4.7 Article

Assessing Nitrogen Variability at Early Stages of Maize Using Mobile Fluorescence Sensing

期刊

REMOTE SENSING
卷 14, 期 20, 页码 -

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MDPI
DOI: 10.3390/rs14205077

关键词

fluorescence sensor; nitrogen management; precision agriculture; vegetation indices

资金

  1. Colorado State University Agricultural Experiment Station

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This study aims to evaluate the accuracy of mobile in-field fluorescence sensor measurements in quantifying nitrogen indicators variability in maize canopy during early growth season. The results showed that fluorescence sensor can successfully differentiate the variability among different nitrogen treatments, and the accuracy is higher at the V9 stage. When combined with machine learning model, fluorescence-based indices can estimate canopy nitrogen indicators at different growth stages. Mobile fluorescence sensing can accurately determine canopy nitrogen variability in early growth stages of maize, assisting farmers in optimal nitrogen management.
Characterizing nutrient variability has been the focus of precision agriculture research for decades. Previous research has indicated that in situ fluorescence sensor measurements can be used as a proxy for nitrogen (N) status in plants in greenhouse conditions employing static sensor measurements. Practitioners of precision N management require determination of in-season plant N status in real-time in the field to enable the most efficient N fertilizer management system. The objective of this study was to assess if mobile in-field fluorescence sensor measurements can accurately quantify the variability of nitrogen indicators in maize canopy early in the crop growing season. A Multiplex (R) 3 fluorescence sensor was used to collect crop canopy data at the V6 and V9 maize growth stages. Multiplex fluorescence indices were successful in discriminating variability among N treatments with moderate accuracies at V6, and higher at the V9 stage. Fluorescence-based indices were further utilized with a machine learning (ML) model to estimate canopy nitrogen indicators i.e., N concentration and above-ground biomass at the V6 and V9 growth stages independently. Parameter estimation using the Support Vector Regression (SVR)-based ML mode indicated a promising accuracy in estimation of N concentration and above-ground biomass at the V6 stage of maize with the moderate range of correlation coefficient (r = 0.72 +/- 0.03) and Root Mean Square Error (RMSE). The retrieval accuracies (r = 0.90 +/- 0.06) at the V9 stage were better than those of the V6 growth stage with a reasonable range of error estimates and yielding the lowest RMSE (0.23 (%N) and 12.37 g (biomass)) for all canopy N indicators. Mobile fluorescence sensing can be used with reasonable accuracies for determining canopy N variability at early growth stages of maize, which would help farmers in optimal management of nitrogen.

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