ebtezcan/EV-Charger-Prediction
Time-series modeling project that predicts the future number of electric vehicles in Washington state counties to identify locations with the most potential for financial success for new electric vehicle chargers.
This project helps investors and energy companies pinpoint the best locations in Washington state to install new electric vehicle (EV) charging stations. By analyzing historical EV registration data and existing charging infrastructure, it predicts future EV demand for different counties. The output is a clear recommendation of top counties for investment, along with insights into popular EV models to guide charger type and spacing decisions.
No commits in the last 6 months.
Use this if you are an investor, urban planner, or energy company looking to make data-driven decisions on where to strategically expand EV charging infrastructure in Washington state.
Not ideal if you need a real-time system for managing live charging station operations or if your focus is on predicting EV demand outside of Washington state.
Stars
17
Forks
4
Language
Jupyter Notebook
License
GPL-3.0
Category
Last pushed
Jul 30, 2021
Commits (30d)
0
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