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Aproximaciones neuronales univariantes para la predicción de caudales diarios en cuencas portuguesas

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Aproximaciones neuronales univariantes para la predicción de caudales diarios en cuencas portuguesas

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Pulido-Calvo, I.; Portela, MM. (2007). Aproximaciones neuronales univariantes para la predicción de caudales diarios en cuencas portuguesas. Ingeniería del agua. 14(2):97-111. https://doi.org/10.4995/ia.2007.2905

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Título: Aproximaciones neuronales univariantes para la predicción de caudales diarios en cuencas portuguesas
Autor: Pulido-Calvo, I. Portela, M. Manuela
Fecha difusión:
Resumen:
[ES] Desde hace unos años, las redes neuronales computacionales están siendo una de las herramientas más prometedoras para la estimación de caudales en cuencas. La mayoría de los trabajos de la literatura utilizan para las ...[+]
Derechos de uso: Reserva de todos los derechos
Fuente:
Ingeniería del agua. (issn: 1134-2196 ) (eissn: 1886-4996 )
DOI: 10.4995/ia.2007.2905
Editorial:
Universitat Politècnica de València
Versión del editor: https://doi.org/10.4995/ia.2007.2905
Tipo: Artículo

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References

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