akansh12/data-science-Optimal-EV-station-placement
Spatial-Economic Analysis for Optimal EV Charging Station Placement using Machine Learning.
This project helps urban planners, infrastructure developers, and city councils determine the best locations for new electric vehicle (EV) charging stations. It takes geographical and socio-economic data for German cities and outputs recommended optimal placements. This tool is for professionals responsible for expanding EV charging infrastructure.
No commits in the last 6 months.
Use this if you need to strategically plan the expansion of EV charging infrastructure within a German city, considering current demand indicators and socio-economic factors.
Not ideal if you need a real-time, dynamic EV charging availability map or a solution for countries other than Germany.
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Last pushed
Aug 03, 2024
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