Locating Multiple Leaks in Water Distribution Networks Combining Physically Based and Data-Driven Models and High-Performance Computing

Journal Article (2023)
Author(s)

Clara Maria Corzo (IHE Delft Institute for Water Education)

Leonardo Alfonso (IHE Delft Institute for Water Education)

Gerald A. Corzo (IHE Delft Institute for Water Education)

Dmitri P. Solomatine (TU Delft - Water Resources, IHE Delft Institute for Water Education)

Research Group
Water Resources
Copyright
© 2023 Clara Maria Corzo, Leonardo Alfonso, Gerald Corzo, D.P. Solomatine
DOI related publication
https://doi.org/10.1061/JWRMD5.WRENG-6005
More Info
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Publication Year
2023
Language
English
Copyright
© 2023 Clara Maria Corzo, Leonardo Alfonso, Gerald Corzo, D.P. Solomatine
Research Group
Water Resources
Issue number
12
Volume number
149
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Abstract

Water utilities are urged to decrease their real water losses, not only to reduce costs but also to assure long-term sustainability. Hardware- and software-based techniques have been broadly used to locate leaks; within the latter, previous works that have used data-driven models mostly focused on single leaks. This paper presents a methodology to locate multiple leaks in water distribution networks employing pressure residuals. It consists of two phases: one is to produce training data for the data-driven model and cluster the nodes based on their leak-flow-rate-independent signatures using an adapted hierarchical agglomerative algorithm; the second is to locate the leaks using a top-down approach. To identify the leaking clusters and nodes, we employed a custom-built k-nearest neighbor (k-NN) algorithm that compares the test instances with the generated training data. This instance-to-instance comparison requires substantial computational resources for classification, which was overcome by the use of high-performance computing. The methodology was applied to a real network located in a European town, comprising 144 nodes and a total length of pipes of 24 km. Although its multiple inlets add redundancy to the network increasing the challenge of leak location, the method proved to obtain acceptable results to guide the field pinpointing activities. Nearly 70% of the areas determined by the clusters were identified with an accuracy of over 90% for leak flows above 3.0 L/s, and the leaking nodes were accurately detected over 50% of the time for leak flows above 4.0 L/s.