Detection and classification of multiple power quality disturbances in Microgrid network using probabilistic based intelligent classifier
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Mohamed Abouhawwash | Veerapandiyan Veerasamy | Mariammal Thirumeni | Arangarajan Vinayagam | S. T Suganthi | A. Deepa | A. Vinayagam | Veerapandiyan Veerasamy | M. Abouhawwash | S. Suganthi | A. Deepa | M. Thirumeni
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