Developing a pan-European high-resolution groundwater recharge map – Combining satellite data and national survey data using machine learning

Journal Article (2022)
Author(s)

Grith Martinsen (Geological Survey of Denmark and Greenland)

Helene Bessiere (Bureau de Recherches Géologiques et Minières )

Yvan Caballero (Université Montpellier II, Bureau de Recherches Géologiques et Minières )

Julian Koch (Geological Survey of Denmark and Greenland)

Antonio Juan Collados-Lara (Instituto Geológico y Minero de España)

Majdi Mansour (British Geological Survey)

Olli Sallasmaa (Geological Survey of Finland)

David Pulido-Velazquez (Instituto Geológico y Minero de España)

Natalya Hunter Williams (Geological Survey Ireland)

Willem Jan Zaadnoordijk (TNO, TU Delft - Water Resources)

Simon Stisen (Geological Survey of Denmark and Greenland)

DOI related publication
https://doi.org/10.1016/j.scitotenv.2022.153464 Final published version
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Publication Year
2022
Language
English
Journal title
Science of the Total Environment
Volume number
822
Article number
153464
Pages (from-to)
1-15
Downloads counter
360
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Abstract

Groundwater recharge quantification is essential for sustainable groundwater resources management, but typically limited to local and regional scale estimates. A high-resolution (1 km × 1 km) dataset consisting of long-term average actual evapotranspiration, effective precipitation, a groundwater recharge coefficient, and the resulting groundwater recharge map has been created for all of Europe using a variety of pan-European and seven national gridded datasets. As an initial step, the approach developed for continental scale mapping consists of a merged estimate of actual evapotranspiration originating from satellite data and the vegetation controlled Budyko approach to subsequently estimate effective precipitation. Secondly, a machine learning model based on the Random Forest regressor was developed for mapping groundwater recharge coefficients, using a range of covariates related to geology, soil, topography and climate. A common feature of the approach is the validation and training against effective precipitation, recharge coefficients and groundwater recharge from seven national gridded datasets covering the UK, Ireland, Finland, Denmark, the Netherlands, France and Spain, representing a wide range of climatic and hydrogeological conditions across Europe. The groundwater recharge map provides harmonised high-resolution estimates across Europe and locally relevant estimates for areas where this information is otherwise not available, while being consistent with the existing national gridded datasets. The Pan-European groundwater recharge pattern compares well with results from the global hydrological model PCR-GLOBWB 2. At country scale, the results were compared to a German recharge map showing great similarity. The full dataset of long-term average actual evapotranspiration, effective precipitation, recharge coefficients and groundwater recharge is available through the EuroGeoSurveys' open access European Geological Data Infrastructure (EGDI).