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• A process-informed BOXGBoost framework is developed for groundwater-level prediction. • Hydrologically meaningful lagged, rolling, and cumulative features enhance model performance. • Bayesian optimization improves model robustness through automated hyperparameter tuning. • SHAP-based analysis provides interpretable insights into dominant hydroclimatic drivers. • Temporal dependencies and hydrological memory are identified as key controls of groundwater dynamics.
Ebtehaj et al. (Thu,) studied this question.