Leak Localization in Water Distribution Networks Using Pressure and Data-Driven Classifier Approach

Leaks in water distribution networks (WDNs) are one of the main reasons for water loss during fluid transportation. Considering the worldwide problem of water scarcity, added to the challenges that a growing population brings, minimizing water losses through leak detection and localization, timely and efficiently using advanced techniques is an urgent humanitarian need. There are numerous methods being used to localize water leaks in WDNs through constructing hydraulic models or analyzing flow/pressure deviations between the observed data and the estimated values. However, from the application perspective, it is very practical to implement an approach which does not rely too much on measurements and complex models with reasonable computation demand. Under this context, this paper presents a novel method for leak localization which uses a data-driven approach based on limit pressure measurements in WDNs with two stages included: (1) Two different machine learning classifiers based on linear discriminant analysis (LDA) and neural networks (NNET) are developed to determine the probabilities of each node having a leak inside a WDN; (2) Bayesian temporal reasoning is applied afterwards to rescale the probabilities of each possible leak location at each time step after a leak is detected, with the aim of improving the localization accuracy. As an initial illustration, the hypothetical benchmark Hanoi district metered area (DMA) is used as the case study to test the performance of the proposed approach. Using the fitting accuracy and average topological distance (ATD) as performance indicators, the preliminary results reaches more than 80% accuracy in the best cases.

[1]  Zhenheng Tang,et al.  Deep learning identifies accurate burst locations in water distribution networks. , 2019, Water research.

[2]  M. Mrowiec,et al.  Analysis of Water Losses and Assessment of Initiatives Aimed at Their Reduction in Selected Water Supply Systems , 2019, Water.

[3]  M. Righetti,et al.  Optimal Selection and Monitoring of Nodes Aimed at Supporting Leakages Identification in WDS , 2019, Water.

[4]  Vicenç Puig,et al.  Leak Localization in Water Distribution Networks Using a Kriging Data-Based Approach , 2018, 2018 IEEE Conference on Control Technology and Applications (CCTA).

[5]  Andrea Menapace,et al.  Uniformly Distributed Demand EPANET Extension , 2018, Water Resources Management.

[6]  Vicenç Puig,et al.  Sensor placement for classifier-based leak localization in water distribution networks using hybrid feature selection , 2018, Comput. Chem. Eng..

[7]  Shuming Liu,et al.  A review of data-driven approaches for burst detection in water distribution systems , 2017 .

[8]  Daniela Fuchs-Hanusch,et al.  Efficient Sensor Placement for Leak Localization Considering Uncertainties , 2016, Water Resources Management.

[9]  Vicenc Puig,et al.  Optimal sensor placement for classifier-based leak localization in drinking water networks , 2016, 2016 3rd Conference on Control and Fault-Tolerant Systems (SysTol).

[10]  Xue Wu,et al.  Burst detection in district metering areas using a data driven clustering algorithm. , 2016, Water research.

[11]  Vicenç Puig,et al.  Leak localization in water distribution networks using model-based Bayesian reasoning , 2016, 2016 European Control Conference (ECC).

[12]  Fatiha Nejjari,et al.  Robust sensor placement for leak location: analysis and design , 2016 .

[13]  Caroline van den Berg,et al.  Drivers of non-revenue water: A cross-national analysis , 2015 .

[14]  Fatiha Nejjari,et al.  Leak Localization in Water Networks: A Model-Based Methodology Using Pressure Sensors Applied to a Real Network in Barcelona [Applications of Control] , 2014, IEEE Control Systems.

[15]  Joby Boxall,et al.  Development and Field Validation of a Burst Localization Methodology , 2013 .

[16]  Zoran Kapelan,et al.  Geostatistical techniques for approximate location of pipe burst events in water distribution systems , 2013 .

[17]  Steven Renzetti,et al.  Buried Treasure: The Economics of Leak Detection and Water Loss Prevention in Ontario , 2013 .

[18]  Zoran Kapelan,et al.  A review of methods for leakage management in pipe networks , 2010 .

[19]  Rubén Morales-Menéndez,et al.  Leaks Detection in a Pipeline Using Artificial Neural Networks , 2009, CIARP.

[20]  Zoran Kapelan,et al.  Quo vadis water distribution model calibration? , 2009 .

[21]  Andrew J. Day,et al.  Sensor-fusion of hydraulic data for burst detection and location in a treated water distribution system , 2003, Inf. Fusion.

[22]  Guy Perrière,et al.  Use of correspondence discriminant analysis to predict the subcellular location of bacterial proteins , 2003, Comput. Methods Programs Biomed..

[23]  Ricardo A. Olea,et al.  Geostatistics for Engineers and Earth Scientists , 1999, Technometrics.

[24]  Jean Carletta,et al.  Assessing Agreement on Classification Tasks: The Kappa Statistic , 1996, CL.

[25]  David A. James Modern Applied Statistics With S-PLUS , 1994 .

[26]  K. Esbensen,et al.  Principal component analysis , 1987 .

[27]  J. R. Landis,et al.  An application of hierarchical kappa-type statistics in the assessment of majority agreement among multiple observers. , 1977, Biometrics.

[28]  A. Russell Leakage , 1948, Definitions.

[29]  Jack P. C. Kleijnen,et al.  Regression and Kriging metamodels with their experimental designs in simulation: A review , 2017, Eur. J. Oper. Res..

[30]  Leon Bieber Geostatistics For Engineers And Earth Scientists , 2016 .

[31]  Gabriella Sanniti di Baja,et al.  Progress in Pattern Recognition, Image Analysis, Computer Vision, and Applications , 2015, Lecture Notes in Computer Science.

[32]  Gabriele Freni,et al.  Contaminant Intrusion through Leaks in Water Distribution System: Experimental Analysis☆ , 2015 .

[33]  R Core Team,et al.  R: A language and environment for statistical computing. , 2014 .

[34]  Pejman Tahmasebi,et al.  Application of Discriminant Analysis for Alteration Separation; Sungun Copper Deposit, East Azerbaijan, Iran , 2010 .