In hydrological forecasting, data assimilation techniques are employed to improve estimates of initial conditions to update incorrect model states with observational data. However, the limited availability of continuous and up-to-date ground streamflow data is one of the main constraints for large-scale flood forecasting models. This is the first study that assess the impact of assimilating daily remotely sensed surface water extent at a 0.1° × 0.1° spatial resolution derived from the Global Flood Detection System (GFDS) into a global rainfall-runoff including large ungauged areas at the continental spatial scale in Africa and South America. Surface water extent is observed using a range of passive microwave remote sensors. The methodology ...
Calibration is a crucial step in the application of hydrological models and is typically performed u...
An innovative flood-prediction framework is developed using Tropical Rainfall Measuring Mission prec...
Global hydrological models facilitate studying of water resources and their variations over time. Th...
In hydrological forecasting, data assimilation techniques are employed to improve estimates of initi...
AbstractIn hydrological forecasting, data assimilation techniques are employed to improve estimates ...
Flooding is a natural global phenomenon but in many cases is exacerbated by human activity. Although...
The availability of in-situ data has been a constraining issue in hydrological prediction, especiall...
Data assimilation (DA) is a method that optimally combines imperfect models and uncertain observatio...
© 2015 Dr. Camila AlvarezThis thesis explores the assimilation of remotely-sensed soil moisture (SM-...
In data-poor regions around the world, particularly in less-privileged countries, hydrologists canno...
More accurate and reliable hydrologic simulations are important for many applications such as water ...
The coarse spatial resolution of global hydrological models (typically > 0.25◦ ) limits their abilit...
Streamflow is one of the key variables in the hydrological cycle. Simulation and forecasting of stre...
Abstract. Assimilation of remotely sensed soil moisture data (SM-DA) to correct soil water stores of...
Calibration is a crucial step in the application of hydrological models and is typically performed u...
Calibration is a crucial step in the application of hydrological models and is typically performed u...
An innovative flood-prediction framework is developed using Tropical Rainfall Measuring Mission prec...
Global hydrological models facilitate studying of water resources and their variations over time. Th...
In hydrological forecasting, data assimilation techniques are employed to improve estimates of initi...
AbstractIn hydrological forecasting, data assimilation techniques are employed to improve estimates ...
Flooding is a natural global phenomenon but in many cases is exacerbated by human activity. Although...
The availability of in-situ data has been a constraining issue in hydrological prediction, especiall...
Data assimilation (DA) is a method that optimally combines imperfect models and uncertain observatio...
© 2015 Dr. Camila AlvarezThis thesis explores the assimilation of remotely-sensed soil moisture (SM-...
In data-poor regions around the world, particularly in less-privileged countries, hydrologists canno...
More accurate and reliable hydrologic simulations are important for many applications such as water ...
The coarse spatial resolution of global hydrological models (typically > 0.25◦ ) limits their abilit...
Streamflow is one of the key variables in the hydrological cycle. Simulation and forecasting of stre...
Abstract. Assimilation of remotely sensed soil moisture data (SM-DA) to correct soil water stores of...
Calibration is a crucial step in the application of hydrological models and is typically performed u...
Calibration is a crucial step in the application of hydrological models and is typically performed u...
An innovative flood-prediction framework is developed using Tropical Rainfall Measuring Mission prec...
Global hydrological models facilitate studying of water resources and their variations over time. Th...