Uncertainties in the simulation of groundwater recharge at different scales

Digital spatial data always imply some kind of uncertainty. The source of this uncertainty can be found in their compilation as well as the conceptual design that causes a more or less exact abstraction of the real world, depending on the scale under consideration. Within the framework of hydrologic...

Full description

Bibliographic Details
Main Authors: H. Bogena, R. Kunkel, C. Montzka, F. Wendland
Format: Article
Language:English
Published: Copernicus Publications 2005-01-01
Series:Advances in Geosciences
Online Access:http://www.adv-geosci.net/5/25/2005/adgeo-5-25-2005.pdf
id doaj-042f3e6d2d19461f8e0fe0dc3bc438a1
record_format Article
spelling doaj-042f3e6d2d19461f8e0fe0dc3bc438a12020-11-25T02:45:37ZengCopernicus PublicationsAdvances in Geosciences1680-73401680-73592005-01-0152530Uncertainties in the simulation of groundwater recharge at different scalesH. BogenaR. KunkelC. MontzkaF. WendlandDigital spatial data always imply some kind of uncertainty. The source of this uncertainty can be found in their compilation as well as the conceptual design that causes a more or less exact abstraction of the real world, depending on the scale under consideration. Within the framework of hydrological modelling, in which numerous data sets from diverse sources of uneven quality are combined, the various uncertainties are accumulated. <P style=&quot;line-height: 20px;&quot;> In this study, the GROWA model is taken as an example to examine the effects of different types of uncertainties on the calculated groundwater recharge. Distributed input errors are determined for the parameters&apos; slope and aspect using a Monte Carlo approach. Landcover classification uncertainties are analysed by using the conditional probabilities of a remote sensing classification procedure. The uncertainties of data ensembles at different scales and study areas are discussed. <P style=&quot;line-height: 20px;&quot;> The present uncertainty analysis showed that the Gaussian error propagation method is a useful technique for analysing the influence of input data on the simulated groundwater recharge. The uncertainties involved in the land use classification procedure and the digital elevation model can be significant in some parts of the study area. However, for the specific model used in this study it was shown that the precipitation uncertainties have the greatest impact on the total groundwater recharge error.http://www.adv-geosci.net/5/25/2005/adgeo-5-25-2005.pdf
collection DOAJ
language English
format Article
sources DOAJ
author H. Bogena
R. Kunkel
C. Montzka
F. Wendland
spellingShingle H. Bogena
R. Kunkel
C. Montzka
F. Wendland
Uncertainties in the simulation of groundwater recharge at different scales
Advances in Geosciences
author_facet H. Bogena
R. Kunkel
C. Montzka
F. Wendland
author_sort H. Bogena
title Uncertainties in the simulation of groundwater recharge at different scales
title_short Uncertainties in the simulation of groundwater recharge at different scales
title_full Uncertainties in the simulation of groundwater recharge at different scales
title_fullStr Uncertainties in the simulation of groundwater recharge at different scales
title_full_unstemmed Uncertainties in the simulation of groundwater recharge at different scales
title_sort uncertainties in the simulation of groundwater recharge at different scales
publisher Copernicus Publications
series Advances in Geosciences
issn 1680-7340
1680-7359
publishDate 2005-01-01
description Digital spatial data always imply some kind of uncertainty. The source of this uncertainty can be found in their compilation as well as the conceptual design that causes a more or less exact abstraction of the real world, depending on the scale under consideration. Within the framework of hydrological modelling, in which numerous data sets from diverse sources of uneven quality are combined, the various uncertainties are accumulated. <P style=&quot;line-height: 20px;&quot;> In this study, the GROWA model is taken as an example to examine the effects of different types of uncertainties on the calculated groundwater recharge. Distributed input errors are determined for the parameters&apos; slope and aspect using a Monte Carlo approach. Landcover classification uncertainties are analysed by using the conditional probabilities of a remote sensing classification procedure. The uncertainties of data ensembles at different scales and study areas are discussed. <P style=&quot;line-height: 20px;&quot;> The present uncertainty analysis showed that the Gaussian error propagation method is a useful technique for analysing the influence of input data on the simulated groundwater recharge. The uncertainties involved in the land use classification procedure and the digital elevation model can be significant in some parts of the study area. However, for the specific model used in this study it was shown that the precipitation uncertainties have the greatest impact on the total groundwater recharge error.
url http://www.adv-geosci.net/5/25/2005/adgeo-5-25-2005.pdf
work_keys_str_mv AT hbogena uncertaintiesinthesimulationofgroundwaterrechargeatdifferentscales
AT rkunkel uncertaintiesinthesimulationofgroundwaterrechargeatdifferentscales
AT cmontzka uncertaintiesinthesimulationofgroundwaterrechargeatdifferentscales
AT fwendland uncertaintiesinthesimulationofgroundwaterrechargeatdifferentscales
_version_ 1724761525465382912