Pipe Fault Prediction for Water Transmission Mains

Every network of supply waterlines experiences thousands of yearly bursts, breaks, leakages, and other failures. These failures waste a great amount of resources, as not only the waterlines need to be repaired, but also water is wasted and the distribution service is interrupted. For that reason, ma...

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Main Authors: Ariel Gorenstein, Meir Kalech, Daniela Fuchs Hanusch, Sharon Hassid
Format: Article
Language:English
Published: MDPI AG 2020-10-01
Series:Water
Subjects:
Online Access:https://www.mdpi.com/2073-4441/12/10/2861
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spelling doaj-e2699329cc00441a8e8679e9f85cce332020-11-25T03:07:33ZengMDPI AGWater2073-44412020-10-01122861286110.3390/w12102861Pipe Fault Prediction for Water Transmission MainsAriel Gorenstein0Meir Kalech1Daniela Fuchs Hanusch2Sharon Hassid3The Department of Software and Information Systems Engineering, Ben-Gurion University of the Negev, 8443944 Beer-Sheva IsraelThe Department of Software and Information Systems Engineering, Ben-Gurion University of the Negev, 8443944 Beer-Sheva IsraelInstitute of Urban Water Management, Graz University of Technology, 8044 Graz, AustriaMekorot, Israel National Water Co., 6713402 Tel-Aviv, IsraelEvery network of supply waterlines experiences thousands of yearly bursts, breaks, leakages, and other failures. These failures waste a great amount of resources, as not only the waterlines need to be repaired, but also water is wasted and the distribution service is interrupted. For that reason, many water facilities employ proactive maintenance strategies in their networks, where they replace likely-to-fail pipes in advance to prevent the failures. In this paper, we aim to establish a reliable prediction model that can accurately predict faults in waterlines prior to their occurrence. We propose a specific segmentation method for long transmission mains, as well as three data-driven models and one rule-based prediction model. We evaluate a real world waterline network used in Israel, operated by Mekorot company, using three common metrics. The results show that the data-driven algorithms outperform the rule-based model by at least 5% in each of the metrics. Additionally, their prediction becomes more accurate as they are trained with more data, but enhancing these data with geographically related features does not improve the accuracy further.https://www.mdpi.com/2073-4441/12/10/2861fault predictionmachine learningpipe segmentation
collection DOAJ
language English
format Article
sources DOAJ
author Ariel Gorenstein
Meir Kalech
Daniela Fuchs Hanusch
Sharon Hassid
spellingShingle Ariel Gorenstein
Meir Kalech
Daniela Fuchs Hanusch
Sharon Hassid
Pipe Fault Prediction for Water Transmission Mains
Water
fault prediction
machine learning
pipe segmentation
author_facet Ariel Gorenstein
Meir Kalech
Daniela Fuchs Hanusch
Sharon Hassid
author_sort Ariel Gorenstein
title Pipe Fault Prediction for Water Transmission Mains
title_short Pipe Fault Prediction for Water Transmission Mains
title_full Pipe Fault Prediction for Water Transmission Mains
title_fullStr Pipe Fault Prediction for Water Transmission Mains
title_full_unstemmed Pipe Fault Prediction for Water Transmission Mains
title_sort pipe fault prediction for water transmission mains
publisher MDPI AG
series Water
issn 2073-4441
publishDate 2020-10-01
description Every network of supply waterlines experiences thousands of yearly bursts, breaks, leakages, and other failures. These failures waste a great amount of resources, as not only the waterlines need to be repaired, but also water is wasted and the distribution service is interrupted. For that reason, many water facilities employ proactive maintenance strategies in their networks, where they replace likely-to-fail pipes in advance to prevent the failures. In this paper, we aim to establish a reliable prediction model that can accurately predict faults in waterlines prior to their occurrence. We propose a specific segmentation method for long transmission mains, as well as three data-driven models and one rule-based prediction model. We evaluate a real world waterline network used in Israel, operated by Mekorot company, using three common metrics. The results show that the data-driven algorithms outperform the rule-based model by at least 5% in each of the metrics. Additionally, their prediction becomes more accurate as they are trained with more data, but enhancing these data with geographically related features does not improve the accuracy further.
topic fault prediction
machine learning
pipe segmentation
url https://www.mdpi.com/2073-4441/12/10/2861
work_keys_str_mv AT arielgorenstein pipefaultpredictionforwatertransmissionmains
AT meirkalech pipefaultpredictionforwatertransmissionmains
AT danielafuchshanusch pipefaultpredictionforwatertransmissionmains
AT sharonhassid pipefaultpredictionforwatertransmissionmains
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