁涌流、过励磁和内部故障电流的区分。该方案通过两个独立的自定义并行隐藏分层人工神经网络体系结构实现,并以主从模式工作。采用反向传播神经网络(BP)算法和遗传算法(GA)对多层前馈神经网络进行训练,并对其仿真结果进行了比较。遗传算法训练的神经网络比反向传播算法训练的神经网络更准确(在均方误差方面)。利用MATLAB Simulink和SimPowerSystem工具箱对系统进行仿真,得到了不同故障条件下的继电信号。仿真数据作为算法的输入,验证了算法的正确性。基于遗传算法训练的人工神经网络差分保护方案为电力变压器提供了更快、更准确、更安全、更可靠的保护结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of genetic algorithm trained masterslave Neural Network for differential protection of power transformer
The proposed work presents the use of Artificial Neural Network (ANN) as a pattern classifier for differential protection of power transformer, which makes the discrimination among normal, magnetizing inrush, over-excitation and internal fault currents. This scheme has been realized through two separate customized Parallel-Hidden Layered ANN architectures which work in Master-slave mode. The Back Propagation Neural Network (BP) Algorithm and Genetic Algorithm (GA) are used to train the multi-layered feed forward neural network and their simulated results are compared. The neural network trained by Genetic algorithm gives more accurate results (in terms of mean square error) than that trained by Back Propagation Algorithm. Relaying signals under different fault conditions are obtained by simulating the system using MATLAB Simulink and SimPowerSystem toolbox. Simulated data are used as an input to the algorithm to verify the correctness of the algorithm. The GA trained ANN based differential protection scheme provides faster, accurate, more secured and dependable results for power transformers.
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