TY - JOUR
T1 - Quantifying the groundwater total contamination risk using an inclusive multi-level modelling strategy
AU - Gharekhani, Maryam
AU - Nadiri, Ata Allah
AU - Khatibi, Rahman
AU - Nikoo, Mohammad Reza
AU - Barzegar, Rahim
AU - Sadeghfam, Sina
AU - Moghaddam, Asghar Asghari
N1 - Funding Information:
This work was supported by Iran National Science Foundation (INSF), Iran ( 97011397 ).
Publisher Copyright:
© 2023
PY - 2023/4/15
Y1 - 2023/4/15
N2 - This paper investigates aggregated risks in aquifers, where risk exposures may originate from different contaminants e.g. nitrate-N (NO3–N), arsenic (As), boron (B), fluoride (F), and aluminium (Al). The main goal is to develop a new concept for the total risk problem under sparse data as an efficient planning tool for management through the following methodology: (i) mapping aquifer vulnerability by DRASTIC and SPECTR frameworks; (ii) mapping risk indices to anthropogenic and geogenic contaminants by unsupervised methods; (iii) improving the anthropogenic and geogenic risks by a multi-level modelling strategy at three levels: Level 1 includes Artificial Neural Networks (ANN) and Support Vector Machines (SVM) models, Level 2 combines the outputs of Level 1 by unsupervised Entropy Model Averaging (EMA), and Level 3 integrates the risk maps of various contaminants (nitrate-N, arsenic, boron, fluoride, and aluminium) modelled at Level 2. The methodology offers new data layers to transform vulnerability indices into risk indices and thereby integrates risks by a heuristic scheme but without any learning as no measured values are available for the integrated risk. The results reveal that the risk indexing methodology is fit-for-purpose. According to the integrated risk map, there are hotspots at the study area and exposed to a number of contaminants (nitrate-N, arsenic, boron, fluoride, and aluminium).
AB - This paper investigates aggregated risks in aquifers, where risk exposures may originate from different contaminants e.g. nitrate-N (NO3–N), arsenic (As), boron (B), fluoride (F), and aluminium (Al). The main goal is to develop a new concept for the total risk problem under sparse data as an efficient planning tool for management through the following methodology: (i) mapping aquifer vulnerability by DRASTIC and SPECTR frameworks; (ii) mapping risk indices to anthropogenic and geogenic contaminants by unsupervised methods; (iii) improving the anthropogenic and geogenic risks by a multi-level modelling strategy at three levels: Level 1 includes Artificial Neural Networks (ANN) and Support Vector Machines (SVM) models, Level 2 combines the outputs of Level 1 by unsupervised Entropy Model Averaging (EMA), and Level 3 integrates the risk maps of various contaminants (nitrate-N, arsenic, boron, fluoride, and aluminium) modelled at Level 2. The methodology offers new data layers to transform vulnerability indices into risk indices and thereby integrates risks by a heuristic scheme but without any learning as no measured values are available for the integrated risk. The results reveal that the risk indexing methodology is fit-for-purpose. According to the integrated risk map, there are hotspots at the study area and exposed to a number of contaminants (nitrate-N, arsenic, boron, fluoride, and aluminium).
KW - Anthropogenci/geogenic
KW - Integrated risk index
KW - Multi-level modelling
KW - Multiple contaminants
KW - Vulnerability indexing
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U2 - 10.1016/j.jenvman.2023.117287
DO - 10.1016/j.jenvman.2023.117287
M3 - Article
C2 - 36716540
AN - SCOPUS:85147306249
SN - 0301-4797
VL - 332
JO - Journal of Environmental Management
JF - Journal of Environmental Management
M1 - 117287
ER -