Machine learning modelling of a nonlinear environmental index with sensitivity analysis for groundwater assessment.

Journal: Scientific reports
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Abstract

The aim of this study was to evaluate groundwater quality the Marvdasht aquifer using the Groundwater Quality Index (GWQI), which was determined using a conventional method and also predicted using three machine learning algorithms: Artificial Neural Network (ANN), Support Vector Machine (SVM) and Random Forest (RF). For this purpose, groundwater quality parameters (pH, EC, TDS, TH, Na⁺, Ca2⁺, Mg2⁺, Cl⁻, HCO₃⁻, SO₄2⁻, and K⁺) were measured. The GWQI was calculated based on WHO drinking-water standards, and a spatial map was generated in ArcGIS. Results showed that TDS, EC, Na⁺, Cl⁻, and Mg2⁺ were the most influential parameters controlling groundwater quality. The groundwater quality was classified as hard to very hard and not suitable for drinking purposes in the southern and southeastern areas of the study site, while the northern area showed good quality due to limestone formations and recharge from a dam. Results also revealed that Na-Cl was the dominant water type, which indicates the groundwater evolution through rock-water interaction, dissolution, and evaporation. TDS mean variation index of 27.8 and EC with mean variation index of 15.7 were selected as the most sensitive quality parameters in GWQI calculation. Among the applied models, the ANN provided the highest accuracy (R2 = 0.999; RMSE = 1.02), followed by SVM and RF for predicting GWQI from groundwater quality parameters. It was concluded that the integration of GWQI, ANN, and GIS effectively captured spatial variations and provided a reliable framework for groundwater monitoring in arid regions.

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