This study describes the parametric uncertainty of artificial neural networks (ANNs) by employing the generalized likelihood uncertainty estimation (GLUE) method. The ANNs are used to forecast daily streamflow for three sub-basins of the Rhine Basin (East Alpine, Main, and Mosel) having different hydrological and climatological characteristics. We have obtained prior parameter distributions from 5000 ANNs in the training period to capture the parametric uncertainty and subsequently 125,000 correlated parameter sets were generated. These parameter sets were used to quantify the uncertainty in the forecasted streamflow in the testing period using three uncertainty measures: percentage of coverage, average relative length, and average asymmetr...
Reliable river flow estimates are crucial for appropriate water resources planning and management. R...
Monte-Carlo (MC) simulation based techniques are often applied for the estimation of uncertainties i...
International audienceNeural networks are used to forecast hydrogeological risks, such as droughts a...
This study describes the parametric uncertainty of artificial neural networks (ANNs) by employing th...
In this study, a methodology has been developed to emulate a time consuming Monte Carlo (MC) simulat...
It is widely recognized that hydrological models are subject to parameter uncertainty. However, litt...
The Generalised Likelihood Uncertainty Estimation (GLUE) approach is presented here as a tool for es...
In this study, the distributed catchment-scale model, DiCaSM, was applied on five catchments across ...
The generalised likelihood uncertainty estimation (GLUE) approach was applied to assess the performa...
AbstractThis study applies the ensemble method with artificial neural network (ANN) for simulating d...
There has been an increasing awareness that flood risk management is of particular importance in red...
In this study, the distributed catchment-scale model, DiCaSM, was applied on five catchments across ...
The Generalised Likelihood Uncertainty Estimation (GLUE) approach is presented here as a tool for es...
This paper investigates the benefits and applications of multiple models, both in general and in the...
It is widely recognized that hydrological models are subject to parameter uncertainty. However, litt...
Reliable river flow estimates are crucial for appropriate water resources planning and management. R...
Monte-Carlo (MC) simulation based techniques are often applied for the estimation of uncertainties i...
International audienceNeural networks are used to forecast hydrogeological risks, such as droughts a...
This study describes the parametric uncertainty of artificial neural networks (ANNs) by employing th...
In this study, a methodology has been developed to emulate a time consuming Monte Carlo (MC) simulat...
It is widely recognized that hydrological models are subject to parameter uncertainty. However, litt...
The Generalised Likelihood Uncertainty Estimation (GLUE) approach is presented here as a tool for es...
In this study, the distributed catchment-scale model, DiCaSM, was applied on five catchments across ...
The generalised likelihood uncertainty estimation (GLUE) approach was applied to assess the performa...
AbstractThis study applies the ensemble method with artificial neural network (ANN) for simulating d...
There has been an increasing awareness that flood risk management is of particular importance in red...
In this study, the distributed catchment-scale model, DiCaSM, was applied on five catchments across ...
The Generalised Likelihood Uncertainty Estimation (GLUE) approach is presented here as a tool for es...
This paper investigates the benefits and applications of multiple models, both in general and in the...
It is widely recognized that hydrological models are subject to parameter uncertainty. However, litt...
Reliable river flow estimates are crucial for appropriate water resources planning and management. R...
Monte-Carlo (MC) simulation based techniques are often applied for the estimation of uncertainties i...
International audienceNeural networks are used to forecast hydrogeological risks, such as droughts a...