4.5 Article

MLR index-based principal component analysis to investigate and monitor probable sources of groundwater pollution and quality in coastal areas: a case study in East India

Journal

ENVIRONMENTAL MONITORING AND ASSESSMENT
Volume 195, Issue 10, Pages -

Publisher

SPRINGER
DOI: 10.1007/s10661-023-11804-7

Keywords

Principal component analysis (PCA); Factor analysis (FA); Groundwater quality index; Multiple linear regression (MLR); SPSS

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Identifying groundwater contamination sources and monitoring groundwater quality conditions are crucial in coastal areas like Contai, India. This research utilizes advanced technologies such as principal component and factor analyses, groundwater quality index, and multiple linear regression to address these issues. The study identifies saline water, disintegration and leaching process, organic or biogenic activities, and lithogenic or non-lithogenic links as the main sources of groundwater contamination. A model consisting of turbidity, iron, electrical conductivity, manganese, total hardness, and chloride is proposed to predict groundwater quality, with turbidity being the key contributor to the entire groundwater class in the affected area.
Identifying groundwater contamination sources and supervising groundwater quality conditions are urgently needed to protect the groundwater resources of coastal areas like Contai of India, as communities here are heavily relying on groundwater which deteriorates progressively. So current research aims to address in detail about origins and influencing factors of groundwater contamination, status, and monitoring water quality by employing extremely useful leading technologies like principal component and factor analyses (PCA/FA), groundwater quality index (G(WQI)), and multiple linear regression (MLR) that helps to simplify complicated works instead of the conventional methods. Eight groundwater quality parameters were evaluated here, such as pH, TH (total hardness), Tur (turbidity), EC (electrical conductivity), TDS (total dissolved solids), Mn (manganese), Fe (iron), and Cl (chloride) for 38 sites. Three principal components with similar to 81% of the total variance were extracted from the PCA/FA analysis. The origin of maximum loadings of each factor is identified as a result of saline water, disintegration and leaching process, organic or else biogenic activities, and lithogenic or otherwise non-lithogenic links through percolating water. G(WQI) results show that similar to 87% of the samples fall into the good category and similar to 13% of the samples fall into the poor to very poor category. A model consisting of Tur, Fe, EC, Mn, TH, and Cl as independent parameters is more feasible and is proposed to predict G(WQI) obtained from MLR analysis. This MLR model also suggests that turbidity with the highest beta coefficient (0.820) is a key contributor relative to the entire groundwater class in this affected area. The findings relating to this research may support the designer and officials in monitoring and protecting coastal groundwater resources like selected areas.

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