none4siPredictive hydrological uncertainty can be quantified by using ensemble methods. If properly formulated, these methods can offer improved predictive performance by combining multiple predictions. In this work, we use 50-year-long monthly time series observed in 270 catchments in the United States to explore the performances provided by an ensemble learning post-processing methodology for issuing probabilistic hydrological predictions. This methodology allows the utilization of flexible quantile regression models for exploiting information about the hydrological model's error. Its key differences with respect to basic two-stage hydrological post-processing methodologies using the same type of regression models are that (a) instead of ...
An uncertainty cascade model applied to stream flow forecasting seeks to evaluate the different sour...
In this paper, a technique is presented for assessing the predictive uncertainty of rainfall-runoff ...
The present study comprises an intercomparison of different configurations of a statistical post-pro...
Predictive hydrological uncertainty can be quantified by using ensemble methods. If properly formula...
We introduce an ensemble learning post-processing methodology for probabilistic hydrological modelli...
We conduct a large-scale benchmark experiment aiming to advance the use of machinelearning quantile ...
Multi-model ensemble strategy is a means to exploit the diversity of skillful predictions from diffe...
International audienceThis paper investigates the hydrometeorological chain with an ensemble approac...
Two statistical post-processing approaches for estimation of predictive hydrological uncertainty are...
Probabilistic streamflow forecasting by postprocessing the outputs of hydrological models is commonl...
Quantification of predictive uncertainty in hydrological modelling is often made by post-processing ...
Water resource management requires robust assessment of the consequences of future states of the res...
AbstractAlthough not matching the formal definition of the predictive probability distribution, mete...
Ensemble hydrometeorological forecasting has great potential for improving flood predictions and use...
In hydrologic modeling, uncertainties are known to reside in model inputs, i.e., rainfall estimates,...
An uncertainty cascade model applied to stream flow forecasting seeks to evaluate the different sour...
In this paper, a technique is presented for assessing the predictive uncertainty of rainfall-runoff ...
The present study comprises an intercomparison of different configurations of a statistical post-pro...
Predictive hydrological uncertainty can be quantified by using ensemble methods. If properly formula...
We introduce an ensemble learning post-processing methodology for probabilistic hydrological modelli...
We conduct a large-scale benchmark experiment aiming to advance the use of machinelearning quantile ...
Multi-model ensemble strategy is a means to exploit the diversity of skillful predictions from diffe...
International audienceThis paper investigates the hydrometeorological chain with an ensemble approac...
Two statistical post-processing approaches for estimation of predictive hydrological uncertainty are...
Probabilistic streamflow forecasting by postprocessing the outputs of hydrological models is commonl...
Quantification of predictive uncertainty in hydrological modelling is often made by post-processing ...
Water resource management requires robust assessment of the consequences of future states of the res...
AbstractAlthough not matching the formal definition of the predictive probability distribution, mete...
Ensemble hydrometeorological forecasting has great potential for improving flood predictions and use...
In hydrologic modeling, uncertainties are known to reside in model inputs, i.e., rainfall estimates,...
An uncertainty cascade model applied to stream flow forecasting seeks to evaluate the different sour...
In this paper, a technique is presented for assessing the predictive uncertainty of rainfall-runoff ...
The present study comprises an intercomparison of different configurations of a statistical post-pro...