Preprint
Predicting carbon dioxide and energy fluxes across global FLUXNET sites with regression algorithms
Abstract
Abstract. Spatial-temporal fields of land-atmosphere fluxes derived from data-driven models can complement simulations by process-based Land Surface Models. While a number of strategies for empirical models with eddy covariance flux data have been applied, a systematic intercomparison of these methods has been missing so far. In this study, we perform a cross-validation experiment for predicting carbon dioxide (CO2), latent heat, sensible heat …
Authors
Tramontana G; Jung M; Camps-Valls G; Ichii K; Raduly B; Reichstein M; Schwalm CR; Arain MA; Cescatti A; Kiely G
DOI
10.5194/bg-2015-661
Preprint server
EGUsphere