Geraldine-Winston / Crop-Yield-Prediction-Under-Climate-Change-Scenarios-using-ensemble-ML.Links
This project uses ensemble machine learning techniques to predict crop yield based on climate change scenarios. The models integrate climatic variables such as temperature, rainfall, CO₂ levels, and soil properties to forecast agricultural output.
☆31Updated 7 months ago
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