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Spatiotemporal variations, sources, pollution status and health risk assessment of dissolved trace elements in a major Arabian Sea draining river: insights from multivariate statistical and machine learning approaches.
Singh, Shailja; Das, Anirban; Sharma, Paawan; Sudheer, A K; Gaddam, Mahesh; Ranjan, Rajnee.
Afiliação
  • Singh S; Department of Chemistry, School of Energy Technology, Pandit Deendayal Energy University, Raisan, Gandhinagar, Gujarat, 382007, India.
  • Das A; Department of Chemistry, School of Energy Technology, Pandit Deendayal Energy University, Raisan, Gandhinagar, Gujarat, 382007, India. anirban.das@spt.pdpu.ac.in.
  • Sharma P; Department of Information and Communication Technology, School of Technology, Pandit Deendayal Energy University, Gandhinagar, India.
  • Sudheer AK; Department of Geosciences, Physical Research Laboratory, Ahmedabad, India.
  • Gaddam M; Department of Geosciences, Physical Research Laboratory, Ahmedabad, India.
  • Ranjan R; Department of Environmental Science, Gujarat University, Ahmedabad, India.
Environ Geochem Health ; 46(4): 130, 2024 Mar 14.
Article em En | MEDLINE | ID: mdl-38483703
ABSTRACT
River Mahi drains through semi-arid regions (Western India) and is a major Arabian Sea draining river. As the principal surface water source, its water quality is important to the regional population. Therefore, the river water was sampled extensively (n = 64, 16 locations, 4 seasons and 2 years) and analyzed for 11 trace elements (TEs; Sr, V, Cu, Ni, Zn, Cd, Ba, Cr, Mn, Fe, and Co). Machine learning (ML) and multivariate statistical analysis (MVSA) were applied to investigate their possible sources, spatial-temporal-annual variations, evaluate multiple water quality parameters [heavy metal pollution index (HPI), heavy metal evaluation index (HEI)], and health indices [hazard quotient (HQ), and hazard index (THI)] associated with TEs. TE levels were higher than their corresponding world average values in 100% (Sr, V and Zn), 78%(Cu), 41%(Ni), 27%(Cr), 9%(Cd), 8%(Ba), 8%(Co), 6%(Fe), and 0%(Mn), of the samples. Three principal components (PCs) accounted for 74.5% of the TE variance PC-1 (Fe, Co, Mn and Cu) and PC-2 (Sr and Ba) are contributed from geogenic sources, while PC-3 (Cr, Ni and Zn) are derived from geogenic and anthropogenic sources. HPI, HEI, HQ and THI all indicate that water quality is good for domestic purposes and poses little hazard. ML identified Random forest as the most suitable model for predicting HEI class (accuracy 92%, recall 92% and precision 94%). Even with a limited dataset, the study underscores the potential application of ML to predictive classification modeling.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Oligoelementos / Poluentes Químicos da Água / Metais Pesados Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Oligoelementos / Poluentes Químicos da Água / Metais Pesados Idioma: En Ano de publicação: 2024 Tipo de documento: Article