Artificial neural networks applied for flood forecasting in ungauged basin – the Paranaíba river study case
-
Published:2024-04-19
Issue:
Volume:386
Page:81-86
-
ISSN:2199-899X
-
Container-title:Proceedings of IAHS
-
language:en
-
Short-container-title:Proc. IAHS
Author:
Brandão Abderraman R. A.ORCID, de Menezes Filho Frederico C. M., Oliveira Paulo T. S., Fava Maria C.ORCID
Abstract
Abstract. Flow simulation using artificial neural networks (ANNs) in the modelling has been widely applied and has gained prominence in regions lacking data. The hydrological variables are subject to the influence of morphological characteristics and urbanization in the watershed. Statistical models, such as ANNs, need to be able to identify the relationship between the hydrological inputs and outputs of the model, without explicitly considering the other relationships involved in physical processes. This work aimed to apply a Multilayer Perceptron (MLP) neural network for predicting flows in an urban basin subject to recurrent floods, using precipitation and flow data from previous periods as inputs. After model calibration and validation for the current state of the basin (2018–2019), its responses were analysed using input data before the basin urbanization (1985–1986) to identify the error behaviour at the output as a proxy for the basin changes effect. Its efficiency was evaluated using hydrographs, showing satisfactory results in both periods. In the urbanization period, there is more dispersion for maximum flows. For the day 4 steps back in the current forecast, NSE = 0.59 was observed, whereas in the other period, NSE = 0.70. The evaluation of the models for the current period of basin urbanization showed that the model could capture the basin's physical dynamics within the established static relationship. Also, the result found in the statistical relationships for the inputs showed once again the impact of urbanization on the basin.
Publisher
Copernicus GmbH
Reference21 articles.
1. Agência Nacional de Águas e Saneamento Básico (ANA): HIDROWEB v3.3.7413.0, ANA [data set], https://www.snirh.gov.br/hidroweb/serieshistoricas, last access: 10 February 2023. 2. Amaral, E. A., Nascimento, A. R. T., Silva, C. R., Oliveira, A. P., and Silva, G. R.: Avaliação de impactos ambientais na APP do Rio Paranaíba e inferências para mitigação, Revista Ibero Americana de Ciências Ambientais, 12, 572–584, ISSN 2179-6858, 2021. 3. Collischonn, W. and Dornelles, F.: Hidrologia para engenharia e ciências ambientais, Porto Alegre: Associação Brasileira de Recursos Hídricos, ISBN 978-85-8868-634-2, 2021. 4. Bessa, K. C. F. O. and Soares, B. R.: Considerações Sobre A Dinâmica Demográfica Na Região Do Triângulo Mineiro/Alto Paranaíba, Caminhos de Geografia, Uberlândia, MG, 3, 22–45, https://doi.org/10.14393/RCG3615293, 2002. 5. Cristaldo, M. F., Jesus, L., Oliveira, P. T., Souza, C. C., Viganó, H. H. G, and Padovi, C. R.: Redes Neurais Artificiais Aplicadas À Previsão De Enchentes Para Região Do Pantanal No Mato Grosso Do Sul, Geociências, 39, 191–201, https://doi.org/10.5016/geociencias.v39i1.13644, 2020.
|
|