ethicalByte1443/EV-Vehicle-Trip-Optimizer
An ML-driven EV battery optimization system that predicts energy consumption, enhances range efficiency, and intelligently adapts to driving conditions for sustainable performance.
This tool helps electric vehicle drivers plan their trips to maximize battery range and efficiency. You input details like distance, current battery, temperature, traffic, and driving conditions. The system then recommends optimal driving settings like speed, AC usage, and regenerative braking, and provides visual charts of predicted battery use and remaining range, allowing you to drive further on a single charge.
Use this if you drive an EV and want to plan your journeys to get the most range out of your battery, especially for longer trips or varied conditions.
Not ideal if you're looking for real-time, in-car navigation or automatic adjustments to your vehicle while driving.
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14
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Language
Jupyter Notebook
License
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Category
Last pushed
Oct 21, 2025
Commits (30d)
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