ESTUDO DA APLICAÇÃO DE REDES NEURAIS ARTIFICIAIS PARA IDENTIFICAÇÃO DE CURTO-CIRCUITOS NO SISTEMA ELÉTRICO DE DISTRIBUIÇÃO

Luis Eduardo Anitelli Artero, Weslen Gabriel Dos Santos Piveta, R. Bratifich, Marcelo Amaro Manoel da Silva
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Abstract

The algorithm of artificial neural networks (RNA), are computational models that can perform generalization, inferences, identification, and classification of information and patterns. Thus, in this work, a study was developed through the creation of a neural network classifying patterns to identify and classify the types of short circuits that occur in the electrical distribution system. Thus, a multilayer perceptron neural network was developed in the Matlab software with 3 hidden layers, 25 neurons in each hidden layer, and a hyperbolic tangent activation function. The PMC was trained using simulated short-circuit data in the ATPDraw software and presented an efficiency of 94.7% in the identification of short circuits in the validation stage. The trained network was also able to evaluate short circuits on an IEEE 9-bar test bus demonstrating the potential to be applied as an additional measure of network information in integrated operation centers (IOC).
人工神经网络在配电系统短路识别中的应用研究
人工神经网络(RNA)的算法是一种计算模型,可以对信息和模式进行概括、推断、识别和分类。因此,在这项工作中,通过创建一个分类模式的神经网络来识别和分类配电系统中发生的短路类型,开展了一项研究。因此,在Matlab软件中开发了一个多层感知器神经网络,该网络具有3个隐藏层,每个隐藏层25个神经元,并具有双曲正切激活函数。在ATPDraw软件中使用模拟短路数据对PMC进行训练,在验证阶段识别短路的效率为94.7%。经过训练的网络还能够评估IEEE 9-bar测试总线上的短路,展示了作为综合运营中心(IOC)网络信息附加测量的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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