FAO AGRIS - International System for Agricultural Science and Technology

Coupling Process-Based Models and Machine Learning Algorithms for Predicting Yield and Evapotranspiration of Maize in Arid Environments

Attia, Ahmed | Govind, Ajit | Qureshi, Asad Sarwar | Feike, Til | Rizk, Mosa Sayed | Shabana, Mahmoud Mohamed Abd ElHay | Kheir, Ahmed M.S.

AGROVOC Keywords

Bibliographic information
Volume 14 Issue 22 ISSN 2073-4441
Other Subjects
Dssat models; Random forest; Super learner; Hyperparameters tuning; Xgboost; Feature importance; Lasso regression
Language
English
License
Open Access, CC-BY-4.0
Type
Journal Article; Journal Part
Source
Ahmed Attia, Ajit Govind, Asad Sarwar Qureshi, Til Feike, Mosa Sayed Rizk, Mahmoud Mohamed Abd ElHay Shabana, Ahmed M. S. Kheir. (12/11/2022). Coupling Process-Based Models and Machine Learning Algorithms for Predicting Yield and Evapotranspiration of Maize in Arid Environments. WATER, 14 (22).
Corporate Author
CGIAR Trust Fund

2024-11-28
2026-03-17
MODS
Links
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