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Genetic algorithm based neural networks applied to fault classification for EHV transmission lines with a UPFC

机译:基于遗传算法的神经网络在具有UPFC的超高压输电线路故障分类中的应用

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The paper proposes a novel fault detection and classification scheme for EHV power transmission lines using genetic algorithm-based neural networks. The application concerned is fault classification for EHV lines with a unified power factor corrector (UPFC), since fault classification is a key part of protective relaying schemes. After the genetic algorithm-based neural network is briefly discussed in general, EMTP based digital simulation results of a UPFC transmission system are presented. The generation of training/test data and preprocessing of these data for neural networks are then described. The paper places special emphasis on the performance comparison between a genetic algorithm-based neural network and a backpropagation network-based scheme.
机译:提出了一种基于遗传算法的神经网络超高压输电线路故障检测与分类的新方案。由于故障分类是保护继电方案的关键部分,因此相关应用是具有统一功率因数校正器(UPFC)的超高压线路的故障分类。在简要讨论了基于遗传算法的神经网络后,给出了基于EMTP的UPFC传输系统的数字仿真结果。然后描述了训练/测试数据的生成以及对神经网络的这些数据的预处理。本文特别强调了基于遗传算法的神经网络和基于反向传播网络的方案之间的性能比较。

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