A non-linear Auto-Regressive Exogenous-input model (NARXM) river flow forecasting output-updating procedure is presented. This updating procedure is based on the structure of a multi-layer neural network. The NARXM-neural network updating procedure is tested using the daily discharge forecasts of the soil moisture accounting and routing (SMAR) conceptual model operating on five catchments having different climatic conditions. The performance of the NARXM-neural network updating procedure is compared with that of the linear Auto-Regressive Exogenous-input (ARXM) model updating procedure, the latter being a generalisation of the widely used Auto-Regressive (AR) model forecast error updating procedure. The results of the comparison indicate th...
Time-series analysis techniques for improving the real-time flood forecasts issued by a deterministi...
River flow forecasts are required to provide basic information for reservoir management in a multipu...
The use of Artificial Intelligence methods is becoming increasingly common in the modeling and forec...
A non-linear Auto-Regressive Exogenous-input model (NARXM) river flow forecasting output-updating pr...
Estimating the flows of rivers can have a signicant economic impact, as this can help in agricultura...
Four different error-forecast updating models are investigated in terms of their capability of provi...
Abstract: This paper provides a solution to the forecasting problem of the river flow for two well k...
Three updating schemes using artificial neural network (ANN) in flow forecasting are compared in t...
This paper presents a novel framework to use artificial neural network (ANN) for accurate forecastin...
Artificial neural networks have been shown to be able to approximate any continuous non-linear func...
River runoff forecasting is one of the most complex areas of research in hydrology because of the un...
Artificial neural network (ANN) models provide huge potential for simulating nonlinear behaviour of ...
Forecasting a hydrologic time series has been one of the most complicated tasks owing to the wide ra...
This paper traces two decades of neural network rainfall-runoff and streamflow modelling, collective...
Over the past 15 years, artificial neural networks (ANNs) have been used increasingly for prediction...
Time-series analysis techniques for improving the real-time flood forecasts issued by a deterministi...
River flow forecasts are required to provide basic information for reservoir management in a multipu...
The use of Artificial Intelligence methods is becoming increasingly common in the modeling and forec...
A non-linear Auto-Regressive Exogenous-input model (NARXM) river flow forecasting output-updating pr...
Estimating the flows of rivers can have a signicant economic impact, as this can help in agricultura...
Four different error-forecast updating models are investigated in terms of their capability of provi...
Abstract: This paper provides a solution to the forecasting problem of the river flow for two well k...
Three updating schemes using artificial neural network (ANN) in flow forecasting are compared in t...
This paper presents a novel framework to use artificial neural network (ANN) for accurate forecastin...
Artificial neural networks have been shown to be able to approximate any continuous non-linear func...
River runoff forecasting is one of the most complex areas of research in hydrology because of the un...
Artificial neural network (ANN) models provide huge potential for simulating nonlinear behaviour of ...
Forecasting a hydrologic time series has been one of the most complicated tasks owing to the wide ra...
This paper traces two decades of neural network rainfall-runoff and streamflow modelling, collective...
Over the past 15 years, artificial neural networks (ANNs) have been used increasingly for prediction...
Time-series analysis techniques for improving the real-time flood forecasts issued by a deterministi...
River flow forecasts are required to provide basic information for reservoir management in a multipu...
The use of Artificial Intelligence methods is becoming increasingly common in the modeling and forec...