A multi-layer nesting and integration approach for predicting groundwater levels in agriculturally intensive areas using data-driven models

[Display omitted] •Proposes a multi-layer nesting approach for predicting groundwater levels.•Optimizes input variables and lags with 5 rule constraints to reduce input dimensions.•Optimizes hyperparameters to boost individual machine learning model performance.•Combines multiple machine learning mo...

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Bibliographic Details
Published inJournal of hydrology (Amsterdam) Vol. 643; p. 132038
Main Authors Zhu, Feilin, Sun, Yimeng, Hou, Tiantian, Han, Mingyu, Zeng, Yurou, Zhu, Ou, Zhong, Ping-an
Format Journal Article
LanguageEnglish
Published Elsevier B.V 01.11.2024
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Summary:[Display omitted] •Proposes a multi-layer nesting approach for predicting groundwater levels.•Optimizes input variables and lags with 5 rule constraints to reduce input dimensions.•Optimizes hyperparameters to boost individual machine learning model performance.•Combines multiple machine learning models to enhance prediction accuracy. Agricultural water demand, groundwater extraction, surface water delivery and climate exhibit complex nonlinear relationships with groundwater storage in agricultural regions. As alternatives to computationally intensive physical models, data-driven machine learning methods are frequently employed as surrogates to capture these complex relationships, owing to their high computational efficiency. Inevitably, reliance on a single machine learning model may lead to underestimation of prediction uncertainty and potentially result in reduced accuracy. This paper presents a multi-layer nesting and integration approach for predicting groundwater levels in agriculturally intensive areas using data-driven models. The key contributions of the research are threefold: 1) the development of a comprehensive input variable selection process considering the lag effects and driving mechanisms of groundwater level variations; 2) the implementation of an optimization-based hyperparameter tuning method to enhance the performance of individual machine learning models; and 3) the establishment of a multi-model integration framework based on a multi-layer nesting technique. This approach combines the outputs of multiple machine learning models to consolidate predictions and expand the hypothesis space. The effectiveness of the proposed framework is demonstrated through case studies in the Huaihe River Basin, a major agricultural region in China. The results show that the multi-layer nesting and integration approach outperforms the use of individual machine learning models, providing more accurate and reliable groundwater level predictions. This framework offers valuable insights for decision-makers and water resource managers, supporting sustainable groundwater management and addressing the challenges faced in agriculturally intensive areas.
ISSN:0022-1694
DOI:10.1016/j.jhydrol.2024.132038