Light use efficiency (LUE) based bimonthly gross primary productivity (GPP) for global grasslands at 30 m spatial resolution (2000–2022)
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The article describes production of a high spatial resolution (30 m) bimonthly light
use efficiency (LUE) based gross primary productivity (GPP) data set representing
grasslands for the period 2000 to 2022. The data set is based on using reconstructed
global complete consistent bimonthly Landsat archive (400TB of data), combined
with 1 km MOD11A1 temperature data and 1 CERES Photosynthetically Active
Radiation (PAR). First, the LUE model was implemented by taking the
biome-specific productivity factor (maximum LUE parameter) as a global constant,
producing a global bimonthly (uncalibrated) productivity data for the complete land
mask. Second, the GPP 30 m bimonthly maps were derived for the global grassland
annual predictions and calibrating the values based on the maximum LUE factor of
0.86 gCm−2d−1MJ−1. The results of validation of the produced GPP estimates based
on 527 eddy covariance flux towers show an R-square between 0.48–0.71 and root
mean square error (RMSE) below ~2.3 gCm−2d−1 for all land cover classes. Using a
total of 92 flux towers located in grasslands, the validation of the GPP product
calibrated for the grassland biome revealed an R-square between 0.51–0.70 and an
RMSE smaller than ~2 gCm−2d−1. The final time-series of maps (uncalibrated and
grassland GPP) are available as bimonthly (daily estimates in units of gCm−2d−1) and
annual (daily average accumulated by 365 days in units of gCm−2yr−1) in
Cloud-Optimized GeoTIFF (~23TB in size) as open data (CC-BY license). The
recommended uses of data include: trend analysis e.g., to determine where are the
largest losses in GPP and which could be an indicator of potential land degradation,
crop yield mapping and for modeling GHG fluxes at finer spatial resolution.
Produced maps are available via SpatioTemporal Asset Catalog (http://stac.
openlandmap.org) and Google Earth Engine.
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GPP, Earth observation, Global grassland monitoring, Grassland productivity, Light use efficiency, Gross primary productivity, Landsat, Analysis ready data (ARD), Modis, CERES
Citação
ISIK, Mustafa Serkan et al. Light use efficiency (LUE) based bimonthly gross primary productivity (GPP) for global grasslands at 30 m spatial resolution (2000-2022). PeerJ, Corte Madera, v. 13, e19774, 2025. DOI: 10.7717/peerj.19774. Disponível em: https://peerj.com/articles/19774/. Acesso em 30 set. 2025.