FAO AGRIS - International System for Agricultural Science and Technology

Hybridization of process-based models, remote sensing, and machine learning for enhanced spatial predictions of wheat yield and quality

Kheir, Ahmed M.S. | Govind, Ajit | Nangia, Vinay | El-Maghraby, Maher A. | Elnashar, Abdelrazek | Ahmed, Mukhtar | Aboelsoud, Hesham | Mostafa, Rania | Feike, Til


Bibliographic information
Computers and Electronics in Agriculture
Volume 234 ISSN 0168-1699
Publisher
Elsevier
Other Subjects
Dssat; Nutrient concentration; Random forest regressor
Language
English
License
Open Access, CC-BY-4.0
Type
Journal Article; Journal Part
Source
Ahmed M. S. Kheir, Ajit Govind, Vinay Nangia, Maher A. El-Maghraby, Abdelrazek Elnashar, Mukhtar Ahmed, Hesham Aboelsoud, Rania Mostafa, Til Feike. (23/3/2025). Hybridization of process-based models, remote sensing, and machine learning for enhanced spatial predictions of wheat yield and quality. Computers and Electronics in Agriculture, 234.
Corporate Author
CGIAR Trust Fund

2025-07-22
2025-09-18
MODS
Links
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