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A Deep Learning-Based Data Assimilation Approach to Characterizing Coastal Aquifers Amid Non-linearity and Non-Gaussianity Challenges
  • +2
  • Chenglong Cao,
  • Jiangjiang Zhang,
  • Wei Gan,
  • Tongchao Nan,
  • Chunhui Lu
Chenglong Cao
The National Key Laboratory of Water Disaster Prevention, Hohai University, Yangtze Institute for Conservation and Development, Hohai University
Jiangjiang Zhang
The National Key Laboratory of Water Disaster Prevention, Hohai University, Yangtze Institute for Conservation and Development, Hohai University

Corresponding Author:[email protected]

Author Profile
Wei Gan
College of Mechanical and Transportation Engineering, Beijing Key Laboratory of Process Fluid Filtration and Separation, China University of Petroleum
Tongchao Nan
The National Key Laboratory of Water Disaster Prevention, Hohai University, Yangtze Institute for Conservation and Development, Hohai University
Chunhui Lu
The National Key Laboratory of Water Disaster Prevention, Hohai University, Yangtze Institute for Conservation and Development, Hohai University, College of Water Conservancy and Hydropower Engineering, Hohai University

Abstract

Seawater intrusion (SI) poses a substantial threat to water security in coastal regions, where numerical models play a pivotal role in supporting groundwater management and protection. However, the inherent heterogeneity of coastal aquifers introduces significant uncertainties into SI predictions, potentially diminishing their effectiveness in management decisions. Data assimilation (DA) offers a solution by integrating various types of observational data with the model to characterize heterogeneous coastal aquifers. Traditional DA techniques, like ensemble smoother using the Kalman formula (ESK) and Markov chain Monte Carlo, face challenges when confronted with the non-linearity, non-Gaussianity, and high-dimensionality issues commonly encountered in aquifer characterization. In this study, we introduce a novel DA approach rooted in deep learning (DL), referred to as ESDL, aimed at effectively characterizing coastal aquifers with varying levels of heterogeneity. We systematically investigate a range of factors that impact the performance of ESDL, including the number and types of observations, the degree of aquifer heterogeneity, the structure and training options of the DL models. Our findings reveal that ESDL excels in characterizing heterogeneous aquifers under non-linear and non-Gaussian conditions. Comparison between ESDL and ESK under different experimentation settings underscores the robustness of ESDL. Conversely, in certain scenarios, ESK displays noticeable biases in the characterization results, especially when measurement data from non-linear and discontinuous processes are used. To optimize the efficacy of ESDL, attention must be given to the design of the DL model and the selection of observational data, which are crucial to ensure the universal applicability of this DA method.
31 May 2024Submitted to ESS Open Archive
03 Jun 2024Published in ESS Open Archive