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CALIBRACIÓN DE LOS PARÁMETROS DE UN MODELO DE HORNO DE ARCO ELÉCTRICO EMPLEANDO SIMULACIÓN Y REDES NEURONALES.

Authors :
ÁLVAREZ LÓPEZ, MAURICIO ALEXÁNDER
HENAO BAENA, CARLOS ALBERTO
MARULANDA DURANGO, JESSER JAMES
Source :
Revista EIA. Jul-Dec2014, Vol. 11 Issue 22, p39-50. 12p.
Publication Year :
2014

Abstract

Electric arc furnace provides a relatively simple way for melting metals. They are used in the production of highly purified steel, aluminium, copper and other metals. However, they are considered the more damaging load for the power system. It is very important, therefore, to count on arc furnace models for determining with high degree of accuracy the performance of this type of load. In this way, it would be possible to assess the impact in terms of power quality indices for the power system to which they might be connected. When using electric arc furnace models in practice, a key issue is the calibration of the parameters of the model. In this paper, we show a procedure for calibrating all the parameters of an AC electric arc furnace model using real measurements of voltages and currents. It uses a multilayer neural network as an emulator of the electric arc furnace model. The neural network is trained using data obtained from the simulation of the electric arc furnace model implemented in Matlab®-Simulink®. Once the network is trained, the parameters of interest are obtained by solving an inverse problem. Results obtained show a maximum percentage error of 4.1 % for the rms value of the current involved in the electrical arc. [ABSTRACT FROM AUTHOR]

Details

Language :
Spanish
ISSN :
17941237
Volume :
11
Issue :
22
Database :
Academic Search Index
Journal :
Revista EIA
Publication Type :
Academic Journal
Accession number :
102131117
Full Text :
https://doi.org/10.14508/reia.2014.11.22.39-50