Limits of Predictability of a Global Self-Similar Routing Model in a Local Self-Similar Environment

Regional Distributed Hydrological models are being adopted around the world for prediction of streamflow fluctuations and floods. However, the details of the hydraulic geometry of the channels in the river network (cross sectional geometry, slope, drag coefficients, etc.) are not always known, which...

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Main Authors: Nicolas Velasquez, Ricardo Mantilla
Format: Article
Language:English
Published: MDPI AG 2020-07-01
Series:Atmosphere
Subjects:
Online Access:https://www.mdpi.com/2073-4433/11/8/791
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spelling doaj-85fbfbcb46a2433b81b9cfc6f86cc48d2020-11-25T03:09:19ZengMDPI AGAtmosphere2073-44332020-07-011179179110.3390/atmos11080791Limits of Predictability of a Global Self-Similar Routing Model in a Local Self-Similar EnvironmentNicolas Velasquez0Ricardo Mantilla1Department of Civil and Environmental Engineering, The University of Iowa, Iowa City, IA 52240, USADepartment of Civil and Environmental Engineering, The University of Iowa, Iowa City, IA 52240, USARegional Distributed Hydrological models are being adopted around the world for prediction of streamflow fluctuations and floods. However, the details of the hydraulic geometry of the channels in the river network (cross sectional geometry, slope, drag coefficients, etc.) are not always known, which imposes the need for simplifications based on scaling laws and their prescription. We use a distributed hydrological model forced with radar-derived rainfall fields to test the effect of spatial variations in the scaling parameters of Hydraulic Geometric (HG) relationships used to simplify routing equations. For our experimental setup, we create a virtual watershed that obeys local self-similarity laws for HG and attempt to predict the resulting hydrographs using a global self-similar HG parameterization. We find that the errors in the peak flow value and timing are consistent with the errors that are observed when trying to replicate actual observation of streamflow. Our results provide evidence that local self-similarity can be a more appropriate simplification of HG scaling laws than global self-similarity.https://www.mdpi.com/2073-4433/11/8/791distributed hydrological modelsHydrhlic geometryriver networksradar rainfall
collection DOAJ
language English
format Article
sources DOAJ
author Nicolas Velasquez
Ricardo Mantilla
spellingShingle Nicolas Velasquez
Ricardo Mantilla
Limits of Predictability of a Global Self-Similar Routing Model in a Local Self-Similar Environment
Atmosphere
distributed hydrological models
Hydrhlic geometry
river networks
radar rainfall
author_facet Nicolas Velasquez
Ricardo Mantilla
author_sort Nicolas Velasquez
title Limits of Predictability of a Global Self-Similar Routing Model in a Local Self-Similar Environment
title_short Limits of Predictability of a Global Self-Similar Routing Model in a Local Self-Similar Environment
title_full Limits of Predictability of a Global Self-Similar Routing Model in a Local Self-Similar Environment
title_fullStr Limits of Predictability of a Global Self-Similar Routing Model in a Local Self-Similar Environment
title_full_unstemmed Limits of Predictability of a Global Self-Similar Routing Model in a Local Self-Similar Environment
title_sort limits of predictability of a global self-similar routing model in a local self-similar environment
publisher MDPI AG
series Atmosphere
issn 2073-4433
publishDate 2020-07-01
description Regional Distributed Hydrological models are being adopted around the world for prediction of streamflow fluctuations and floods. However, the details of the hydraulic geometry of the channels in the river network (cross sectional geometry, slope, drag coefficients, etc.) are not always known, which imposes the need for simplifications based on scaling laws and their prescription. We use a distributed hydrological model forced with radar-derived rainfall fields to test the effect of spatial variations in the scaling parameters of Hydraulic Geometric (HG) relationships used to simplify routing equations. For our experimental setup, we create a virtual watershed that obeys local self-similarity laws for HG and attempt to predict the resulting hydrographs using a global self-similar HG parameterization. We find that the errors in the peak flow value and timing are consistent with the errors that are observed when trying to replicate actual observation of streamflow. Our results provide evidence that local self-similarity can be a more appropriate simplification of HG scaling laws than global self-similarity.
topic distributed hydrological models
Hydrhlic geometry
river networks
radar rainfall
url https://www.mdpi.com/2073-4433/11/8/791
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AT ricardomantilla limitsofpredictabilityofaglobalselfsimilarroutingmodelinalocalselfsimilarenvironment
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