2023
DOI: 10.25077/jnte.v12n2.1094.2023
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Short-Term EV Charging Demand Forecast with Feedforward Artificial Neural Network

Francis Boafo Effah,
Daniel Kwegyir,
Daniel Opoku
et al.

Abstract: The global increase in greenhouse gas emissions from automobiles has brought about the manufacture and usage of large quantities of electric vehicles (EVs). However, to ensure proper integration of EVs into the grid, there is a need to forecast the charging demand of EVs accurately. This paper presents a short-term electric vehicle charging demand forecast using a feedforward artificial neural network optimized with a modified local leader phase spider monkey optimization (MLLP-SMO) algorithm, a proposed varia… Show more

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