EGU25-11710, updated on 15 Mar 2025
https://doi.org/10.5194/egusphere-egu25-11710
EGU General Assembly 2025
© Author(s) 2025. This work is distributed under
the Creative Commons Attribution 4.0 License.
Poster | Tuesday, 29 Apr, 16:15–18:00 (CEST), Display time Tuesday, 29 Apr, 14:00–18:00
 
Hall A, A.48
Development of a Web-Based Early-Warning System for Seasonal Hydrogeological Drought Prediction and Assessment of Water Resource Resilience in a Transboundary Karst System
Alireza Kavousi1,2, Margarita Saft3, Ulrich Maier1, Irina Engelhardt3, Assaf Hochman4, Micha Gebel5, Peter Dietrich6, and Martin Sauter1,2
Alireza Kavousi et al.
  • 1Geowissenschaftliches Zentrum, Abt. Angewandte Geologie, Georg-August-Universität Göttingen, 37077 Göttingen, Germany (alireza.kavousi@uni-goettingen.de)
  • 2Leibniz Institut für Angewandte Geophysik (LIAG), 30655 Hannover, Germany
  • 3Technische Universität Berlin, Berlin, 10587 Berlin, Germany
  • 4The Fredy & Nadine Herrmann Institute of Earth Sciences, Hebrew University of Jerusalem, 9190401 Jerusalem, Israel
  • 5VisDat geodatentechnologie GmbH, 01277 Dresden, Germany
  • 6Helmholtz-Zentrum für Umweltforschung GmbH – UFZ, Leipzig, Germany

Quantification and prediction of droughts have mainly been focused on the surface and/or meteorological components of the water cycle due to the complex nature of subsurface processes and limited observational data on the hydrogeological component of the water cycle. A web-based Early Warning System (EWS) has been developed to predict seasonal hydrogeological droughts and to assess the resilience of subsurface water resources in the West Bank transboundary karst system, which encompasses the territories of Israel and the Palestinian regions of the West Bank. This innovative tool integrates the monthly-released seasonal weather prediction data from the Copernicus Climate Change Service with a surrogate hydrogeological model to predict the functioning of the karst hydrogeological system and characterize its potential drought conditions. A multi-model ensemble (MME) of daily seasonal predictions has been considered to quantify the spatiotemporal uncertainty of daily climatic variables, which subsequently translates to recharge, storage, and discharge in the subsurface, to be highlighted as the ranges of hydrogeological drought indices. The surrogate deep auto-regressive neural network model (Deep-AR-Net), is utilized to reduce the computational burden of a process-based variably-saturated double-permeability model of the region. The EWS incorporates multiple variables of the MME, including precipitation and temperature, along with flow observations on groundwater levels and spring discharges, to predict hydrogeological conditions during the upcoming six months via Deep-AR-Net. The EWS presents results through an interactive map interface and graphical displays, allowing water resource managers to visualize potential droughts and compare predictions against established drought index thresholds. The development of the EWS is a significant advancement in hydrogeological drought prediction and water resource management for karst systems in arid and semi-arid region. By providing a shared platform for data analysis and visualization, it facilitates collaborative decision-making and helps to prevent potential conflicts related to water use in this sensitive region, which has always been under significant water stress and political tension. More specifically, it will support water managers and policymakers as a powerful instrument to enhance drought preparedness, optimize water allocation, and implement timely mitigation strategies in the face of increasing climate variability and water scarcity.

How to cite: Kavousi, A., Saft, M., Maier, U., Engelhardt, I., Hochman, A., Gebel, M., Dietrich, P., and Sauter, M.: Development of a Web-Based Early-Warning System for Seasonal Hydrogeological Drought Prediction and Assessment of Water Resource Resilience in a Transboundary Karst System, EGU General Assembly 2025, Vienna, Austria, 27 Apr–2 May 2025, EGU25-11710, https://doi.org/10.5194/egusphere-egu25-11710, 2025.