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Prediction of spatial heterogeneity in nutrient-limited sub-tropical maize yield: Implications for precision management in the eastern Indo-Gangetic Plains

Knowledge of the factors influencing nutrient-limited subtropical maize yield and subsequent prediction is crucial for effective nutrient management, maximizing profitability, ensuring food security, and promoting environmental sustainability. We analyzed data from nutrient omission plot trials (NOP...

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Published in:Artificial intelligence in agriculture 2024-09, Vol.13, p.100-116
Main Authors: Ahmed, Zia Uddin, Krupnik, Timothy J., Timsina, Jagadish, Islam, Saiful, Hossain, Khaled, Kurishi, A.S.M. Alanuzzaman, Emran, Shah-Al, Harun-Ar-Rashid, M., McDonald, Andrew J., Gathala, Mahesh K.
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Language:English
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Summary:Knowledge of the factors influencing nutrient-limited subtropical maize yield and subsequent prediction is crucial for effective nutrient management, maximizing profitability, ensuring food security, and promoting environmental sustainability. We analyzed data from nutrient omission plot trials (NOPTs) conducted in 324 farmers' fields across ten agroecological zones (AEZs) in the Eastern Indo-Gangetic Plains (EIGP) of Bangladesh to explain maize yield variability and identify variables controlling nutrient-limited yields. An additive main effect and multiplicative interaction (AMMI) model was used to explain maize yield variability with nutrient addition. Interpretable machine learning (ML) algorithms in automatic machine learning (AutoML) frameworks were subsequently used to predict attainable yield relative nutrient-limited yield (RY) and to rank variables that control RY. The stack-ensemble model was identified as the best-performing model for predicting RYs of N, P, and Zn. In contrast, deep learning outperformed all base learners for predicting RYK. The best model's square errors (RMSEs) were 0.122, 0.105, 0.123, and 0.104 for RYN, RYP, RYK, and RYZn, respectively. The permutation-based feature importance technique identified soil pH as the most critical variable controlling RYN and RYP. The RYK showed lower in the eastern longitudinal direction. Soil N and Zn were associated with RYZn. The predicted median RY of N, P, K, and Zn, representing average soil fertility, was 0.51, 0.84, 0.87, and 0.97, accounting for 44, 54, 54, and 48% upland dry season crop area of Bangladesh, respectively. Efforts are needed to update databases cataloging variability in land type inundation classes, soil characteristics, and INS and combine them with farmers' crop management information to develop more precise nutrient guidelines for maize in the EIGP. •>70% of fields showed positive yield responses to N, P, K, and Zn across all AEZs.•Median nutrient limiting yields relative to balanced fertilization followed the order Zn > K > P > N.•The AMMI model is used to explain maize yield variability across Bangladesh.•The ensemble model was identified as the best-performing model for predicting RY.•The predicted RY accounting for 44–54% of the upland dry season crop area of Bangladesh.
ISSN:2589-7217
2589-7217
DOI:10.1016/j.aiia.2024.08.001