AbstractAlthough not matching the formal definition of the predictive probability distribution, meteorological and hydrological ensembles have been frequently interpreted and directly used to assess flood‐forecasting predictive uncertainty. With the objective of correctly assessing the predictive probability of floods, this paper introduces ways of taking into account the measures of uncertainty provided in the form of ensemble forecasts by modifying a number of well‐established uncertainty postprocessors, such as Bayesian Model Averaging and Model Conditional Processor. The uncertainty postprocessors were developed on the assumption that the future unknown quantity (predictand) is uncertain while model forecasts (predictors) are given, whi...
An integrated hydrological ensemble prediction system (IHEPS) is providing a probabilistic assessmen...
River streamflow forecasting is traditionally based on real-time measurements of rainfall over catch...
This study conducted a broad review of the pre- and post-processor methods for ensemble streamflow ...
International audienceIn addition to the uncertainty in future boundary conditions of precipitation ...
Ensemble streamflow forecasts obtained by using hydrological models with ensemble weather products a...
International audienceA probabilistic approach to flood prediction over the Reno river basin, a medi...
Ensemble forecasts aim at framing the uncertainties of the potential future development of the hydro...
Two statistical post-processing approaches for estimation of predictive hydrological uncertainty are...
Hydrological forecasts lie at the heart of optimal water resource management and flood early warning...
Streamflow forecasts provide vital information to aid emergency response preparedness and disaster r...
Ensemble hydrometeorological forecasting has great potential for improving flood predictions and use...
The hydrologic community is generally moving towards the use of probabilistic estimates of streamflo...
The use of ensemble forecasts in operational rainfall and flood forecasting systems is rapidly incre...
International audienceQuantifying the uncertainty of flood forecasts by ensemble methods is becoming...
An uncertainty cascade model applied to stream flow forecasting seeks to evaluate the different sour...
An integrated hydrological ensemble prediction system (IHEPS) is providing a probabilistic assessmen...
River streamflow forecasting is traditionally based on real-time measurements of rainfall over catch...
This study conducted a broad review of the pre- and post-processor methods for ensemble streamflow ...
International audienceIn addition to the uncertainty in future boundary conditions of precipitation ...
Ensemble streamflow forecasts obtained by using hydrological models with ensemble weather products a...
International audienceA probabilistic approach to flood prediction over the Reno river basin, a medi...
Ensemble forecasts aim at framing the uncertainties of the potential future development of the hydro...
Two statistical post-processing approaches for estimation of predictive hydrological uncertainty are...
Hydrological forecasts lie at the heart of optimal water resource management and flood early warning...
Streamflow forecasts provide vital information to aid emergency response preparedness and disaster r...
Ensemble hydrometeorological forecasting has great potential for improving flood predictions and use...
The hydrologic community is generally moving towards the use of probabilistic estimates of streamflo...
The use of ensemble forecasts in operational rainfall and flood forecasting systems is rapidly incre...
International audienceQuantifying the uncertainty of flood forecasts by ensemble methods is becoming...
An uncertainty cascade model applied to stream flow forecasting seeks to evaluate the different sour...
An integrated hydrological ensemble prediction system (IHEPS) is providing a probabilistic assessmen...
River streamflow forecasting is traditionally based on real-time measurements of rainfall over catch...
This study conducted a broad review of the pre- and post-processor methods for ensemble streamflow ...