Neural network predictions of drawdown from groundwater abstraction in the Egebjerg catchment, Denmark

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  • Mathias Busk Dahl
  • Troels Norvin Vilhelmsen
  • Enemark, Trine
  • Thomas Mejer Hansen

Results from numerical simulations play a vital role in the decision process of everyday groundwa-ter management. However, these simulations can be time-consuming for large-scale investigations, and it can be necessary to apply approximate methods instead. This study investigates the abilities of a neural network to replicate simulated drawdown from groundwater abstraction in a numerical groundwater model of the Egebjerg catchment, Denmark. We follow a generalised methodology that uses the information within the deterministic numerical model to create a training set for the neural network to learn from and extend the method to work in a 3D Danish groundwater model case. We compare the abilities of the trained neural network with the results of conventional computations in terms of speed and accuracy and argue that this approach has the potential to improve decision support for decision-makers within groundwater management.

Original languageEnglish
Article number8357
JournalGEUS Bulletin
Volume53
Number of pages7
ISSN2597-2162
DOIs
Publication statusPublished - 2023

Bibliographical note

Publisher Copyright:
© 2023, GEUS - Geological Survey of Denmark and Greenland. All rights reserved.

    Research areas

  • decision support, groundwater modelling, machine learning, probabilistic neural network, resource management

ID: 376451847