Prediction of Bacterial Contamination Outbursts in Water Wells through Sparse Coding

Abstract Maintaining water quality is critical for any water distribution company. One of the major concerns in water quality assurance, is bacterial contamination in water sources. To date, bacteria growth models cannot predict with sufficient accuracy when a bacteria outburst will occur in a water...

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Main Authors: Levi Frolich, Dalit Vaizel-Ohayon, Barak Fishbain
Format: Article
Language:English
Published: Nature Publishing Group 2017-04-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-017-00830-4
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spelling doaj-c5f6686f428e4be19f0202d15ddc488a2020-12-08T00:47:34ZengNature Publishing GroupScientific Reports2045-23222017-04-017111110.1038/s41598-017-00830-4Prediction of Bacterial Contamination Outbursts in Water Wells through Sparse CodingLevi Frolich0Dalit Vaizel-Ohayon1Barak Fishbain2Technion Enviromatics Lab (TechEL), Faculty of Civil and Environmental Engineering, Technion – Israeli Institute of TechnologyMekorot – National Water Analysis Lab, Israel National Water CompanyTechnion Enviromatics Lab (TechEL), Faculty of Civil and Environmental Engineering, Technion – Israeli Institute of TechnologyAbstract Maintaining water quality is critical for any water distribution company. One of the major concerns in water quality assurance, is bacterial contamination in water sources. To date, bacteria growth models cannot predict with sufficient accuracy when a bacteria outburst will occur in a water well. This is partly due to the natural sparsity of the bacteria count time series, which hinders the observation of deviations from normal behavior. This precludes the application of mathematical models nor statistical quality control methods for the detection of high bacteria counts before contamination occurs. As a result, currently a future outbreak prediction is a subjective process. This research developed a new cost-effective method that capitalizes on the sparsity of the bacteria count time series. The presented method first transforms the data into its spectral representation, where it is no longer sparse. Capitalizing on the spectral representation the dimensions of the problem are reduced. Machine learning methods are then applied on the reduced representations for predicting bacteria outbursts from the bacterial counts history of a well. The results show that these tools can be implemented by the water quality engineering community to create objective, more robust, quality control techniques to ensure safer water distribution.https://doi.org/10.1038/s41598-017-00830-4
collection DOAJ
language English
format Article
sources DOAJ
author Levi Frolich
Dalit Vaizel-Ohayon
Barak Fishbain
spellingShingle Levi Frolich
Dalit Vaizel-Ohayon
Barak Fishbain
Prediction of Bacterial Contamination Outbursts in Water Wells through Sparse Coding
Scientific Reports
author_facet Levi Frolich
Dalit Vaizel-Ohayon
Barak Fishbain
author_sort Levi Frolich
title Prediction of Bacterial Contamination Outbursts in Water Wells through Sparse Coding
title_short Prediction of Bacterial Contamination Outbursts in Water Wells through Sparse Coding
title_full Prediction of Bacterial Contamination Outbursts in Water Wells through Sparse Coding
title_fullStr Prediction of Bacterial Contamination Outbursts in Water Wells through Sparse Coding
title_full_unstemmed Prediction of Bacterial Contamination Outbursts in Water Wells through Sparse Coding
title_sort prediction of bacterial contamination outbursts in water wells through sparse coding
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2017-04-01
description Abstract Maintaining water quality is critical for any water distribution company. One of the major concerns in water quality assurance, is bacterial contamination in water sources. To date, bacteria growth models cannot predict with sufficient accuracy when a bacteria outburst will occur in a water well. This is partly due to the natural sparsity of the bacteria count time series, which hinders the observation of deviations from normal behavior. This precludes the application of mathematical models nor statistical quality control methods for the detection of high bacteria counts before contamination occurs. As a result, currently a future outbreak prediction is a subjective process. This research developed a new cost-effective method that capitalizes on the sparsity of the bacteria count time series. The presented method first transforms the data into its spectral representation, where it is no longer sparse. Capitalizing on the spectral representation the dimensions of the problem are reduced. Machine learning methods are then applied on the reduced representations for predicting bacteria outbursts from the bacterial counts history of a well. The results show that these tools can be implemented by the water quality engineering community to create objective, more robust, quality control techniques to ensure safer water distribution.
url https://doi.org/10.1038/s41598-017-00830-4
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