Autor: Hansen, James
- Combining Crop Models and Remote Sensing for Yield Prediction: Concepts, Applications and Challenges for Heterogeneous Smallholder Environments
- Linking seasonal forecasts into risk - view to enhance food security contingency planning
- Assimilation of remotely sensed soil moisture and vegetation with a crop simulation model for maize yield prediction
- Anatomy of a local-scale drought: Application of assimilated remote sensing products, crop model, and statistical methods to an agricultural drought study
Autor: Das, NN
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