4.7 Article

Assessing the uncertainty of maize yield without nitrogen fertilization

Journal

FIELD CROPS RESEARCH
Volume 260, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.fcr.2020.107985

Keywords

Maize; Soil nitrogen supply; Yield forecast

Categories

Funding

  1. Fulbright Program
  2. Kansas Corn Commission
  3. Corteva Agriscience
  4. Kansas State University

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The study revealed that factors such as crop rotation, irrigation, soil organic matter, and weather variables play a significant role in predicting maize yield under zero N fertilizer conditions. Including weather variables in the analysis improved model efficiency and accuracy in predicting Y-0.
Maize (Zea Mays L.) yield responsiveness to nitrogen (N) fertilization depends on the yield under non-limiting N supply as well as on the inherent productivity under zero N fertilizer (Y-0). Understanding the driving factors and developing predictive algorithms for Y-0 will enhance the optimization of N fertilization in maize. Using a random forest algorithm, we analyzed data from 679 maize N fertilization studies (1031 Y-0 observations) conducted between 1999-2019 in the United States and Canada. Predictability of Y-0 was assessed while identifying determinant factors such as soil, crop management, and weather. The inclusion of weather variables as predictors improved the model efficiency (ME) from 51 up to 64 %, and reduced the root mean square error (RMSE) from 2.5 to 2.0 Mg ha(-1), 34 to 27 % in relative terms (RRMSE). The most relevant predictors of Y-0 were previous crop, irrigation, and soil organic matter (SOM), while the most influential weather data was linked to the radiation per unit of thermal time (Q quotient) around flowering and spring precipitations. The crop rotation effect resulted in Alfalfa (Medicago sativa L.) as the previous crop with the highest Y-0 level (IQR = 11.5-15.0 Mg ha(-1)) as compared to annual legumes (IQR = 5.6-10.0 Mg ha(-1)) and other previous crops (IQR = 3.6-7.8 Mg ha(-1)). The Q quotient around flowering positively affected Y-0, while spring precipitations and extreme temperature events during grain filling showed a negative association to Y-0. Overall, these results reinforce the concept that yields are controlled not only by soil N supply but also by factors modifying plant demand and ability to capture N. Lastly, we foresee a promising future for the use of machine learning to address both prediction and interpretation of maize yield to obtain more reliable N guidelines.

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