Terrestrial gross primary production (GPP) is the largest component flux in the global carbon cycle. Though various light-use-efficiency (LUE) models based on satellite vegetation greenness indices have been developed, the use of LUE models is usually hindered by difficulties in the parameterization of LUE and reliance on coarse meteorological inputs that have large uncertainties. The enhanced vegetation index (EVI) has been shown to have the potential to directly estimate GPP. However, the GPP-EVI relationship within different biomes has rarely been discussed. Here we explored relationships between annual integrated MODIS EVI (iEVI) and GPP from global eddy covariance measurements from 155 sites. Through categorizing these sites into 12 diverse biomes, the iEVI ability in estimating GPP was considerably improved (R2 from 0.56 to 0.70) in comparison to that without categorization. The biome-specific GPP-iEVI formulas were then performed at the global scale and the GPP based on iEVI agreed with a widely used benchmark dataset in either spatial or biome comparison. The predictive ability of iEVI was better in deciduous biomes than evergreen biomes. A significant negative correlation (R2 = 0.49, p < 0.02) between the strength of GPP-iEVI relationships and mean annual maximum leaf area index (LAImax) was consistently observed, showing the constraint of environmental conditions on the capability of EVI to estimate GPP. LAImax also revealed a scaling effect on the GPP-iEVI relationships, suggesting GPP models entirely based on MODIS EVI and LAI are feasible, particularly at an annual time-scale. This analysis highlights the direct link between EVI and GPP; inclusion of additional vegetation information will aid in improving the EVI performance.

Assessing the ability of MODIS EVI to estimate terrestrial ecosystem gross primary production of multiple land cover types

Vincenzo Magliulo;
2017

Abstract

Terrestrial gross primary production (GPP) is the largest component flux in the global carbon cycle. Though various light-use-efficiency (LUE) models based on satellite vegetation greenness indices have been developed, the use of LUE models is usually hindered by difficulties in the parameterization of LUE and reliance on coarse meteorological inputs that have large uncertainties. The enhanced vegetation index (EVI) has been shown to have the potential to directly estimate GPP. However, the GPP-EVI relationship within different biomes has rarely been discussed. Here we explored relationships between annual integrated MODIS EVI (iEVI) and GPP from global eddy covariance measurements from 155 sites. Through categorizing these sites into 12 diverse biomes, the iEVI ability in estimating GPP was considerably improved (R2 from 0.56 to 0.70) in comparison to that without categorization. The biome-specific GPP-iEVI formulas were then performed at the global scale and the GPP based on iEVI agreed with a widely used benchmark dataset in either spatial or biome comparison. The predictive ability of iEVI was better in deciduous biomes than evergreen biomes. A significant negative correlation (R2 = 0.49, p < 0.02) between the strength of GPP-iEVI relationships and mean annual maximum leaf area index (LAImax) was consistently observed, showing the constraint of environmental conditions on the capability of EVI to estimate GPP. LAImax also revealed a scaling effect on the GPP-iEVI relationships, suggesting GPP models entirely based on MODIS EVI and LAI are feasible, particularly at an annual time-scale. This analysis highlights the direct link between EVI and GPP; inclusion of additional vegetation information will aid in improving the EVI performance.
2017
Istituto per i Sistemi Agricoli e Forestali del Mediterraneo - ISAFOM
Inglese
72
153
164
12
http://www.sciencedirect.com/science/article/pii/S1470160X16304836
Sì, ma tipo non specificato
remote sensing
MODIS
EVI
GPP
sottomesso ECOLIND ottobre 2015
13
info:eu-repo/semantics/article
262
Hao Shi;Longhui Li;Derek Eamus;Alfredo Huete; James Cleverly; Xin Tian; Qiang Yu;Shaoqiang Wang; Leonardo Montagnani; Vincenzo Magliulo;Eyal ...espandi
01 Contributo su Rivista::01.01 Articolo in rivista
restricted
   Integrated Carbon Observation System
   ICOS
   FP7
   211574
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/275975
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