Ahmed-Maher77 / Wind-Turbine-Power-Prediction-App-using-Machine-LearningLinks
"Wind Power Predictor" is a machine learning project that forecasts turbine output using real-time data from Turkish wind farms. Its web app interface offers convenient access to predictions, enabling informed decisions for maximizing energy production and advancing renewable energy usage.
☆11Updated 2 months ago
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