We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale using the machine learning technique, model tree ensembles (MTE). We trained MTE to predict site-level gross primary productivity (GPP), terrestrial ecosystem respiration (TER), net ecosystem exchange (NEE), latent energy (LE), and sensible heat (H) based on remote sensing indices, climate and meteorological data, and information on land use. We applied the trained MTEs to generate global flux fields at a 0.5° × 0.5° spatial resolution and a monthly temporal resolution from 1982 to 2008. Cross-validation analyses revealed good performance of MTE in predicting among-site flux variability with modeling efficiencies (MEf) between 0.64 and 0.84, exc...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...
We demonstrate progress in upscaling FLUXNET observations to the global scale using a machine learni...
We demonstrate progress in upscaling FLUXNET observations to the global scale using a machine learni...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...
We demonstrate progress in upscaling FLUXNET observations to the global scale using a machine learni...
We demonstrate progress in upscaling FLUXNET observations to the global scale using a machine learni...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...