Water (Apr 2023)

Integration of Geochemical Modeling, Multivariate Analysis, and Irrigation Indices for Assessing Groundwater Quality in the Al-Jawf Basin, Yemen

  • Mohammed Hezam Al-Mashreki,
  • Mohamed Hamdy Eid,
  • Omar Saeed,
  • András Székács,
  • Péter Szűcs,
  • Mohamed Gad,
  • Mostafa R. Abukhadra,
  • Ali A. AlHammadi,
  • Mohammed Saleh Alrakhami,
  • Mubarak Ali Alshabibi,
  • Salah Elsayed,
  • Mosaad Khadr,
  • Mohamed Farouk,
  • Hatem Saad Ramadan

DOI
https://doi.org/10.3390/w15081496
Journal volume & issue
Vol. 15, no. 8
p. 1496

Abstract

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Water quality monitoring is crucial in managing water resources and ensuring their safety for human use and environmental health. In the Al-Jawf Basin, we conducted a study on the Quaternary aquifer, where various techniques were utilized to evaluate, simulate, and predict the groundwater quality (GWQ) for irrigation. These techniques include water quality indices (IWQIs), geochemical modeling, multivariate statistical analysis, geographic information systems (GIS), and adaptive neuro-fuzzy inference systems (ANFIS). Physicochemical analysis was conducted on the collected groundwater samples to determine their composition. The results showed that the order of abundance of ions was Ca2+ > Mg2+ > Na+ > K+ and SO42− > Cl− > HCO3− > NO3−. The assessment of groundwater quality for irrigation based on indices such as Irrigation water quality index (IWQI), sodium adsorption ratio(SAR), sodium percent (Na%), soluble sodium percentage (SSP), potential salinity (PS), and residual sodium carbonate RSC, which revealed moderate-to-severe restrictions in some samples. The Adaptive Neuro-Fuzzy Inference System (ANFIS) model was then used to predict the IWQIs with high accuracy during both the training and testing phases. Overall, these findings provide valuable information for decision-makers in water quality management and can aid in the sustainable development of water resources.

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