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2023-12-07
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How to Cite
Optimized Planning Framework of Solar Photovoltaic based Generation with EV Charging Station in a Rural Distribution Network considering Uncertainties
Sasmita Tripathy
School of Electrical Engineering, Kalinga Institute of Industrial Technology University
Sharmistha Nandi
School of Electrical Engineering, Kalinga Institute of Industrial Technology University
Sriparna Roy Ghatak
School of Electrical Engineering, Kalinga Institute of Industrial Technology University
Parimal Acharjee
School of Electrical Engineering, National Institute of Technology Durgapur
Pampa Sinha
School of Electrical Engineering, Kalinga Institute of Industrial Technology University
Keywords: Electric Vehicle, Photo Voltaic, National Household Travel Survey, Voltage Stability Index, Teaching Learning Based Optimization Algorithm
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