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Machine learning-integrated hydrogeochemical and spatial modeling of groundwater quality indices for seawater intrusion and irrigation sustainability in coastal agroecosystems of Skhirat Region, Morocco

Hatim Sanad, Rachid Moussadek, Abdelmjid Zouahri, Majda Oueld Lhaj, Latifa Mouhir, Houria Dakak

2025Journal of Hydrology Regional Studies15 citationsDOIOpen Access PDF

Abstract

Skhirat coastal aquifer, Morocco. This study aimed to evaluate groundwater quality for drinking and irrigation, quantify seawater intrusion (SWI), and explore the added value of machine learning (ML) models for predicting groundwater indices. A total of 30 groundwater samples were collected and analyzed for physicochemical parameters. Hydrogeochemical characteristics were assessed using Piper, Gibbs, and Chadha diagrams. Water Quality Index (WQI), Irrigation Water Quality Index (IWQI), and Saltwater Mixing Index (SMI) were computed. Statistical tools (correlation matrix, PCA, K-means clustering) and GIS-based spatial interpolation were applied. Additionally, Random Forest (RF) and Artificial Neural Networks (ANN) models were tested to estimate groundwater indices and assess predictive performance. Results showed WQI values ranging from 31.58 to 139.28, with 40 % of samples falling into the “poor” to “very poor” categories for drinking. IWQI revealed that 43.3 % of samples were “good,” while 6.7 % were “very poor” for irrigation suitability. SMI values exceeded 1 in 30 % of samples, confirming SWI in northwestern zones. ANN achieved higher accuracy for IWQI prediction (R² = 0.81), while RF performed best for SMI (R² = 0.74). Spatial analysis confirmed that salinization intensified toward the coast. These findings highlight the importance of integrating hydrogeochemical analysis, geospatial mapping, and ML modeling for sustainable groundwater management in Morocco’s coastal agroecosystems. • RF and ANN models effectively predicted groundwater quality under seawater intrusion. • Spatial analysis showed strong groundwater salinization near the northwestern coast. • ANN best predicted IWQI (R 2 = 0.81); RF most accurate for SMI (R 2 = 0.74). • Hydrogeochemical diagrams and SMI confirmed active seawater intrusion zones. • First AI–hydrogeochemistry–GIS framework applied to groundwater in coastal Morocco.

Topics & Concepts

GroundwaterEnvironmental scienceHydrology (agriculture)IrrigationWater qualityGeospatial analysisSeawaterSaltwater intrusionWater resource managementSoil salinitySpatial variabilitySaline waterGeographic information systemAgroecosystemSustainabilityGroundwater rechargeGroundwater modelSurface runoffMODFLOWWatershedNormalized Difference Vegetation IndexDrainageGroundwater and Isotope GeochemistryHydrological Forecasting Using AIGroundwater and Watershed Analysis
Machine learning-integrated hydrogeochemical and spatial modeling of groundwater quality indices for seawater intrusion and irrigation sustainability in coastal agroecosystems of Skhirat Region, Morocco | Litcius