Earth Science Frontiers ›› 2026, Vol. 33 ›› Issue (1): 483-499.DOI: 10.13745/j.esf.sf.2025.10.19

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Frontier advances and challenges of machine learning in groundwater science

KANG Jinzheng1(), MO Shaoxing1, KANG Xueyuan2, DANG Jingxuan1, CHENG Chijitai1, XU Peijie1, SHI Xiaoqing1,*()   

  1. 1. Key Laboratory of Surficial Geochemistry of Ministry of Education, School of Earth Sciences and Engineering, Nanjing University, Nanjing 210023, China
    2. Geology and Geological Engineering Department, Colorado School of Mines, Golden, Colorado, 80401, USA
  • Received:2025-04-09 Revised:2025-08-23 Online:2026-01-25 Published:2025-11-10

Abstract:

Groundwater is a vital component of the global freshwater supply and plays a critical role in ensuring the water resource security,maintaining ecosystem stability,and supporting the sustainable development of human society. As a deeply buried,dynamically evolving,and highly heterogeneous natural system,groundwater poses persistent challenges in observation,modeling,and management,primarily due to the sparsity and uneven distribution of monitoring points and the strong nonlinearity of subsurface physical processes. In recent years,the rapid advancement of artificial intelligence—particularly machine learning—has demonstrated significant potential in feature extraction,high-dimensional nonlinear modeling,and optimization,thereby driving groundwater science into a new paradigm that integrates data-driven approaches with intelligent modeling. This paper provides a comprehensive review of machine learning applications in addressing three core scientific problems in groundwater research: element characterization,process modeling,and management optimization. Key topics include aquifer structure identification,groundwater level,storage and quality analysis,forward simulation,inverse modeling,physics-informed modeling,and groundwater resource management. Based on these developments,a generalized research framework is proposed,structured around the cycle of “scientific problem-data-driven modeling-model selection-result interpretation.” Given existing challenges such as limited incorporation of physical constraints,weak generalization capability,and poor model interpretability,this study also discusses future directions,including the integration of multi-source heterogeneous data,embedding of physical priors,and the use of causal inference methods. This work aims to provide a conceptual and methodological foundation for the application of machine learning in groundwater science and to outline pathways toward developing intelligent and sustainable groundwater systems.

Key words: groundwater science, machine learning methods, research framework, frontier advances

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