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Improving transparency in karst spring discharge and water quality forecasts using interpretable machine learning models in the Eastern Alps

  • Anna Pölz
  • , Alfred Paul Blaschke
  • , Katalin Demeter
  • , Günter Blöschl
  • , Margaret E. Stevenson
  • , Helene Bauer
  • , Liping Pang
  • , Andreas H. Farnleitner
  • , Julia Derx*
  • *Korrespondierende:r Autor:in für diese Arbeit

Publikation: Beitrag in Fachzeitschrift (peer-reviewed)Artikel in Fachzeitschrift

Abstract

AbstractStudy regionKarst springs draining the Hochschwab massif, Eastern Alps, Austria.Study focusAccurate forecasting of spring discharge and water quality is crucial for sustainable water resource management. Although machine learning (ML) models have shown considerable potential for forecasting hydrological variables, understanding the underlying processes remains limited. This study aimed to improve the transparency of ML models through an attribution analysis, which explores the contribution of local environmental factors to forecasts. Several ML models were deployed to predict spring discharge and water quality, measured by the spectral absorption coefficient at 254 nm (UV254), up to four days in advance at karst springs.Innovative insightsThe Deep SHAP method aided in identifying significant seasonal variations in model attributions, showing the most pronounced changes for snow depth, followed by physicochemical variables such as electrical conductivity and other meteorological variables. The Transformer model exhibited the best overall performance. Model uncertainty, assessed through the Deep Ensemble method, is greater in spring and summer, and both the model errors and uncertainties increase with variability of the target variables. To evaluate model applicability for selective water abstraction, we classified UV254 forecasts based on threshold exceedance, achieving high classification accuracy (>95 % for 1-day and >90 % for 2-day forecasts). Integrating Deep SHAP and Deep Ensemble methods enhanced ML transparency. This combined approach provides insights that can inform drinking water management decisions in karst systems.

OriginalspracheEnglisch
Aufsatznummer103147
FachzeitschriftJournal of Hydrology: Regional Studies
Jahrgang64
DOIs
PublikationsstatusVeröffentlicht - Apr. 2026

ASJC Scopus Sachgebiete

  • Gewässerkunde und -technologie
  • Erdkunde und Planetologie (sonstige)

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