Aging Water Distribution Networks: A Hybrid Spatial Decision Support and Machine Learning Framework for Leak Detection

Read the full article

Discuss this preprint

Start a discussion What are Sciety discussions?

Listed in

This article is not in any list yet, why not save it to one of your lists.
Log in to save this article

Abstract

Leak detection in aging water distribution networks (WDNs) is a complex engineering challenge influenced by nonlinear hydraulic performance, infrastructure deterioration, spatial heterogeneity, and limited confirmed failure data. Purely sensor-based and data-driven approaches often face scalability constraints and rely on simplified assumptions, limiting robustness under real operating conditions. This study proposes a hybrid spatial predictive framework that integrates pressure-driven hydraulic simulation, GIS-based Fuzzy Analytic Hierarchy Process (FAHP), and supervised machine learning to identify leakage-prone nodes in large-scale WDNs. A pressure-driven EPANET model incorporating emitter coefficients and pipe aging effects simulates realistic leakage under diurnal demand patterns. A four-rule screening process identifies 4,699 high-risk nodes from over 39,000 nodes, followed by sensitivity–correlation analysis to determine influential nodes for efficient sensor placement. Spatial and infrastructural characteristics are quantified using Fuzzy AHP through a weighted evaluation of six criteria, with pipe age identified as the dominant factor (0.382). In addition, GIS-based fuzzy AHP enables the development of a spatial leakage risk map, indicating that more than 30% of the network falls within high (20.98%) and very high (11.06%) risk categories, reflecting significant vulnerability concentrated in aging infrastructure. These features are used to train multiple classifiers, among which Extreme Gradient Boosting (XGBoost) achieves the best performance (accuracy = 0.961; ROC–AUC = 0.989). Application to a full-scale urban WDN in southern Ontario demonstrates that the framework improves leak detection reliability and supports scalable, data-driven infrastructure management.

Article activity feed