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    Citas

    Título
    Assessment of the predictability of inflow to reservoirs through Bayesian causality
    Autor(es)
    Zazo del Dedo, SantiagoUSAL authority ORCID
    Molina González, José LuisUSAL authority ORCID
    Macian Sorribes, Héctor
    Pulido-Velázquez, Manuel
    Palabras clave
    Causality
    Bayes’ theorem
    Predictive models
    Temporal runoff fractions
    Temporal series analysis
    Fecha de publicación
    2023-02-27
    Citación
    Zazo, S., Molina, J. L., Macian-Sorribes, H., Pulido-Velazquez, M. (2023). Assessment of the predictability of inflow to reservoirs through Bayesian Causality. Hydrological Sciences Journal, 68(10), 1323-1337.
    Resumen
    This research assesses the predictive capacity of Bayesian causality through causal reasoning (CR), which has been successfully applied to the study of reservoir inflows. We combined autoregressive development with a causal modelling approach through a “proof of concept” that assesses the predictive capacity of the approach. The analytical power of CR revealed the logical temporal structure that defines the general behaviour of inflows, which was latent in the historical records. This allowed identifying/quantifying, through a dependence matrix, two temporal runoff fractions, one due to time and the other not. Finally, a predictive model for each temporal fraction was implemented, evaluating its forecasting skills through mean absolute error and root mean square error. This was applied to the reservoirs that supply water to the city of Ávila (Spain), whose watersheds present strong independent temporal behaviour. These results open new possibilities for developing predictive hydrological models within a CR modelling framework.
    URI
    https://hdl.handle.net/10366/162128
    ISSN
    0262-6667
    DOI
    10.1080/02626667.2023.2200143
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    • DICT. Artículos del Departamento de Ingeniería Cartográfica y del Terreno [180]
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