Artificial Intelligence and Internet of Things-Based Leak Detection Method for the Water Supply Network

The good management and safe operation of the urban water supply network are of great significance to residents’ lives and industrial production. In view of the difficulties in supervision and leakage location of the urban water supply network, based on the technology of Internet of things and artif...

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Main Authors: Lianxiu Li, Huifan Chen
Format: Article
Language:English
Published: Wiley 2023-01-01
Series:International Transactions on Electrical Energy Systems
Online Access:http://dx.doi.org/10.1155/2023/3443047
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author Lianxiu Li
Huifan Chen
author_facet Lianxiu Li
Huifan Chen
author_sort Lianxiu Li
collection DOAJ
description The good management and safe operation of the urban water supply network are of great significance to residents’ lives and industrial production. In view of the difficulties in supervision and leakage location of the urban water supply network, based on the technology of Internet of things and artificial intelligence algorithm, a leakage detection method of the urban water supply network is proposed. First of all, low-power, low-cost terminal detection equipment and gateway monitoring equipment are developed for remote data transmission through WiFi or cellular data networks. The data organization, storage, release and control are realized by using the data center software platform. Second, the leakage location model of the water supply network is established by using remote pressure monitoring data, and the accurate location of pipe network leakage is realized. Based on ALO and PSO optimization algorithms, the water supply network in an industrial area of a city in China is solved. Finally, the performance of the two optimization algorithms is compared and analyzed. The results show that the designed intelligent monitoring system of the water supply network can monitor the pipe network well. In addition, on the problem of leakage detection, the ALO algorithm is superior to the PSO algorithm in terms of optimization ability and search efficiency. The leakage monitoring method of water supply networks proposed in this study can provide a reference for the design and management of urban water supply networks.
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spelling doaj-art-2fe56d57be8d48d694954584c33fd22c2025-08-20T03:20:22ZengWileyInternational Transactions on Electrical Energy Systems2050-70382023-01-01202310.1155/2023/3443047Artificial Intelligence and Internet of Things-Based Leak Detection Method for the Water Supply NetworkLianxiu Li0Huifan Chen1School of Civil Architecture EngineeringSchool of Civil Architecture EngineeringThe good management and safe operation of the urban water supply network are of great significance to residents’ lives and industrial production. In view of the difficulties in supervision and leakage location of the urban water supply network, based on the technology of Internet of things and artificial intelligence algorithm, a leakage detection method of the urban water supply network is proposed. First of all, low-power, low-cost terminal detection equipment and gateway monitoring equipment are developed for remote data transmission through WiFi or cellular data networks. The data organization, storage, release and control are realized by using the data center software platform. Second, the leakage location model of the water supply network is established by using remote pressure monitoring data, and the accurate location of pipe network leakage is realized. Based on ALO and PSO optimization algorithms, the water supply network in an industrial area of a city in China is solved. Finally, the performance of the two optimization algorithms is compared and analyzed. The results show that the designed intelligent monitoring system of the water supply network can monitor the pipe network well. In addition, on the problem of leakage detection, the ALO algorithm is superior to the PSO algorithm in terms of optimization ability and search efficiency. The leakage monitoring method of water supply networks proposed in this study can provide a reference for the design and management of urban water supply networks.http://dx.doi.org/10.1155/2023/3443047
spellingShingle Lianxiu Li
Huifan Chen
Artificial Intelligence and Internet of Things-Based Leak Detection Method for the Water Supply Network
International Transactions on Electrical Energy Systems
title Artificial Intelligence and Internet of Things-Based Leak Detection Method for the Water Supply Network
title_full Artificial Intelligence and Internet of Things-Based Leak Detection Method for the Water Supply Network
title_fullStr Artificial Intelligence and Internet of Things-Based Leak Detection Method for the Water Supply Network
title_full_unstemmed Artificial Intelligence and Internet of Things-Based Leak Detection Method for the Water Supply Network
title_short Artificial Intelligence and Internet of Things-Based Leak Detection Method for the Water Supply Network
title_sort artificial intelligence and internet of things based leak detection method for the water supply network
url http://dx.doi.org/10.1155/2023/3443047
work_keys_str_mv AT lianxiuli artificialintelligenceandinternetofthingsbasedleakdetectionmethodforthewatersupplynetwork
AT huifanchen artificialintelligenceandinternetofthingsbasedleakdetectionmethodforthewatersupplynetwork