Radiance-based NIR<sub>v</sub> as a proxy for GPP of corn and soybean

Wu, Genghong; Guan, Kaiyu; Jiang, Chongya; Peng, Bin; Kimm, Hyungsuk; Chen, Min; Yang, Xi; Wang, Sheng; Suyker, Andrew E.; Bernacchi, Carl J.; Moore, Caitlin E.; Zeng, Yelu; Berry, Joseph A.; Pilar Cendrero-Mateo, M.
2020
ENVIRONMENTAL RESEARCH LETTERS
DOI
10.1088/1748-9326/ab65cc
Substantial uncertainty exists in daily and sub-daily gross primary production (GPP) estimation, which dampens accurate monitoring of the global carbon cycle. Here we find that near-infrared radiance of vegetation (NIRv, Rad), defined as the product of observed NIR radiance and normalized difference vegetation index, can accurately estimate corn and soybean GPP at daily and half-hourly time scales, benchmarked with multi-year tower-based GPP at three sites with different environmental and irrigation conditions. Overall, NIRv, Rad explains 84% and 78% variations of half-hourly GPP for corn and soybean, respectively, outperforming NIR reflectance of vegetation (NIRv, Ref), enhanced vegetation index (EVI), and far-red solar-induced fluorescence (SIF760). The strong linear relationship between NIRv, Rad and absorbed photosynthetically active radiation by green leaves (APAR(green)), and that between APARgreen and GPP, explain the good NIRv,Rad-GPP relationship. The NIRv,Rad-GPP relationship is robust and consistent across sites. The scalability and simplicity of NIRv, Rad indicate a great potential to estimate daily or sub-daily GPP from high-resolution and/or long-term satellite remote sensing data.