Constraints of artificial neural networks for rainfall-runoff modelling: trade-offs in hydrological state representation and model evaluation
The application of Artificial Neural Networks (ANNs) in rainfall-runoff modelling needs to be researched more extensively in order to appreciate and fulfil the potential of this modelling approach. This paper reports on the application of multi-layer feedforward ANNs for rainfall-runoff modelling of...
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2005-01-01
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Online Access: | http://www.hydrol-earth-syst-sci.net/9/111/2005/hess-9-111-2005.pdf |
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doaj-f26b67ca4d7847da97676cec066c4e332020-11-25T00:33:35ZengCopernicus PublicationsHydrology and Earth System Sciences1027-56061607-79382005-01-0191/2111126Constraints of artificial neural networks for rainfall-runoff modelling: trade-offs in hydrological state representation and model evaluationN. J. de VosT. H. M. RientjesT. H. M. RientjesThe application of Artificial Neural Networks (ANNs) in rainfall-runoff modelling needs to be researched more extensively in order to appreciate and fulfil the potential of this modelling approach. This paper reports on the application of multi-layer feedforward ANNs for rainfall-runoff modelling of the Geer catchment (Belgium) using both daily and hourly data. The daily forecast results indicate that ANNs can be considered good alternatives for traditional rainfall-runoff modelling approaches, but the simulations based on hourly data reveal timing errors as a result of a dominating autoregressive component. This component is introduced in model simulations by using previously observed runoff values as ANN model input, which is a popular method for indirectly representing the hydrological state of a catchment. Two possible solutions to this problem of lagged predictions are presented. Firstly, several alternatives for representation of the hydrological state are tested as ANN inputs: moving averages over time of observed discharges and rainfall, and the output of the simple GR4J model component for soil moisture. A combination of these hydrological state representers produces good results in terms of timing, but the overall goodness of fit is not as good as the simulations with previous runoff data. Secondly, the possibility of using multiple measures of model performance during ANN training is mentioned.http://www.hydrol-earth-syst-sci.net/9/111/2005/hess-9-111-2005.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
N. J. de Vos T. H. M. Rientjes T. H. M. Rientjes |
spellingShingle |
N. J. de Vos T. H. M. Rientjes T. H. M. Rientjes Constraints of artificial neural networks for rainfall-runoff modelling: trade-offs in hydrological state representation and model evaluation Hydrology and Earth System Sciences |
author_facet |
N. J. de Vos T. H. M. Rientjes T. H. M. Rientjes |
author_sort |
N. J. de Vos |
title |
Constraints of artificial neural networks for rainfall-runoff modelling: trade-offs in hydrological state representation and model evaluation |
title_short |
Constraints of artificial neural networks for rainfall-runoff modelling: trade-offs in hydrological state representation and model evaluation |
title_full |
Constraints of artificial neural networks for rainfall-runoff modelling: trade-offs in hydrological state representation and model evaluation |
title_fullStr |
Constraints of artificial neural networks for rainfall-runoff modelling: trade-offs in hydrological state representation and model evaluation |
title_full_unstemmed |
Constraints of artificial neural networks for rainfall-runoff modelling: trade-offs in hydrological state representation and model evaluation |
title_sort |
constraints of artificial neural networks for rainfall-runoff modelling: trade-offs in hydrological state representation and model evaluation |
publisher |
Copernicus Publications |
series |
Hydrology and Earth System Sciences |
issn |
1027-5606 1607-7938 |
publishDate |
2005-01-01 |
description |
The application of Artificial Neural Networks (ANNs) in rainfall-runoff modelling needs to be researched more extensively in order to appreciate and fulfil the potential of this modelling approach. This paper reports on the application of multi-layer feedforward ANNs for rainfall-runoff modelling of the Geer catchment (Belgium) using both daily and hourly data. The daily forecast results indicate that ANNs can be considered good alternatives for traditional rainfall-runoff modelling approaches, but the simulations based on hourly data reveal timing errors as a result of a dominating autoregressive component. This component is introduced in model simulations by using previously observed runoff values as ANN model input, which is a popular method for indirectly representing the hydrological state of a catchment. Two possible solutions to this problem of lagged predictions are presented. Firstly, several alternatives for representation of the hydrological state are tested as ANN inputs: moving averages over time of observed discharges and rainfall, and the output of the simple GR4J model component for soil moisture. A combination of these hydrological state representers produces good results in terms of timing, but the overall goodness of fit is not as good as the simulations with previous runoff data. Secondly, the possibility of using multiple measures of model performance during ANN training is mentioned. |
url |
http://www.hydrol-earth-syst-sci.net/9/111/2005/hess-9-111-2005.pdf |
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