Exploring the perspective of time: A framework for dynamic assessment of leakage risk in WDNs based on a joint model of survival analysis and machine learning
Yunkai Kang,
Wenhong Wu,
Yuexia Xu and
Ning Liu
Reliability Engineering and System Safety, 2025, vol. 264, issue PA
Abstract:
Assessment of leakage risk in water distribution networks (WDNs) and implementing preventive monitoring for high-risk pipelines are widely recognized strategies for mitigating leakage-related losses. Conventional leakage risk assessment methods face three critical challenges: class imbalance, insufficient modeling of time-varying risk factors, and limited model interpretability. To address these issues, we propose an interpretable machine learning framework, Interpretable Survival Analysis with Class-Imbalance Mitigation (ISACIM). The framework synergizes static risk assessment with dynamic survival analysis to achieve spatiotemporal decoupling in leakage probabilistic evaluation. By integrating hybrid data-balancing strategies and a conditional generative adversarial network (GAN), ISACIM effectively resolves leakage sample distribution skewness. Experimental results demonstrated that ISACIM achieved a 7 % improvement in leakage pipeline prediction accuracy on real-world WDN datasets, along with enhanced survival analysis performance, 7.89 % increase in Time AUC. To overcome limitations in time-dependent risk factor analysis, we introduce Shapley Additive Explanations-based methods, systematically revealing for the first time the dynamic evolution of dominant risk factors across pipeline lifecycles: material properties and joint types dominate leakage risk during the initial service phase, while length and diameter become predominant in long-term service. Furthermore, the developed web-based WDN leakage risk assessment platform integrates predictive results with interpretability analysis, providing a decision support tool combining theoretical rigor and practicability for WDNs reliability evaluation.
Keywords: Water distribution network; Machine learning; Survival analysis; Dynamic assessment; Data augmentation (search for similar items in EconPapers)
Date: 2025
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Persistent link: https://EconPapers.repec.org/RePEc:eee:reensy:v:264:y:2025:i:pa:s0951832025004958
DOI: 10.1016/j.ress.2025.111294
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