Water Supply (Jan 2023)

Probabilistic leak localization in water distribution networks using a hybrid data-driven and model-based approach

  • Ganjour Mazaev,
  • Michael Weyns,
  • Filip Vancoillie,
  • Guido Vaes,
  • Femke Ongenae,
  • Sofie Van Hoecke

DOI
https://doi.org/10.2166/ws.2022.416
Journal volume & issue
Vol. 23, no. 1
pp. 162 – 178

Abstract

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In this paper, a hybrid leak localization approach in WDNs is proposed, combining both model-based and data-driven modeling. Pressure heads of leak scenarios are simulated using a hydraulic model, and then used to train a machine-learning-based leak localization model. A key element of the methodology is that discrepancies between simulated and measured pressures are accounted for using a dynamically calculated bias correction, based on historical pressure measurements. Data of in-field leak experiments in operational water distribution networks were produced to evaluate our approach on realistic test data. The results show that the leak localization model is able to reduce the leak search region in parts of the network where leaks induce detectable drops in pressure. When this is not the case, the model still localizes the leak but is able to indicate a higher level of uncertainty with respect to its leak predictions. HIGHLIGHTS Hydraulic modeling and machine learning were combined in a hybrid WDN leak localization approach.; Data sets of real in-field leak experiments were created and made publicly available, as well as code used.; Experimental leaks were localized with adaptive levels of uncertainty.;

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