Comparing Meteorological Data Sets in the Evaluation of Climate Change Impact on Hydrological Indicators: A Case Study on a Mexican Basin

This study evaluates the choice of the meteorological data set in the simulation of the streamflow of a Mexican basin, in the bias correction of climate simulations, and in the climate change impact on hydrological indicators. The selected meteorological data sets come from stations, two interpolate...

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Main Author: Juan Alberto Velázquez-Zapata
Format: Article
Language:English
Published: MDPI AG 2019-10-01
Series:Water
Subjects:
Online Access:https://www.mdpi.com/2073-4441/11/10/2110
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spelling doaj-b7259137595942059bc2be76f83f19e42020-11-25T00:09:54ZengMDPI AGWater2073-44412019-10-011110211010.3390/w11102110w11102110Comparing Meteorological Data Sets in the Evaluation of Climate Change Impact on Hydrological Indicators: A Case Study on a Mexican BasinJuan Alberto Velázquez-Zapata0Consejo Nacional de Ciencia y Tecnología (Conacyt)-El Colegio de San Luis, San Luis Potosi 78380, MexicoThis study evaluates the choice of the meteorological data set in the simulation of the streamflow of a Mexican basin, in the bias correction of climate simulations, and in the climate change impact on hydrological indicators. The selected meteorological data sets come from stations, two interpolated data sets and one reanalysis data set. The climate simulations were taken from the five-member ensemble from the second generation Canadian Earth System Model (CanESM2) under two representative concentration pathways (RCPs), for a reference period (1981−2000) and two future periods (2041−2060 and 2081−2100). The selected lumped hydrological model is GR4J, which is a daily lumped four-parameter rainfall-runoff model. Firstly, the results show that GR4J can be calibrated and validated with the meteorological data sets to simulate daily streamflow; however, the hydrological model leads to different hydrological responses for the basin. Secondly, the bias correction procedure obtains a similar relative climate change signal for the variables, but the magnitude of the signal strongly varies with the source of meteorological data. Finally, the climate change impact on hydrological indicators also varies depending on the meteorological data source, thus, for the overall mean flow, this uncertainty is greater than the uncertainty related to the natural variability. On the other hand, mixed results were found for high flows. All in all, the selection of meteorological data source should be taken into account in the evaluation of climate change impact on water resources.https://www.mdpi.com/2073-4441/11/10/2110meteorological datasetsreanalysisclimate change impacthydrologygr4j
collection DOAJ
language English
format Article
sources DOAJ
author Juan Alberto Velázquez-Zapata
spellingShingle Juan Alberto Velázquez-Zapata
Comparing Meteorological Data Sets in the Evaluation of Climate Change Impact on Hydrological Indicators: A Case Study on a Mexican Basin
Water
meteorological datasets
reanalysis
climate change impact
hydrology
gr4j
author_facet Juan Alberto Velázquez-Zapata
author_sort Juan Alberto Velázquez-Zapata
title Comparing Meteorological Data Sets in the Evaluation of Climate Change Impact on Hydrological Indicators: A Case Study on a Mexican Basin
title_short Comparing Meteorological Data Sets in the Evaluation of Climate Change Impact on Hydrological Indicators: A Case Study on a Mexican Basin
title_full Comparing Meteorological Data Sets in the Evaluation of Climate Change Impact on Hydrological Indicators: A Case Study on a Mexican Basin
title_fullStr Comparing Meteorological Data Sets in the Evaluation of Climate Change Impact on Hydrological Indicators: A Case Study on a Mexican Basin
title_full_unstemmed Comparing Meteorological Data Sets in the Evaluation of Climate Change Impact on Hydrological Indicators: A Case Study on a Mexican Basin
title_sort comparing meteorological data sets in the evaluation of climate change impact on hydrological indicators: a case study on a mexican basin
publisher MDPI AG
series Water
issn 2073-4441
publishDate 2019-10-01
description This study evaluates the choice of the meteorological data set in the simulation of the streamflow of a Mexican basin, in the bias correction of climate simulations, and in the climate change impact on hydrological indicators. The selected meteorological data sets come from stations, two interpolated data sets and one reanalysis data set. The climate simulations were taken from the five-member ensemble from the second generation Canadian Earth System Model (CanESM2) under two representative concentration pathways (RCPs), for a reference period (1981−2000) and two future periods (2041−2060 and 2081−2100). The selected lumped hydrological model is GR4J, which is a daily lumped four-parameter rainfall-runoff model. Firstly, the results show that GR4J can be calibrated and validated with the meteorological data sets to simulate daily streamflow; however, the hydrological model leads to different hydrological responses for the basin. Secondly, the bias correction procedure obtains a similar relative climate change signal for the variables, but the magnitude of the signal strongly varies with the source of meteorological data. Finally, the climate change impact on hydrological indicators also varies depending on the meteorological data source, thus, for the overall mean flow, this uncertainty is greater than the uncertainty related to the natural variability. On the other hand, mixed results were found for high flows. All in all, the selection of meteorological data source should be taken into account in the evaluation of climate change impact on water resources.
topic meteorological datasets
reanalysis
climate change impact
hydrology
gr4j
url https://www.mdpi.com/2073-4441/11/10/2110
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