Literature DB >> 29197289

Mapping groundwater contamination risk of multiple aquifers using multi-model ensemble of machine learning algorithms.

Rahim Barzegar1, Asghar Asghari Moghaddam2, Ravinesh Deo3, Elham Fijani4, Evangelos Tziritis5.   

Abstract

Constructing accurate and reliable groundwater risk maps provide scientifically prudent and strategic measures for the protection and management of groundwater. The objectives of this paper are to design and validate machine learning based-risk maps using ensemble-based modelling with an integrative approach. We employ the extreme learning machines (ELM), multivariate regression splines (MARS), M5 Tree and support vector regression (SVR) applied in multiple aquifer systems (e.g. unconfined, semi-confined and confined) in the Marand plain, North West Iran, to encapsulate the merits of individual learning algorithms in a final committee-based ANN model. The DRASTIC Vulnerability Index (VI) ranged from 56.7 to 128.1, categorized with no risk, low and moderate vulnerability thresholds. The correlation coefficient (r) and Willmott's Index (d) between NO3 concentrations and VI were 0.64 and 0.314, respectively. To introduce improvements in the original DRASTIC method, the vulnerability indices were adjusted by NO3 concentrations, termed as the groundwater contamination risk (GCR). Seven DRASTIC parameters utilized as the model inputs and GCR values utilized as the outputs of individual machine learning models were served in the fully optimized committee-based ANN-predictive model. The correlation indicators demonstrated that the ELM and SVR models outperformed the MARS and M5 Tree models, by virtue of a larger d and r value. Subsequently, the r and d metrics for the ANN-committee based multi-model in the testing phase were 0.8889 and 0.7913, respectively; revealing the superiority of the integrated (or ensemble) machine learning models when compared with the original DRASTIC approach. The newly designed multi-model ensemble-based approach can be considered as a pragmatic step for mapping groundwater contamination risks of multiple aquifer systems with multi-model techniques, yielding the high accuracy of the ANN committee-based model.
Copyright © 2017 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  DRASTIC; Groundwater contamination risk; Iran; Machine learning model; Multi-model

Year:  2017        PMID: 29197289     DOI: 10.1016/j.scitotenv.2017.11.185

Source DB:  PubMed          Journal:  Sci Total Environ        ISSN: 0048-9697            Impact factor:   7.963


  5 in total

1.  Delimitation of groundwater zones under contamination risk using a bagged ensemble of optimized DRASTIC frameworks.

Authors:  Rahim Barzegar; Asghar Asghari Moghaddam; Jan Adamowski; Amir Hossein Nazemi
Journal:  Environ Sci Pollut Res Int       Date:  2019-01-31       Impact factor: 4.223

2.  How do data-mining models consider arsenic contamination in sediments and variables importance?

Authors:  Fahimeh Mirchooli; Alireza Motevalli; Hamid Reza Pourghasemi; Maziar Mohammadi; Prosun Bhattacharya; Fatemeh Fadia Maghsood; John P Tiefenbacher
Journal:  Environ Monit Assess       Date:  2019-11-28       Impact factor: 2.513

3.  Assessment of Seawater Intrusion in Coastal Aquifers Using Multivariate Statistical Analyses and Hydrochemical Facies Evolution-Based Model.

Authors:  Soumaya Hajji; Nabila Allouche; Salem Bouri; Awad M Aljuaid; Wafik Hachicha
Journal:  Int J Environ Res Public Health       Date:  2021-12-23       Impact factor: 3.390

4.  Limited progress in nutrient pollution in the U.S. caused by spatially persistent nutrient sources.

Authors:  Rebecca J Frei; Gabriella M Lawson; Adam J Norris; Gabriel Cano; Maria Camila Vargas; Elizabeth Kujanpää; Austin Hopkins; Brian Brown; Robert Sabo; Janice Brahney; Benjamin W Abbott
Journal:  PLoS One       Date:  2021-11-29       Impact factor: 3.240

5.  Machine Learning Analysis of Hydrologic Exchange Flows and Transit Time Distributions in a Large Regulated River.

Authors:  Huiying Ren; Xuehang Song; Yilin Fang; Z Jason Hou; Timothy D Scheibe
Journal:  Front Artif Intell       Date:  2021-04-15
  5 in total

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