Rainfall-runoff models play a very important role in flood forecasting. However, these models contain large uncertainties caused by errors in both the model itself and the input data. Data assimilation techniques are being used to reduce these uncertainties. The ensemble Kalman filter (EnKF) and the particle filter (PF) both have their own strengths. Research was carried out to a possible combination between both types of filters that will lead to a new type of filters that joins the strengths of both. The so called ensemble particle filter (EnPF) new combination is tested on flood forecasting problems in both the hindcast mode as well as the forecast mode. Several proposed combinations showed considerable improvement when a hindcast compar...
There is a growing interest in knowing the uncertainty in flood forecasting and the resulting flood ...
Particle filters (PFs) have become popular for assimilation of a wide range of hydrologic variables ...
Data assimilation (DA) is a powerful tool to optimally combine uncertain model simulations and obse...
Rainfall-runoff models play a very important role in flood forecasting. However, these models contai...
Data assimilation (DA) has recently received growing interest by the hydrological modeling community...
Floods are the most common and widespread disasters in the world and are responsible for a greater n...
In operational hydrology, understanding the behaviour of flood events and improving the forecast ski...
The objective of this paper is to analyze the improvement in the performance of the particle filter ...
The objective of this paper is to analyse the improvement in the performance of the particle filter ...
The purpose of this particular work was to explore the benefits and drawbacks of sequential state up...
The ensemble Kalman filter (EnKF) and sequential importance resampling (SIR) are two Monte Carlo-bas...
There is a growing interest in understanding the uncertainty in flood forecasting and the resulting ...
The ensemble Kalman filter (EnKF) and sequential importance resampling (SIR) are two Monte Carlo-bas...
Natural Science Foundation of China; National Key Research and Development Plan; Natural Sciences an...
Forecast reliability and accuracy is a prerequisite for successful hydrological applications. This a...
There is a growing interest in knowing the uncertainty in flood forecasting and the resulting flood ...
Particle filters (PFs) have become popular for assimilation of a wide range of hydrologic variables ...
Data assimilation (DA) is a powerful tool to optimally combine uncertain model simulations and obse...
Rainfall-runoff models play a very important role in flood forecasting. However, these models contai...
Data assimilation (DA) has recently received growing interest by the hydrological modeling community...
Floods are the most common and widespread disasters in the world and are responsible for a greater n...
In operational hydrology, understanding the behaviour of flood events and improving the forecast ski...
The objective of this paper is to analyze the improvement in the performance of the particle filter ...
The objective of this paper is to analyse the improvement in the performance of the particle filter ...
The purpose of this particular work was to explore the benefits and drawbacks of sequential state up...
The ensemble Kalman filter (EnKF) and sequential importance resampling (SIR) are two Monte Carlo-bas...
There is a growing interest in understanding the uncertainty in flood forecasting and the resulting ...
The ensemble Kalman filter (EnKF) and sequential importance resampling (SIR) are two Monte Carlo-bas...
Natural Science Foundation of China; National Key Research and Development Plan; Natural Sciences an...
Forecast reliability and accuracy is a prerequisite for successful hydrological applications. This a...
There is a growing interest in knowing the uncertainty in flood forecasting and the resulting flood ...
Particle filters (PFs) have become popular for assimilation of a wide range of hydrologic variables ...
Data assimilation (DA) is a powerful tool to optimally combine uncertain model simulations and obse...