Combining Multiple Artificial Neural Networks Using Random Committee to Decide upon Electrical Disturbance Classification
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Milde M. S. Lira | Manoel A. Carvalho | Aida A. Ferreira | Ronaldo R. B. de Aquino | Otoni Nóbrega Neto | Gabriela S. M. Santos | Ronaldo Aquino | M. Lira | O. N. Neto | A. Ferreira
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