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Random Forest Algorithms to predict climate impact-drivers (CID), a.k.a., climate extreme indices for impact studies, in crop yields of soybean maize using Random Forest and XGBoost in a SHAP (SHapley Additive exPlanations) framework
Harness the power of machine learning to forecast rice and wheat crop yields per acre in India, aiming to empower smallholder farmers, combat poverty and malnutrition, utilizing data from Digital Green surveys to revolutionize agriculture and promote sustainable practices in the face of climate change for enhanced global food security.
A web application created to predict the crop yield based on historical data. It can perform basic analysis, along with plotting the crop harvest in various states.
This is the ORCHIDEE-CROP model used in the paper "Future warming increases the chance of success of maize-wheat double cropping in Europe". For installing ORCHIDEE-CROP model, including the calculation environmental setting, please visit: https://forge.ipsl.jussieu.fr/orchidee/wiki/Documentation/UserGuide