Source Apportionment of Groundwater Pollution using Unmix and Positive Matrix Factorization

被引:0
作者
Mohammad Shahid Gulgundi
Amba Shetty
机构
[1] Presidency University,Department of Civil Engineering
[2] Itgalpur Rajanakunte,undefined
来源
Environmental Processes | 2019年 / 6卷
关键词
Groundwater quality; Source apportionment; Receptor model; Unmix; Positive matrix factorization;
D O I
暂无
中图分类号
学科分类号
摘要
Receptor models are used to understand the attributes of groundwater contaminants by recognizing their sources and evaluating the contribution from each source to receptor concentrations. Two receptor models, Unmix and Positive matrix factorization (PMF), were applied to the data obtained from 41 sampling points on 20 parameters, in order to identify and apportion the pollution sources to groundwater quality in Peenya region of Bengaluru. Overall six and seven sources were identified by Unmix and PMF models, respectively. Most groundwater quality variables were found to be influenced primarily by pollution from chromium electroplating, sewage, geology of the area and lead acid battery manufacturing units located in the study area. The models could recognize significant sources adding to groundwater quality in the region with most of them being anthropogenic due to the presence of industrial activity. It was observed that both models gave good outcomes with regard to their capacity to repeat measured concentrations with fundamentally the same slopes in a large portion of the cases, yet with the PMF model demonstrating the best correlation and the nearest slope to unit. Receptor models are regularly applied to distinguish source contributions. The dissimilarities among the results of various models are essential to better interpret source apportionment.
引用
收藏
页码:457 / 473
页数:16
相关论文
共 214 条
[41]  
Hong Y(2012)Positive matrix factorization: A non-negative factor model with optimal utilization of error estimates of data values Environ Monit Assess 184 4067-105
[42]  
Zhao J(2017)Evaluation of groundwater quality in and around Peenya industrial area of Bangalore, South India using GIS techniques Sci Total Environ 605 106-2386
[43]  
Xu L(2016)Appraisement, source apportionment and health risk of polycyclic aromatic hydrocarbons (PAHs) in vehicle-wash wastewater, Pakistan J Geo Environ Earth Sci Int 6 1-268
[44]  
Xiao H(2013)Distribution and migration of heavy metals in Peenya industrial area, Bangalore, Karnataka, India-a case study Int J Environ Pollut 51 91-462
[45]  
Cloutier V(2010)Identification of source of heavy metal contamination in a site–a case study Sci Total Environ 408 2378-286
[46]  
Lefebvre R(2008)Chemical drinking water quality in Ghana: water costs and scope for advanced treatment Environ Monit Assess 142 263-11
[47]  
Therrien R(2017)Impact of industrialization on groundwater quality–a case study of Peenya industrial area, Bangalore, India Environ Sci Pollut Res 24 445-484
[48]  
Savard MM(2006)Chemical characterization of PM1.0 aerosol in Delhi and source apportionment using positive matrix factorization Sci Total Environ 372 278-25
[49]  
Das M(2017)Source apportionment of PM2.5 in Beijing using principal component analysis/absolute principal component scores and UNMIX J Soils Sediments 18 1-4867
[50]  
Kumar A(2004)Spatial distribution and source apportionment of the heavy metals in the agricultural soil in a regional scale Radiocarbon 46 475-16