Journal of Hydroinformatics (May 2023)

A microservice architecture for leak localization in water distribution networks using hybrid AI

  • Ganjour Mazaev,
  • Michael Weyns,
  • Pieter Moens,
  • Pieter Jan Haest,
  • Filip Vancoillie,
  • Guido Vaes,
  • Joeri Debaenst,
  • Aagje Waroux,
  • Kris Marlein,
  • Femke Ongenae,
  • Sofie Van Hoecke

DOI
https://doi.org/10.2166/hydro.2023.147
Journal volume & issue
Vol. 25, no. 3
pp. 851 – 866

Abstract

Read online

Up to 30% of all drinking water is wasted due to leaks in water distribution networks (WDNs). In times of drought and water shortage, wasting so much drinking water has a considerable environmental and financial cost. In this paper, we present a microservice architecture for leak localization in WDNs, where heterogeneous sources of data consisting of sensor measurements, Geographic Information System (GIS), and Customer Relationship Management (CRM) data are used to feed a leak monitoring solution which combines hybrid data-driven and model-based leak detection and localization methodologies. The solution is validated using in-field leak experiments in an operational WDN. The final leak probabilities are presented in a visualization dashboard. The search zone for most leaks is reduced to a few kilometers or less. For other leaks, the solution is able to indicate a larger search zone to reflect its higher leak prediction uncertainty. HIGHLIGHTS A microservice architecture for leak monitoring in WDNs is designed.; Sensor measurements and GIS and CRM data are used for leak localization.; A post-processing procedure is presented to combine leak location predictions of two hybrid model-based and data-driven methodologies.; The architecture is evaluated using real leaks in an operational WDN.;

Keywords