The FLUXCOM ensemble of global land-atmosphere energy fluxes

11 Dec 2018Martin JungSujan KoiralaUlrich WeberKazuhito IchiiFabian GansGustau-Camps-VallsDario PapaleChristopher SchwalmGianluca TramontanaMarkus Reichstein

Although a key driver of Earth's climate system, global land-atmosphere energy fluxes are poorly constrained. Here we use machine learning to merge energy flux measurements from FLUXNET eddy covariance towers with remote sensing and meteorological data to estimate net radiation, latent and sensible heat and their uncertainties... (read more)

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