# Groundwater quality assessment for agricultural utilizing indexical and machine learning techniques in Ouled Djellal Aquifer, Southern Algeria

**Authors:** Ali Athamena, Aissam Gaagai, Hani Amir Aouissi, Hamza Cheniti, Halima Belalite, Billel Touati, Habibi Yahyaoui, Feriel Kheira Kebaili, Sabrina Ziad, Salah Elsayed, Ahmed Elbeltagi, Ali Salem, Zaher Mundher Yaseen, Mohamed Gad

PMC · DOI: 10.1038/s41598-026-38208-0 · Scientific Reports · 2026-02-10

## TL;DR

This study evaluates groundwater quality in Algeria using statistical and machine learning methods to guide irrigation practices.

## Contribution

The study introduces EBKRP to spatialize irrigation indices with higher precision in data-scarce arid regions.

## Key findings

- Groundwater quality in the region ranges from moderate to poor due to salinity and sodicity.
- The ANN model showed the highest predictive accuracy (R² = 0.97, RMSE = 1.50).
- The framework is adaptable for groundwater monitoring and irrigation planning in similar regions.

## Abstract

Groundwater represents the main water resource for irrigation in the Ouled Djellal region (southeast of Algeria). Despite the importance of groundwater in this area, its quality and sustainability remain insufficiently studied. Therefore, this study aimed to introduce an integrated analytical framework by combining multivariate statistical techniques i.e., Principal Component Analysis (PCA) and Hierarchical Ascending Classification (HAC), irrigation indices (IWQI, SAR, Na%, SSP, PS, and RSC), and machine learning (ML) models such as Artificial Neural Network (ANN), Support Vector Machine (SVM), and Multiple Linear Regression (MLR) to assess and predict groundwater quality for irrigation. The main difference with previous studies is the fact that this work applied Empirical Bayesian Kriging Regression Prediction (EBKRP) to spatialize irrigation indices derived from ML with higher precision. The approach enables cross-validation of model performance and captures complex nonlinear interactions among hydrochemical parameters. The attained results revealed that groundwater quality was varied from moderate to poor for irrigation, driven mainly by salinity and sodicity effects. In addition, the ANN model achieved the highest predictive accuracy (R² = 0.97, RMSE = 1.50), confirming its superiority in modelling complex hydrochemical behavior. The proposed modelling framework represents a methodological advancement for data-scarce arid regions, serving as a practical tool adaptable to groundwater monitoring and irrigation planning in similar regions.

## Full-text entities

- **Genes:** CA2 (carbonic anhydrase 2) [NCBI Gene 760] {aka CA-II, CAC, CAII, Car2, HEL-76, HEL-S-282}, CA3 (carbonic anhydrase 3) [NCBI Gene 761] {aka CAIII, Car3}
- **Diseases:** water (MESH:D000069578), HT (MESH:D006973)
- **Chemicals:** Water (MESH:D014867), Chloride (MESH:D002712), PE (MESH:D020959), NO3 (MESH:C038619), AgCl (MESH:C037548), silver (MESH:D012834), anhydrite (MESH:D002133), dolomite (MESH:C028042), oxygen (MESH:D010100), Sulfates (MESH:D013431), salt (MESH:D012492), Nitrates (MESH:D009566), Na+ - Cl- (MESH:D012965), carbonate (MESH:D002254), Silicate (MESH:D017640), magnesium chloride (MESH:D015636), aragonite (MESH:D002119), pyrite (MESH:C011342), nitrogen (MESH:D009584), EDTA (MESH:D004492), cellulose acetate (MESH:C005062), sodium carbonate (MESH:C005686), PP (MESH:D011126), H2SO4 (MESH:C033158), Ca (MESH:D002118), Mg (MESH:D008274), HNO3 (MESH:D017942), methyl orange (MESH:C100258), K+ - Cl- (MESH:D011189), Na (MESH:D012964), K (MESH:D011188), sulphur (MESH:D013455), Chloro-alkaline (-), Bicarbonate (MESH:D001639), Cl (MESH:D002713), anorthite (MESH:C074225)
- **Species:** Phoenix dactylifera (date palm, species) [taxon 42345], Homo sapiens (human, species) [taxon 9606]

## Full text

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## Figures

19 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12963420/full.md

## References

20 references — full list in the complete paper: https://tomesphere.com/paper/PMC12963420/full.md

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Source: https://tomesphere.com/paper/PMC12963420