GIS-based comparative charactrization of groundwater quality of Tabas basin using multivariate statistical yechniques and computational intelligence

AuthorsAhmad Aryafar
JournalInternational journal of Environmental Science and Technology
Page number6277-6290
Serial number16
Volume number10
Paper TypeFull Paper
Published At2019
Journal GradeISI
Journal TypeElectronic
Journal CountryIran, Islamic Republic Of
Journal IndexJCR،isc،Scopus

Abstract

Effective management of groundwater resources needs sustainable monitoring programs which are mainly performed based on water quality characterization. In current research, hydrochemical characteristics of Tabas basin groundwater were analyzed by Self-Organizing Map (SOM), multivariate statistical analysis and Average Groundwater Quality Index (AGWQI). Geographical Information system (GIS) was adopted to highlight the spatial variability of water indices, factors and clusters. AGWQI results show inappropriateness of groundwater for drinking purposes in some central and western parts of the study area (AGWQI>100). A three-component model which explains over 80.75% of the total groundwater quality variations was suggested after factor analysis. Factor 1 (natural hydrochemical evolution of groundwater) includes high loadings of EC, TDS, TH, Ca2+ and Na+, Factor 2 (weathering and dissolution processes) includes high loadings of pH, Mg2+, HCO3- and depth and Factor 3 (anthropogenic activities) includes high loadings of K+, Cl-, SO42- and NO3-. As the main goal of this study, groundwater data were also examined using SOM approach. Based on hydrochemical characteristics, groundwater samples were divided into three clusters. Cluster I containing 14% of groundwater samples (and sampling stations) is characterized by higher TDS, EC and TH values. Clusters 2 (characterized by higher Mg2+concentration) and 3 (characterized by higher NO3- concentration) represent 50% and 36% of samples respectively. Maps drawn show a meaningful compatibility among the spatial distribution of factors and clusters. This study proves that SOM can be successfully applied to characterize and classify groundwater in terms of quality on a regional scale

Paper URL

tags: Hydrochemistry, Average Groundwater Quality Index (AGWQI), Multivariate statistics, Self-Organizing Map (SOM), GIS, Tabas basin