Efficient optimization of pumping systems is crucial for managing salinity intrusion and ensuring groundwater sustainability in coastal aquifers. Surrogate models (SMs) are widely used in aquifer management as efficient alternatives to complex groundwater simulations. This study develops and compares six deep learning (DL)-based SMs for an optimal groundwater pumping problem. These include Simple and Deep Feed Forward Neural Networks, and four Recurrent Neural Networks (Long Short-Term Memory (LSTM), Bi-directional LSTM (Bi-LSTM), Projected Layer LSTM (pro-LSTM), and Gated Recurrent Unit Neural Network). The best DL-based SM at different monitoring locations (MLs) provided accurate predictions with high accuracy and low error metrics. To solve the coupled simulation-optimization (S-O) problem, the Multi-Objective Genetic Algorithm with Controlled Elitism (CEMOGA) and Multiple Objective Feasibility Enhanced Particle Swarm Optimization (MOFEPSO) were employed to derive Pareto-optimal groundwater abstractions. The precision of optimal pumping schedules derived from the best DL-based S-O approach was validated through the numerical model. Validation showed that MOFEPSO outperformed CEMOGA, with percentage relative error values ranging from 0 to 0.030% for CEMOGA and 0-0.025% for MOFEPSO. The best feasible bargaining solution from the Pareto front was selected using the Simple Additive Weighting (SAW) and Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS) methods, considering trade-offs between two competing objectives. The Pareto-optimal solutions and the selected best compromise provide guidance for water resource managers in planning groundwater use. These findings offer valuable insights for sustainable water resource planning and are adaptable to various groundwater management challenges.
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http://dx.doi.org/10.1016/j.jenvman.2025.124592 | DOI Listing |
Environ Geochem Health
March 2025
Department of Geology, V.O.Chidambaram College, Thoothukudi, India.
Submarine Groundwater Discharge (SGD) has a global impact, affecting coastal aquifers, the freshwater environment, and contributing to coastal development. The present study investigates the impact of Submarine Groundwater Discharge (SGD) on groundwater geochemistry along the coast from Chettikulam to Kolachel in Southern India, with an emphasis on regional changes pre and post monsoons in the years 2023-2024. A total of 80 groundwater samples (40 from both monsoons) were analyzed using hydrochemical plots such as Piper, Wilcox, Gibbs, and Hydrochemical Facies Evolution Diagrams (HFE-D), along with AquaChem software and spatial mapping techniques.
View Article and Find Full Text PDFEcol Appl
March 2025
Institute of Ecology and Evolution, University of Oregon, Eugene, Oregon, USA.
There is substantial interest in restoring tidal wetlands because of their high rates of long-term soil carbon sequestration and other valued ecosystem services. However, these wetlands are sometimes net sources of greenhouse gases (GHG) that may offset their climate cooling potential. GHG fluxes vary widely within and across tidal wetlands, so it is essential to better understand how key environmental drivers, and importantly, land management, affect GHG dynamics.
View Article and Find Full Text PDFGround Water
March 2025
Jeju Groundwater Research Center, Jeju Research Institute, Jeju City, Republic of Korea.
Jeju volcanic island of South Korea is characterized by hydrogeological heterogeneity, which has resulted in complex environments in a coastal aquifer system. The shape of the fresh-saltwater transition zone (FSTZ) and depth-dependent tidal influences on fresh-saltwater interaction in the eastern part of Jeju Island were examined by assessing geological logs from drilling cores, vertical profiles of specific conductance (SC) and temperature from geophysical logging, and performing time series analysis of groundwater level and multi-depth SC (collected from multiple sensors installed at various borehole depths). A sharp interface and step-like FSTZ were developed in the hyaloclastite and lava layers, respectively.
View Article and Find Full Text PDFChemosphere
March 2025
School of Environmental Studies, China University of Geosciences, Wuhan, 430074, China. Electronic address:
Groundwater serves as an indispensable resource for freshwater, but its quality has experienced a notable decline over recent decades. Spatial prediction of groundwater quality (GWQ) can effectively assist managers in groundwater remediation, management, and risk control. Based on the traditional intrinsic groundwater vulnerability (IGV) model (DRASTIC) and three vegetation (V) indicators (NDVI, EVI, and kNDVI) and four human activity (H) indicators (land use, GDP, urbanization index, and nighttime light), we constructed four models for GWQ spatial prediction in the Jianghan Plain (JHP), namely DRASTI, DRASTIH, DRASTIV, and DRASTIVH, excluding the conductivity (C) indicator due to its uniformly low values.
View Article and Find Full Text PDFEnviron Sci Pollut Res Int
March 2025
National Centre for Earth Science Studies, Ministry of Earth Sciences, Thiruvananthapuram, India, 695011.
Submarine Groundwater Discharge (SGD) constitutes a pivotal mechanism for the transference of freshwater, nutrients, and pollutants from terrestrial to marine environments, exerting a profound influence on coastal water quality and ecosystem dynamics. In this investigation, we executed an extensive field sampling campaign along the 650 km coastal expanse of southwest India, employing a 10-km sampling interval, to discern and validate the probable zones of SGD. We have utilized a transect-based methodology for the systematic collection of groundwater, porewater, and seawater samples, employing a suite of proxies to scrutinize SGD).
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