Un modelo generador de ensambles para explorar la incertidumbre estructural en los sistemas kársticos con conductos no mapeados

Translated title of the contribution: A model ensemble generator to explore structural uncertainty in karst systems with unmapped conduits

Chloé Fandel, Ty Ferré, Zhao Chen, Philippe Renard, Nico Goldscheider

Research output: Contribution to journalArticlepeer-review

Abstract

Karst aquifers are characterized by high-conductivity conduits embedded in a low-conductivity fractured matrix, resulting in extreme heterogeneity and variable groundwater flow behavior. The conduit network controls groundwater flow, but is often unmapped, making it difficult to apply numerical models to predict system behavior. This paper presents a multi-model ensemble method to represent structural and conceptual uncertainty inherent in simulation of systems with limited spatial information, and to guide data collection. The study tests the new method by applying it to a well-mapped, geologically complex long-term study site: the Gottesacker alpine karst system (Austria/Germany). The ensemble generation process, linking existing tools, consists of three steps: creating 3D geologic models using GemPy (a Python package), generating multiple conduit networks constrained by the geology using the Stochastic Karst Simulator (a MATLAB script), and, finally, running multiple flow simulations through each network using the Storm Water Management Model (C-based software) to reject nonbehavioral models based on the fit of the simulated spring discharge to the observed discharge. This approach captures a diversity of plausible system configurations and behaviors using minimal initial data. The ensemble can then be used to explore the importance of hydraulic flow parameters, and to guide additional data collection. For the ensemble generated in this study, the network structure was more determinant of flow behavior than the hydraulic parameters, but multiple different structures yielded similar fits to the observed flow behavior. This suggests that while modeling multiple network structures is important, additional types of data are needed to discriminate between networks.

Translated title of the contributionA model ensemble generator to explore structural uncertainty in karst systems with unmapped conduits
Original languageSpanish
Pages (from-to)229-248
Number of pages20
JournalHydrogeology Journal
Volume29
Issue number1
DOIs
StatePublished - Feb 2021

Keywords

  • Alpine hydrogeology
  • Groundwater flow
  • Karst
  • Multi-model ensemble
  • Structural uncertainty

ASJC Scopus subject areas

  • Water Science and Technology
  • Earth and Planetary Sciences (miscellaneous)

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