Litcius/Paper detail

Canopy Fluorescence Sensing for In-Season Maize Nitrogen Status Diagnosis

Rui Dong, Yuxin Miao, Xinbing Wang, Fei Yuan, Krzysztof Kuśnierek

2021Remote Sensing15 citationsDOIOpen Access PDF

Abstract

Accurate assessment of crop nitrogen (N) status and understanding the N demand are considered essential in precision N management. Chlorophyll fluorescence is unsusceptible to confounding signals from underlying bare soil and is closely related to plant photosynthetic activity. Therefore, fluorescence sensing is considered a promising technology for monitoring crop N status, even at an early growth stage. The objectives of this study were to evaluate the potential of using Multiplex® 3, a proximal canopy fluorescence sensor, to detect N status variability and to quantitatively estimate N status indicators at four key growth stages of maize. The sensor measurements were performed at different growth stages, and three different regression methods were compared to estimate plant N concentration (PNC), plant N uptake (PNU), and N nutrition index (NNI). The results indicated that the induced differences in maize plant N status were detectable as early as the V6 growth stage. The first method based on simple regression (SR) and the Multiplex sensor indices normalized by growing degree days (GDD) or N sufficiency index (NSI) achieved acceptable estimation accuracy (R2 = 0.73–0.87), showing a good potential of canopy fluorescence sensing for N status estimation. The second method using multiple linear regression (MLR), fluorescence indices and GDDs had the lowest modeling accuracy (R2 = 0.46–0.79). The third tested method used a non-linear regression approach in the form of random forest regression (RFR) based on multiple sensor indices and GDDs. This approach achieved the best estimation accuracy (R2 = 0.84–0.93) and the most accurate diagnostic result.

Topics & Concepts

CanopyLinear regressionEnvironmental scienceGrowing degree-dayRegressionChlorophyll fluorescenceMathematicsStatisticsAgronomyChlorophyllBiologyBotanyPhenologyRemote Sensing in AgricultureSoil Geostatistics and MappingLeaf Properties and Growth Measurement