A Robust Transform-Domain Deep Convolutional Network for Voltage Dip Classification
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Irene Y. H. Gu | Ebrahim Balouji | Math H. J. Bollen | Azam Bagheri | I. Gu | M. Bollen | A. Bagheri | Ebrahim Balouji
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