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From fuzzy-TOPSIS to machine learning: A holistic approach to understanding groundwater fluoride contamination.

Nandi, Rupsha; Mondal, Sandip; Mandal, Jajati; Bhattacharyya, Pradip

Authors

Rupsha Nandi

Sandip Mondal

Pradip Bhattacharyya



Abstract

Fluoride (F ) contamination of groundwater is a prevalent environmental issue threatening public health worldwide and in India. This study targets an investigation into spatial distribution and contamination sources of fluoride in Dhanbad, India, to help develop tailored mitigation strategies. A triad of Multi Criteria Decision Making (MCDM) models (Fuzzy-TOPSIS), machine learning algorithms {logistic regression (LR), classification and regression tree (CART), Random Forest (RF)}, and classical methods has been undertaken here. Groundwater samples (n=283) were collected for the purpose. Based on permissible limit (1.5ppm) of fluoride in drinking water as set by the World Health Organization, samples were categorized as Unsafe (n=67) and Safe (n=216) groups. Mean fluoride concentration in Safe (0.63±0.02ppm) and Unsafe (3.69±0.3ppm) groups differed significantly (t-value=-10.04, p<0.05). Physicochemical parameters (pH, electrical conductivity, total dissolved solids, total hardness, NO , HCO , SO , Cl , Ca , Mg , K , Na and F ) were recorded from samples of each group. The samples from 'Unsafe group' showed alkaline pH, the abundance of Na and HCO ions, prolonged rock water interaction in the aquifer, silicate weathering, carbonate dissolution, lack of Ca and calcite precipitation which together facilitated the F abundance. Aspatial distribution map of F contamination was created, pinpointing the "contaminated pockets." Fuzzy- TOPSIS identified that samples from group Safe were closer to the ideal solution. Among these models, the LR proved superior, achieving the highest AUC score of 95.6% compared to RF (91.3%) followed by CART (69.4%). This study successfully identified the primary contributors to F contamination in groundwater and the developed models can help predicting fluoride contamination in other areas. The combination of different methodologies (Fuzzy-TOPSIS, machine learning algorithms, and classical methods) results in a synergistic effect where the strengths of each approach compensate for the limitations of the other. [Abstract copyright: Copyright © 2023 Elsevier B.V. All rights reserved.]

Citation

Nandi, R., Mondal, S., Mandal, J., & Bhattacharyya, P. (2024). From fuzzy-TOPSIS to machine learning: A holistic approach to understanding groundwater fluoride contamination. Science of the Total Environment, 912, 169323. https://doi.org/10.1016/j.scitotenv.2023.169323

Journal Article Type Article
Acceptance Date Dec 10, 2023
Online Publication Date Dec 16, 2023
Publication Date 2024-02
Deposit Date Dec 29, 2023
Publicly Available Date Dec 17, 2025
Journal The Science of the total environment
Print ISSN 0048-9697
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 912
Pages 169323
DOI https://doi.org/10.1016/j.scitotenv.2023.169323
Keywords Logistic regression, Fluoride, Hydrogeochemistry, Health risk assessment, Fuzzy-TOPSIS, Water quality index
Additional Information This article is maintained by: Elsevier; Article Title: From fuzzy-TOPSIS to machine learning: A holistic approach to understanding groundwater fluoride contamination; Journal Title: Science of The Total Environment; CrossRef DOI link to publisher maintained version: https://doi.org/10.1016/j.scitotenv.2023.169323; Content Type: article; Copyright: © 2023 Elsevier B.V. All rights reserved.