Identifying sources of groundwater contamination in a hard-rock aquifer system using multivariate statistical analyses and GIS-based geostatistical modeling techniques
Study region: The study area is Udaipur district, which is situated in hard-rock hilly terrain of Rajasthan, India. Study focus: In this study, spatio-temporal variations of fifteen groundwater quality parameters are explored by box–whisker plots, trends are detected and quantified, and GIS-based gr...
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doaj-fae65015fda140288c27f68b691f67d52020-11-24T21:34:43ZengElsevierJournal of Hydrology: Regional Studies2214-58182015-09-014PA8011010.1016/j.ejrh.2014.11.005Identifying sources of groundwater contamination in a hard-rock aquifer system using multivariate statistical analyses and GIS-based geostatistical modeling techniquesDeepesh Machiwal0Madan K. Jha1SWE Department, College of Technology and Engineering, MPUAT, Udaipur 313 001, IndiaAgFE Department, Indian Institute of Technology, Kharagpur 721 302, West Bengal, IndiaStudy region: The study area is Udaipur district, which is situated in hard-rock hilly terrain of Rajasthan, India. Study focus: In this study, spatio-temporal variations of fifteen groundwater quality parameters are explored by box–whisker plots, trends are detected and quantified, and GIS-based groundwater quality index (GQI) is computed. For the first time, scores of principal component analysis (PCA) are combined with GIS-based geostatistical modeling by following a sound methodology in comprehensive manner to identify sources of groundwater contamination. New hydrological insights for the region: Box–whisker plots revealed linkages between rainfall and groundwater quality, which were further verified by GQI ranging from 69 to 76 in Cluster I and from 73 to 78 in Cluster II. Cluster analysis identified two clusters of sites based on groundwater contamination controlled by geology. Significantly increasing trends are indicated (p < 0.05) at most sites in fluoride, sodium, EC and TDS, but significantly decreasing trends in silica at 40% sites indicate a possibility of replacement of older groundwater with recent rainfall recharge. Spatial distribution of increasing trends is affected by anthropogenic processes. Sen's method indicated increasing rates for calcium, magnesium, sodium, iron, bicarbonate, sulphate, fluoride, TDS, hardness and EC. PCA results indicated occurrence of groundwater contamination in Cluster I by anthropogenic sources and presence of natural/geogenic processes in Cluster II. Significant PCs, viz. major ion and soil leaching pollution factors, govern overall evolution of geochemical processes.http://www.sciencedirect.com/science/article/pii/S2214581814000470Geostatistical modelingGroundwater quality indexHard-rock aquifer systemMultivariate statistical techniqueContamination sourceTrend |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Deepesh Machiwal Madan K. Jha |
spellingShingle |
Deepesh Machiwal Madan K. Jha Identifying sources of groundwater contamination in a hard-rock aquifer system using multivariate statistical analyses and GIS-based geostatistical modeling techniques Journal of Hydrology: Regional Studies Geostatistical modeling Groundwater quality index Hard-rock aquifer system Multivariate statistical technique Contamination source Trend |
author_facet |
Deepesh Machiwal Madan K. Jha |
author_sort |
Deepesh Machiwal |
title |
Identifying sources of groundwater contamination in a hard-rock aquifer system using multivariate statistical analyses and GIS-based geostatistical modeling techniques |
title_short |
Identifying sources of groundwater contamination in a hard-rock aquifer system using multivariate statistical analyses and GIS-based geostatistical modeling techniques |
title_full |
Identifying sources of groundwater contamination in a hard-rock aquifer system using multivariate statistical analyses and GIS-based geostatistical modeling techniques |
title_fullStr |
Identifying sources of groundwater contamination in a hard-rock aquifer system using multivariate statistical analyses and GIS-based geostatistical modeling techniques |
title_full_unstemmed |
Identifying sources of groundwater contamination in a hard-rock aquifer system using multivariate statistical analyses and GIS-based geostatistical modeling techniques |
title_sort |
identifying sources of groundwater contamination in a hard-rock aquifer system using multivariate statistical analyses and gis-based geostatistical modeling techniques |
publisher |
Elsevier |
series |
Journal of Hydrology: Regional Studies |
issn |
2214-5818 |
publishDate |
2015-09-01 |
description |
Study region: The study area is Udaipur district, which is situated in hard-rock hilly terrain of Rajasthan, India.
Study focus: In this study, spatio-temporal variations of fifteen groundwater quality parameters are explored by box–whisker plots, trends are detected and quantified, and GIS-based groundwater quality index (GQI) is computed. For the first time, scores of principal component analysis (PCA) are combined with GIS-based geostatistical modeling by following a sound methodology in comprehensive manner to identify sources of groundwater contamination.
New hydrological insights for the region: Box–whisker plots revealed linkages between rainfall and groundwater quality, which were further verified by GQI ranging from 69 to 76 in Cluster I and from 73 to 78 in Cluster II. Cluster analysis identified two clusters of sites based on groundwater contamination controlled by geology. Significantly increasing trends are indicated (p < 0.05) at most sites in fluoride, sodium, EC and TDS, but significantly decreasing trends in silica at 40% sites indicate a possibility of replacement of older groundwater with recent rainfall recharge. Spatial distribution of increasing trends is affected by anthropogenic processes. Sen's method indicated increasing rates for calcium, magnesium, sodium, iron, bicarbonate, sulphate, fluoride, TDS, hardness and EC. PCA results indicated occurrence of groundwater contamination in Cluster I by anthropogenic sources and presence of natural/geogenic processes in Cluster II. Significant PCs, viz. major ion and soil leaching pollution factors, govern overall evolution of geochemical processes. |
topic |
Geostatistical modeling Groundwater quality index Hard-rock aquifer system Multivariate statistical technique Contamination source Trend |
url |
http://www.sciencedirect.com/science/article/pii/S2214581814000470 |
work_keys_str_mv |
AT deepeshmachiwal identifyingsourcesofgroundwatercontaminationinahardrockaquifersystemusingmultivariatestatisticalanalysesandgisbasedgeostatisticalmodelingtechniques AT madankjha identifyingsourcesofgroundwatercontaminationinahardrockaquifersystemusingmultivariatestatisticalanalysesandgisbasedgeostatisticalmodelingtechniques |
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1725947681839251456 |