A procedure for estimating the uncertainty band of a real time forecasting model using grey artificial neural networks is here presented. Given the output (e.g. water levels or discharges) of the selected hydrological forecasting model, the corresponding uncertainty band is estimated through a neural network model whose parameters, namely, the weights and biases, are represented by grey numbers. To this end, the grey parameters of the neural network are estimated using a calibration procedure that imposes a constraint whereby the envelope of the corresponding intervals representing the outputs (grey levels or discharges, calculated at different points in time) must include a prefixed percentage of observed values. The application of the pr...
A procedure for characterizing global uncertainty of a rainfall-runoff simulation model based on usi...
Abstract-This paper presents the design issues of two intelligent forecasting systems, feedforward-n...
International audienceEnsemble forecasting is, so far, the most successful approach to produce relev...
In this paper a new approach to set up a river stage forecasting model based on neural networks in w...
A new procedure for water level (or discharge) forecasting under uncertainty using artificial neural...
A data-driven artificial neural network (ANN) model and a data-driven evolutionary polynomial regres...
International audienceNeural networks are used to forecast hydrogeological risks, such as droughts a...
In this study, a methodology has been developed to emulate a time consuming Monte Carlo (MC) simulat...
This paper proposes a new procedure for river stage forecasting under uncertainty based on the use o...
This paper presents an approach based on grey numbers to represent the total uncertainty of a concep...
A procedure for characterizing global uncertainty of a rainfall-runoff simulation model based on usi...
Copyright 2005 by the American Geophysical Union.Artificial neural networks have proven to be superi...
This study describes the parametric uncertainty of artificial neural networks (ANNs) by employing th...
A procedure for characterizing global uncertainty of a rainfall-runoff simulation model based on usi...
Abstract-This paper presents the design issues of two intelligent forecasting systems, feedforward-n...
International audienceEnsemble forecasting is, so far, the most successful approach to produce relev...
In this paper a new approach to set up a river stage forecasting model based on neural networks in w...
A new procedure for water level (or discharge) forecasting under uncertainty using artificial neural...
A data-driven artificial neural network (ANN) model and a data-driven evolutionary polynomial regres...
International audienceNeural networks are used to forecast hydrogeological risks, such as droughts a...
In this study, a methodology has been developed to emulate a time consuming Monte Carlo (MC) simulat...
This paper proposes a new procedure for river stage forecasting under uncertainty based on the use o...
This paper presents an approach based on grey numbers to represent the total uncertainty of a concep...
A procedure for characterizing global uncertainty of a rainfall-runoff simulation model based on usi...
Copyright 2005 by the American Geophysical Union.Artificial neural networks have proven to be superi...
This study describes the parametric uncertainty of artificial neural networks (ANNs) by employing th...
A procedure for characterizing global uncertainty of a rainfall-runoff simulation model based on usi...
Abstract-This paper presents the design issues of two intelligent forecasting systems, feedforward-n...
International audienceEnsemble forecasting is, so far, the most successful approach to produce relev...