The beginning of the 21st century is marked by a rapid growth of land surface satellite data and model sophistication. This offers new opportunities to estimate multiple components of the water cycle via satellite-based land data assimilation (DA) across multiple scales. By resolving more processes in land surface models and by coupling the land, the atmosphere, and other Earth system compartments, the observed information can be propagated to constrain additional unobserved variables. Furthermore, access to more satellite observations enables the direct constraint of more and more components of the water cycle that are of interest to end users. However, the finer level of detail in models and data is also often accompanied by an increase i...
The representation of the Earth's surface in global monitoring and forecasting applications is movin...
This chapter presents the basis of data assimilation by limiting the mathematical developments as mu...
The task of quantifying spatial and temporal variations in terrestrial water, energy, and vegetation...
The beginning of the 21st century is marked by a rapid growth of land surface satellite data and mod...
Provisionally accepted: The final, formatted version of the article will be published soon.Project C...
A land data assimilation system (LDAS) can merge satellite observations (or retrievals) of land surf...
The task of quantifying spatial and temporal variations in terrestrial water, energy, and vegetation...
International audienceThe task of quantifying spatial and temporal variations in terrestrial water, ...
International audienceThe task of quantifying spatial and temporal variations in terrestrial water, ...
The task of quantifying spatial and temporal variations in terrestrial water, energy, and vegetation...
International audienceThe task of quantifying spatial and temporal variations in terrestrial water, ...
Recent advances in remote sensing technologies have enabled the monitoring and measurement of the Ea...
Land data assimilation system (LDAS)-Monde, an offline land data assimilation system with global cap...
Land data assimilation system (LDAS)-Monde, an offline land data assimilation system with global cap...
The Land Information System (LIS; http://lis.gsfc.nasa.gov; Kumar et al., 2006; Peters- Lidard et al...
The representation of the Earth's surface in global monitoring and forecasting applications is movin...
This chapter presents the basis of data assimilation by limiting the mathematical developments as mu...
The task of quantifying spatial and temporal variations in terrestrial water, energy, and vegetation...
The beginning of the 21st century is marked by a rapid growth of land surface satellite data and mod...
Provisionally accepted: The final, formatted version of the article will be published soon.Project C...
A land data assimilation system (LDAS) can merge satellite observations (or retrievals) of land surf...
The task of quantifying spatial and temporal variations in terrestrial water, energy, and vegetation...
International audienceThe task of quantifying spatial and temporal variations in terrestrial water, ...
International audienceThe task of quantifying spatial and temporal variations in terrestrial water, ...
The task of quantifying spatial and temporal variations in terrestrial water, energy, and vegetation...
International audienceThe task of quantifying spatial and temporal variations in terrestrial water, ...
Recent advances in remote sensing technologies have enabled the monitoring and measurement of the Ea...
Land data assimilation system (LDAS)-Monde, an offline land data assimilation system with global cap...
Land data assimilation system (LDAS)-Monde, an offline land data assimilation system with global cap...
The Land Information System (LIS; http://lis.gsfc.nasa.gov; Kumar et al., 2006; Peters- Lidard et al...
The representation of the Earth's surface in global monitoring and forecasting applications is movin...
This chapter presents the basis of data assimilation by limiting the mathematical developments as mu...
The task of quantifying spatial and temporal variations in terrestrial water, energy, and vegetation...