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Retrospect and prospect of watershed hydrological model. (English) Zbl 1098.76507
Summary: A brief review is presented of the development of watershed hydrological models. Conventional Hydrological Model, Grey Hydrological Model, Digital Hydrological Model and Intelligent Hydrological Model are analyzed. The frameworks of Fuzzy Cognitive Hydrological Model and Integrated Digital Watershed Hydrological Model are presented.
MSC:
76A99 Foundations, constitutive equations, rheology, hydrodynamical models of non-fluid phenomena
86A05 Hydrology, hydrography, oceanography
Software:
MAM/VRS
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References:
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