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Machine learning approaches for groundwater temperature prediction in Austria: Impacts of hydro-climatic variability, feature engineering, and model complexity

  • Ameneh Sobhani
  • , Johannes Laimighofer
  • , Ronald Ortner
  • , Herbert Hofstätter
  • , Cornelia Steiner
  • , Gregor Laaha
  • Universität für Bodenkultur Wien : Standort Wien
  • GeoSphere Austria

Publikation: Beitrag in FachzeitschriftArtikelForschungBegutachtung

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Abstract

Study region
Seven Austrian sites, each representing unique hydroclimatic conditions.
Study focus
Accurate groundwater temperature (GWT) prediction is essential for water management, yet machine learning (ML) applications remain underexplored compared to groundwater level and stream temperature studies. This study introduces a novel comprehensive framework linking GWT regularity and long-term trends derived from entropy and decomposition to optimal model selection and feature engineering. Model performance was assessed across multiple algorithms, ranging from linear approaches to complex ensemble and deep learning, to determine optimal time lags under three predictor sets: (i) time only, (ii) climate only, and (iii) integrated time and climate. Predictor importance was examined using Stepwise Backward Selection (SBS) and Principal Component Analysis (PCA), followed by a direct comparison between the two methods.
New hydrological insights for the region
GWT regimes with high seasonal regularity and stable trends can be predicted accurately with simpler models, whereas irregular regimes benefit from advanced model architectures. Integrating temporal and climate predictors significantly outperforms climate-only models, achieving up to a 78 % NSE increase and a 62 % error reduction. SBS performs comparable to PCA while retaining physical interpretability, identifying air temperature and radiation as dominant predictors.
These findings highlight a site-specific workflow for GWT prediction, combining hydro-climatic diagnostics with regionally tailored ML models to account for local seasonal and trend behaviors supporting improved and regional groundwater management under climate variability.
OriginalspracheEnglisch
Aufsatznummer102987
Seitenumfang21
FachzeitschriftJournal of hydrology : Regional Studies
Jahrgang2025
AusgabenummerVolume 62, December
DOIs
PublikationsstatusElektronische Veröffentlichung vor Drucklegung. - 2 Dez. 2025

Bibliographische Notiz

Publisher Copyright:
© 2025 The Author(s). Published by Elsevier B.V. This is an open access article under the CC BY license. http://creativecommons.org/licenses/by/4.0/

UN SDGs

Dieser Output leistet einen Beitrag zu folgendem(n) Ziel(en) für nachhaltige Entwicklung

  1. SDG 7 – Erschwingliche und saubere Energie
    SDG 7 – Erschwingliche und saubere Energie
  2. SDG 13 – Klimaschutzmaßnahmen
    SDG 13 – Klimaschutzmaßnahmen

Dieses zitieren