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An entirely new approach based on remote sensing data to calculate the nitrogen nutrition index of winter wheat

Yu ZHAO, Jian-wen WANG, Liping Chen, Yuanyuan Fu, Hongchun Zhu, Haikuan Feng, Xingang Xu, Zhenhai Li

2021Journal of Integrative Agriculture39 citationsDOIOpen Access PDF

Abstract

The nitrogen nutrition index (NNI) is a reliable indicator for diagnosing crop nitrogen (N) status. However, there is currently no specific vegetation index for the NNI inversion across multiple growth periods. To overcome the limitations of the traditional direct NNI inversion method (NNIT1) of the vegetation index and traditional indirect NNI inversion method (NNIT2) by inverting intermediate variables including the aboveground dry biomass (AGB) and plant N concentration (PNC), this study proposed a new NNI remote sensing index (NNIRS). A remote-sensing-based critical N dilution curve (Nc_RS) was set up directly from two vegetation indices and then used to calculate NNIRS. Field data including AGB, PNC, and canopy hyperspectral data were collected over four growing seasons (2012–2013 (Exp.1), 2013–2014 (Exp. 2), 2014–2015 (Exp. 3), 2015–2016 (Exp. 4)) in Beijing, China. All experimental datasets were cross-validated to each of the NNI models (NNIT1, NNIT2 and NNIRS). The results showed that: (1) the NNIRS models were represented by the standardized leaf area index determining index (sLAIDI) and the red-edge chlorophyll index (CIred edge) in the form of NNIRS=CIred edge/(a×sLAIDIb), where “a” equals 2.06, 2.10, 2.08 and 2.02 and “b” equals 0.66, 0.73, 0.67 and 0.62 when the modeling set data came from Exp.1/2/4, Exp.1/2/3, Exp.1/3/4, and Exp.2/3/4, respectively; (2) the NNIRS models achieved better performance than the other two NNI revised methods, and the ranges of R2 and RMSE were 0.50–0.82 and 0.12–0.14, respectively; (3) when the remaining data were used for verification, the NNIRS models also showed good stability, with RMSE values of 0.09, 0.18, 0.13 and 0.10, respectively. Therefore, it is concluded that the NNIRS method is promising for the remote assessment of crop N status.

Topics & Concepts

Red edgeHyperspectral imagingMathematicsInversion (geology)Enhanced vegetation indexIndex (typography)NitrogenLeaf area indexEnvironmental scienceRemote sensingCanopyStatisticsVegetation IndexAgronomyNormalized Difference Vegetation IndexComputer scienceChemistryBotanyBiologyGeographyWorld Wide WebPaleontologyStructural basinOrganic chemistryRemote Sensing in AgricultureLeaf Properties and Growth MeasurementPlant Water Relations and Carbon Dynamics