akansh12/data-science-Optimal-EV-station-placement
Spatial-Economic Analysis for Optimal EV Charging Station Placement using Machine Learning.
Combines geospatial data from OpenStreetMap and socio-demographic features (population density, infrastructure proximity, commercial zones) with classical ML algorithms to predict optimal charging station locations. Deploys results via a Streamlit dashboard hosted on Hugging Face, featuring interactive maps overlaying predicted stations, existing infrastructure, and residential/commercial areas for German cities including Saarbrücken and Berlin.
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Aug 03, 2024
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