Multivariate statistics and water quality index (WQI) approach for geochemical assessment of groundwater quality-a case study of Kanavi Halla Sub-Basin, Belagavi, India

Environ Geochem Health. 2020 Sep;42(9):2667-2684. doi: 10.1007/s10653-019-00500-6. Epub 2020 Jan 3.

Abstract

Groundwater quality analysis has become essentially important in the present world scenario. In recent years, advanced technologies have replaced the traditional ones which are being helpful in simplifying the complex works. In this study, multivariate statistical analysis is carried out with the help of SPSS software for 45 groundwater samples of Kanavi Halla Sub-Basin (KHSB). The quality of groundwater is determined for various parameters which were analyzed and their concentration is correlated with other parameters using correlation matrix. The PCA technique is applied on water quality parameters, from which four components are extracted with 80.28% total variance. The extracted components suggest that the sources behind the higher loadings of each factor are by geological, agricultural, rainfall, domestic wastewater and industrial activities. Results of the Kaiser-Meyer-Olkin and Bartlett's test conducted have value of 0.659 which is greater than the standard value (0.5). Based on water quality index (WQI), it was noticeably depicted that 2/3rd of the KHSB groundwater quality falls under poor to very poor condition, and hardly 26% of groundwater available is portable. Thus, this study contributes the effective use of multivariate statistics and WQI analysis for groundwater quality. It helps in understanding the hydro-geochemistry of the groundwater and also aids in minimizing the larger set of data into smaller set with effective interpretation.

Keywords: GIS; Geochemical assessment; Ghataprabha river; Groundwater quality; Multivariate statistics; WQI.

MeSH terms

  • Agriculture
  • Environmental Monitoring / methods
  • Groundwater / analysis*
  • Groundwater / chemistry*
  • Hydrology / methods
  • Hydrology / statistics & numerical data
  • India
  • Industry
  • Multivariate Analysis
  • Wastewater
  • Water Quality*

Substances

  • Waste Water