ShashwatArghode/Wind-Energy-Prediction-using-LSTM
Time Series Analysis using LSTM for Wind Energy Prediction.
This project helps wind farm operators and energy grid managers predict future wind energy output. By analyzing historical wind speed data, it produces forecasts for how much power wind turbines will generate. This allows energy planners to better schedule power systems and optimize the control of wind turbines.
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Use this if you need to forecast short-term wind energy production to manage power grids or wind farm operations more effectively.
Not ideal if you need to predict energy output when wind speeds are very low (below 4 m/s), as the current model struggles with these zero-power scenarios.
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May 18, 2018
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