Literature DB >> 33562175

Machine Learning and Simulation-Optimization Coupling for Water Distribution Network Contamination Source Detection.

Luka Grbčić1,2, Lado Kranjčević1,2, Siniša Družeta1,2.   

Abstract

This paper presents and explores a novel methodology for solving the problem of a water distribution network contamination event, which includes determining the exact source of contamination, the contamination start and end times and the injected contaminant concentration. The methodology is based on coupling a machine learning algorithm for predicting the most probable contamination sources in a water distribution network with an optimization algorithm for determining the values of contamination start time, end time and injected contaminant concentration for each predicted node separately. Two slightly different algorithmic frameworks were constructed which are based on the mentioned methodology. Both algorithmic frameworks utilize the Random Forest algorithm for classification of top source contamination node candidates, with one of the frameworks directly using the stochastic fireworks optimization algorithm to determine the contamination start time, end time and injected contaminant concentration for each predicted node separately. The second framework uses the Random Forest algorithm for an additional regression prediction of each top node's start time, end time and contaminant concentration and is then coupled with the deterministic global search optimization algorithm MADS. Both a small sized (92 potential sources) network with perfect sensor measurements and a medium sized (865 potential sources) benchmark network with fuzzy sensor measurements were used to explore the proposed frameworks. Both algorithmic frameworks perform well and show robustness in determining the true source node, start and end times and contaminant concentration, with the second framework being extremely efficient on the fuzzy sensor measurement benchmark network.

Entities:  

Keywords:  MADS; fireworks algorithm; machine learning; pollution source identification; random forests; simulation-optimization; water network contamination

Year:  2021        PMID: 33562175      PMCID: PMC7916058          DOI: 10.3390/s21041157

Source DB:  PubMed          Journal:  Sensors (Basel)        ISSN: 1424-8220            Impact factor:   3.576


  9 in total

1.  Contamination source identification in water distribution networks using convolutional neural network.

Authors:  Lian Sun; Hexiang Yan; Kunlun Xin; Tao Tao
Journal:  Environ Sci Pollut Res Int       Date:  2019-11-19       Impact factor: 4.223

2.  Pollution source localization in an urban water supply network based on dynamic water demand.

Authors:  Xuesong Yan; Zhixin Zhu; Tian Li
Journal:  Environ Sci Pollut Res Int       Date:  2017-10-27       Impact factor: 4.223

3.  A new scenario of lead contamination in potable water distribution systems: Galvanic corrosion between lead and stainless steel.

Authors:  Ding-Quan Ng; Che-Yu Chen; Yi-Pin Lin
Journal:  Sci Total Environ       Date:  2018-05-22       Impact factor: 7.963

4.  Drinking water quality and formation of biofilms in an office building during its first year of operation, a full scale study.

Authors:  Jenni Inkinen; Tuija Kaunisto; Anna Pursiainen; Ilkka T Miettinen; Jaana Kusnetsov; Kalle Riihinen; Minna M Keinänen-Toivola
Journal:  Water Res       Date:  2013-11-21       Impact factor: 11.236

5.  Review of Modeling Methodologies for Managing Water Distribution Security.

Authors:  Emily Zechman Berglund; Jorge E Pesantez; Amin Rasekh; M Ehsan Shafiee; Lina Sela; Terranna Haxton
Journal:  J Water Resour Plan Manag       Date:  2020-06-13       Impact factor: 3.054

6.  Source tracking of microbial intrusion in water systems using artificial neural networks.

Authors:  Minyoung Kim; Christopher Y Choi; Charles P Gerba
Journal:  Water Res       Date:  2007-10-10       Impact factor: 11.236

7.  Machine-Learning Classification of a Number of Contaminant Sources in an Urban Water Network.

Authors:  Ivana Lučin; Luka Grbčić; Zoran Čarija; Lado Kranjčević
Journal:  Sensors (Basel)       Date:  2021-01-01       Impact factor: 3.576

8.  Comparison of topological, empirical and optimization-based approaches for locating quality detection points in water distribution networks.

Authors:  Giovanni Francesco Santonastaso; Armando Di Nardo; Enrico Creaco; Dino Musmarra; Roberto Greco
Journal:  Environ Sci Pollut Res Int       Date:  2020-08-26       Impact factor: 4.223

9.  A Machine Learning-based Algorithm for Water Network Contamination Source Localization.

Authors:  Luka Grbčić; Ivana Lučin; Lado Kranjčević; Siniša Družeta
Journal:  Sensors (Basel)       Date:  2020-05-03       Impact factor: 3.576

  9 in total

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