Downscaling and validating GLDAS groundwater storage anomalies by integrating precipitation for recharge and actual evapotranspiration for discharge
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Date
Authors
Viviers, Cindy
Van der Laan, Michael
Gaffoor, Zaheed
Dippenaar, Matthys Alois
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier
Abstract
STUDY REGION : The Steenkoppies Catchment is located approximately 75 km southwest from Pretoria, South Africa (RSA).
STUDY FOCUS : This study tested a framework for downscaling Global Land Data Assimilation System
(GLDAS-2.2) groundwater storage anomaly (GWSA) estimates from 0.25◦ to 0.05◦. This was
achieved in Google Earth Engine using the Random Forest algorithm with only precipitation and
actual evapotranspiration (ETa) as input variables. Additionally, the study assessed whether accounting
for temporal lags could minimise residuals and enhance model performance.
NEW HYDROLOGICAL INSIGHTS FOR THE REGION : The greater range of downscaled GWSA values indicated
that the product effectively captured local recharge (precipitation) and discharge (ETa) variations
while maintaining conservation of mass. Optimising the temporal correlation (r) between input
variables resulted in lower residuals and fewer outliers. Groundwater level measurements and
downscaled estimates for the hard rock aquifer showed larger amplitudes and seasonality and
yielded the highest r (0.6) and lowest RMSE (40 mm) and MAE (31 mm). Measurements near the
spring and in the karst aquifer showed less evident amplitude and seasonality. The in situ derived
and downscaled GWSA comparison demonstrated the effectiveness of the product for monitoring
storage declines. When applied over aquifers experiencing significant land use change or belowaverage
precipitation, the approach could monitor groundwater storage changes, even with
limited in situ observations. The adaptable code is available for application in other study areas.
Description
Keywords
CHIRPS precipitation, MOD16 ETa, Remote and satellite sensing, Machine learning, South Africa (SA), Global Land Data Assimilation System (GLDAS-2.2), Groundwater storage anomaly (GWSA), SDG-15: Life on land, SDG-13: Climate action
Sustainable Development Goals
SDG-02:Zero Hunger
SDG-13:Climate action
SDG-15:Life on land
SDG-13:Climate action
SDG-15:Life on land
Citation
Viviers, C., Van der Laan, M., Gaffoor, Z. et al. 2024, 'Downscaling and validating GLDAS groundwater storage anomalies by integrating precipitation for recharge and actual evapotranspiration for discharge', Journal of Hydrology: Regional Studies, vol. 54, art. 101879, pp. 1-15. https://DOI.org/10.1016/j.ejrh.2024.101879.