f An Enhanced Multi-Objective Evolutionary Optimization Algorithm based on Decomposition for Optimal Placement of Distributed Generation and EV Fast Charging Stations in Distribution System
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An Enhanced Multi-Objective Evolutionary Optimization Algorithm based on Decomposition for Optimal Placement of Distributed Generation and EV Fast Charging Stations in Distribution System

Author(s): Varun Krishna Paravasthu*, Balasubbareddy Mallala and B. Mangu

Publisher : FOREX Publication

Published : 20 June 2024

e-ISSN : 2347-470X

Page(s) : 575-580




Varun Krishna Paravasthu*, Research scholar, Department of Electrical Engineering, University college of engineering, Osmania university, Hyderabad, India; Email: varunkrishnaparavasthu@gmail.com

Balasubbareddy Mallala, Professor, Department of Electrical and Electronics Engineering, CBIT Gandipet, Hyderabad, India; Email: balasubbareddy79@gmail.com

B. Mangu, Professor, Department of Electrical Engineering, University college of engineering, Osmania university, Hyderabad, India; Email: bmanguou@gmail.com

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Varun krishna paravasthu, Balasubbareddy Mallala and B. Mangu (2024), An Enhanced Multi-Objective Evolutionary Optimization Algorithm based on Decomposition for Optimal Placement of Distributed Generation and EV Fast Charging Stations in Distribution System. IJEER 12(2), 575-580. DOI: 10.37391/IJEER-120232.