“…DA provides a statistical framework to use observations to estimate model states and parameters, evaluate alternative model structures, and quantify and reduce uncertainties in model predictions. In particular, confronting ecosystem models with satellite observations using DA offers many benefits that could help constrain CFE, including: initialization of model states and parameters with high spatiotemporal frequency observations, which thus inform and constrain predictions (Dietze et al, 2018;Fox et al, 2018;Reichstein et al, 2019); implicit approximation of unobservable variables, for example LUE and WUE, that are constrained through process-based relationships within the model (Moore et al, 2008;Richardson et al, 2010;Fox et al, 2018); integration of multiple data streams at different spatial and temporal resolutions to provide constraints greater than the sum of individual data streams (Bacour et al, 2015;MacBean et al, 2016;Peylin et al, 2016); and systematic confrontation of models with observational data to drive cyclical and rapid model development (Parazoo et al, 2014;Scholze et al, 2017;Fischer et al, 2019;Reichstein et al, 2019). DA is a powerful approach for integrating satellite data where there are many overlapping observations that inform CFE, but where gaps are introduced because of sensor limitations and/or where only some carbon pools can be credibly observed (Fig.…”