1. In-season dynamic diagnosis of maize nitrogen status across the growing season by integrating proximal sensing and crop growth modeling.
- Author
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Dong, Lingwei, Miao, Yuxin, Wang, Xinbing, Kusnierek, Krzysztof, Zha, Hainie, Pan, Min, and Batchelor, William D.
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MACHINE learning , *CROP growth , *GROWING season , *DATA integration , *MULTISENSOR data fusion - Abstract
[Display omitted] • Proximal sensing was integrated with crop growth model for dynamic estimation of maize N status. • The CERES-Maize model simulated AGB well, but not PNC. • The estimated NNI using the integrating method resulted in good diagnostic result. • The integrated strategy has good potential for dynamic in-season N management decision support. Efficient and accurate in-season diagnosis of crop nitrogen (N) status is crucially important for precision N management. The main objective of this study was to develop a strategy for in-season dynamic diagnosis of maize (Zea mays L.) N status across the growing season by integrating proximal sensing and crop growth modeling. In this study, we integrated plant N concentration (PNC) derived from leaf fluorescence sensor data and aboveground biomass (AGB) based on the best-performing spectral index calculated from active canopy reflectance sensor data with simulated PNC and AGB using a crop growth model, DSSAT-CERES-Maize, for dynamic in-season maize N status diagnosis across the growing season. The results confirmed the applicability of leaf fluorescence sensing for PNC estimation and active canopy reflectance sensing for AGB estimation, respectively. The calibrated DSSAT CERES-Maize model performed well for simulating AGB (R2 = 0.96), which could be used for calculating the N status indicator, N nutrition index (NNI). However, the model did not perform satisfactorily for PNC simulation, with significant discrepancies between the simulated and measured PNC values. The data integration method using both proximal sensing and crop growth modeling produced accurate predictions of NNI (R2 = 0.95) and N status diagnostic outcomes (Kappa statistics = 0.64) for key growth stages in this study and could be used to simulate maize N status across the growing season, showing the potential for in-season dynamic N status diagnosis and management decision support. More studies are needed to further improve this approach by multi-sensor and multi-source data fusion using machine learning models. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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