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Título
Rivers’ Temporal Sustainability through the Evaluation of Predictive Runoff Methods
Autor(es)
Palabras clave
Runoff
Temporal dependence
Rivers’ sustainability
Predictive methods
Causal reasoning
Runoff fractions
Water management
Fecha de publicación
2020-02-25
Editor
MDPI
Citación
Molina, J.L., Zazo, S., Martín-Casado, A.M. & Patino-Alonso, M.C. (2020). Rivers” temporal sustainability through the evaluation of predictive runoff methods. Sustainability (Switzerland), 12(5). https://doi.org/10.3390/SU12051720
Resumen
[EN] The concept of sustainability is assumed for this research from a temporal perspective. Rivers represent natural systems with an inherent internal memory on their runoff and, by extension, to their hydrological behavior, that should be identified, characterized and quantified. This memory is formally called temporal dependence and allows quantifying it for each river system. The ability to capture that temporal signature has been analyzed through different methods and techniques. However, there is a high heterogeneity on those methods’ analytical capacities. It is found in this research that the most advanced ones are those whose output provides a dynamic and quantitative assessment of the temporal dependence for each river system runoff. Since the runoff can be split into temporal conditioned runoff fractions, advanced methods provide an important improvement over
classic or alternative ones. Being able to characterize the basin by calculating those fractions is a very important progress for water managers that need predictive tools for orienting their water policies to a certain manner. For instance, rivers with large temporal dependence will need to be controlled and gauged by larger hydraulic infrastructures. The application of this approach may produce huge investment savings on hydraulic infrastructures and an environmental impact minimization due to the achieved optimization of the binomial cost-benefit.
URI
DOI
10.3390/su12051720
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