Case Study for Predicting Failures in Water Supply Networks Using Neural Networks

被引:2
作者
de Sousa Medeiros, Viviano [1 ]
dos Santos, Moises Dantas [2 ]
Brito, Alisson Vasconcelos [3 ]
机构
[1] Univ Fed Paraiba, Ctr Technol, Grad Program Mech Engn, TRIL Lab, BR-58058600 Joao Pessoa, Brazil
[2] Univ Fed Paraiba, Ctr Informat, Sci Comp Dept, TRIL Lab, BR-58058600 Joao Pessoa, Brazil
[3] Univ Fed Paraiba, Ctr Informat, Sci Comp Dept, LASER Lab, BR-58058600 Joao Pessoa, Brazil
关键词
fault prediction; water supply networks; machine learning; predictive modeling; infrastructure management; MODELS; RISK;
D O I
10.3390/w16101455
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
This study deals with the prediction of recurring failures in water supply networks, a complex and costly task, but essential for the effective maintenance of these vital infrastructures. Using historical failure data provided by Companhia de & Aacute;gua e Esgotos da Para & iacute;ba (CAGEPA), the research focuses on predicting the time until the next failure at specific points in the network. The authors divided the failures into two categories: Occurrences of New Faults (ONFs) and Recurrences of Faults (RFs). To perform the predictions, they used predictive models based on machine learning, more specifically on MLP (Multi-Layer Perceptron) neural networks. The investigation unveiled that through the analysis of historical failure data and the consideration of variables including altitude, number of failures on the same street, and days between failures, it is possible to achieve an accuracy greater than 80% in predicting failures within a 90-day interval. This demonstrates the feasibility of using fault history to predict future water supply outages with significant accuracy. These forecasts allow water utilities to plan and optimize their maintenance, minimizing inconvenience and losses. The article contributes significantly to the field of water infrastructure management by proposing the applicability of a data-driven approach in diverse urban settings and across various types of infrastructure networks, including those pertaining to energy or communication. These conclusions underscore the paramount importance of systematic data collection and analysis in both averting failures and optimizing the allocation of resources within water utilities.
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页数:12
相关论文
共 31 条
[1]   Improving pipe failure predictions: Factors affecting pipe failure in drinking water networks [J].
Barton, Neal Andrew ;
Farewell, Timothy Stephen ;
Hallett, Stephen Henry ;
Acland, Timothy Francis .
WATER RESEARCH, 2019, 164
[2]  
Chatzigeorgakidis G, 2015, PROCEEDINGS 2015 IEEE INTERNATIONAL CONFERENCE ON BIG DATA, P952, DOI 10.1109/BigData.2015.7363844
[3]   Identification of urban drinking water supply patterns across 627 cities in China based on supervised and unsupervised statistical learning [J].
De Clercq, Djavan ;
Smith, Kate ;
Chou, Brandon ;
Gonzalez, Andrew ;
Kothapalle, Rinitha ;
Li, Charles ;
Dong, Xin ;
Liu, Shuming ;
Wen, Zongguo .
JOURNAL OF ENVIRONMENTAL MANAGEMENT, 2018, 223 :658-667
[4]  
Faceli K., 2021, Inteligncia Artificial: Uma Abordagem de Aprendizado de Mquina
[5]   Machine learning based water pipe failure prediction: The effects of engineering, geology, climate and socio-economic factors [J].
Fan, Xudong ;
Wang, Xiaowei ;
Zhang, Xijin ;
Yu, Xiong .
RELIABILITY ENGINEERING & SYSTEM SAFETY, 2022, 219
[6]  
Google Visao Geral da API, 2024, Elevation
[7]   Pipe Fault Prediction for Water Transmission Mains [J].
Gorenstein, Ariel ;
Kalech, Meir ;
Hanusch, Daniela Fuchs ;
Hassid, Sharon .
WATER, 2020, 12 (10)
[8]   Integrating failure prediction models for water mains: Bayesian belief network based data fusion [J].
Kabir, Golam ;
Demissie, Gizachew ;
Sadiq, Rehan ;
Tesfamariam, Solomon .
KNOWLEDGE-BASED SYSTEMS, 2015, 85 :159-169
[9]   Predicting water main failures: A Bayesian model updating approach [J].
Kabir, Golarn ;
Tesfamariam, Solomon ;
Loeppky, Jason ;
Sadiq, Rehan .
KNOWLEDGE-BASED SYSTEMS, 2016, 110 :144-156
[10]   Neural network approach for failure rate prediction [J].
Kutylowska, Malgorzata .
ENGINEERING FAILURE ANALYSIS, 2015, 47 :41-48