FAO AGRIS - International System for Agricultural Science and Technology

Machine learning reveals drivers of yield sustainability in five decades of continuous rice cropping

2025

Yamaguchi, Tomoaki | Angeles, Olivyn | Iizumi, Toshichika | Dobermann, Achim | Katsura, Keisuke | Saito, Kazuki


Bibliographic information
Volume 333 ISSN 0378-4290
Publisher
Elsevier
Other Subjects
Genotype-environment
Language
English
License
Limited Access, Copyrighted; all rights reserved
Type
Journal Article; Journal Part
Source
Yamaguchi, Tomoaki, Olivyn Angeles, Toshichika Iizumi, Achim Dobermann, Keisuke Katsura, and Kazuki Saito. "Machine learning reveals drivers of yield sustainability in five decades of continuous rice cropping." Field Crops Research 333 (2025): 110114.
Corporate Author
Ministry of Agriculture, Forestry and Fisheries, Japan
Government of Japan
Commissioned projects for promotion of strategic international joint research (Joint research with Germany)

2025-10-30
2026-03-17
MODS
Links
Lookup at Google Scholar
If you notice any incorrect information relating to this record, please contact us at [email protected]