Forecast reliability and accuracy is a prerequisite for successful hydrological applications. This aim may be attained by using data assimilation techniques such as the popular Ensemble Kalman filter (EnKF). Despite its recognized capacity to enhance forecasting by creating a new set of initial conditions, implementation tests have been mostly carried out with a single model and few catchments leading to case specific conclusions. This paper performs an extensive testing to assess ensemble bias and reliability on 20 conceptual lumped models and 38 catchments in the Province of Québec with perfect meteorological forecast forcing. The study confirms that EnKF is a powerful tool for short range forecasting but also that it requires a more subt...
This paper presents a study on the optimal setup for discharge assimilation within a spatially distr...
This paper presents a study on the optimal setup for discharge assimilation within a spatially distr...
This paper compares two Monte Carlo sequential data assimilation methods based on the Kalman filter,...
Forecast reliability and accuracy is a prerequisite for successful hydrological applications. This a...
For operational water management in lowlands and polders (for instance, in the Netherlands), lowland...
The optimization of hydrologic models using the ensemble Kalman filter has received increasing atten...
One of the challenges in hydrological modelling is to improve model performance to accurately simula...
One of the challenges in hydrological modelling is to improve model performance to accurately simula...
The optimization of hydrologic models using the ensemble Kalman filter has received increasing atten...
The optimization of hydrologic models using the ensemble Kalman filter has received increasing atten...
One of the key success factor for hydrological forecasts is the establishment of initial conditions ...
The purpose of this particular work was to explore the benefits and drawbacks of sequential state up...
There is a growing interest in understanding the uncertainty in flood forecasting and the resulting ...
In operational hydrology, understanding the behaviour of flood events and improving the forecast ski...
In operational hydrology, understanding the behaviour of flood events and improving the forecast ski...
This paper presents a study on the optimal setup for discharge assimilation within a spatially distr...
This paper presents a study on the optimal setup for discharge assimilation within a spatially distr...
This paper compares two Monte Carlo sequential data assimilation methods based on the Kalman filter,...
Forecast reliability and accuracy is a prerequisite for successful hydrological applications. This a...
For operational water management in lowlands and polders (for instance, in the Netherlands), lowland...
The optimization of hydrologic models using the ensemble Kalman filter has received increasing atten...
One of the challenges in hydrological modelling is to improve model performance to accurately simula...
One of the challenges in hydrological modelling is to improve model performance to accurately simula...
The optimization of hydrologic models using the ensemble Kalman filter has received increasing atten...
The optimization of hydrologic models using the ensemble Kalman filter has received increasing atten...
One of the key success factor for hydrological forecasts is the establishment of initial conditions ...
The purpose of this particular work was to explore the benefits and drawbacks of sequential state up...
There is a growing interest in understanding the uncertainty in flood forecasting and the resulting ...
In operational hydrology, understanding the behaviour of flood events and improving the forecast ski...
In operational hydrology, understanding the behaviour of flood events and improving the forecast ski...
This paper presents a study on the optimal setup for discharge assimilation within a spatially distr...
This paper presents a study on the optimal setup for discharge assimilation within a spatially distr...
This paper compares two Monte Carlo sequential data assimilation methods based on the Kalman filter,...