AILGSYMay 12, 2025

Interpretable Event Diagnosis in Water Distribution Networks

arXiv:2505.07299v11 citationsh-index: 22IntelliSys
Originality Incremental advance
AI Analysis

This addresses the issue of operator distrust in automated systems for water network management, though it is incremental by focusing on interpretability rather than new detection methods.

The paper tackles the problem of untrusted data-driven event diagnosis in water distribution networks by proposing a framework that provides counterfactual explanations to help operators combine algorithmic results with their experience, achieving improved interpretability as demonstrated on the L-Town benchmark.

The increasing penetration of information and communication technologies in the design, monitoring, and control of water systems enables the use of algorithms for detecting and identifying unanticipated events (such as leakages or water contamination) using sensor measurements. However, data-driven methodologies do not always give accurate results and are often not trusted by operators, who may prefer to use their engineering judgment and experience to deal with such events. In this work, we propose a framework for interpretable event diagnosis -- an approach that assists the operators in associating the results of algorithmic event diagnosis methodologies with their own intuition and experience. This is achieved by providing contrasting (i.e., counterfactual) explanations of the results provided by fault diagnosis algorithms; their aim is to improve the understanding of the algorithm's inner workings by the operators, thus enabling them to take a more informed decision by combining the results with their personal experiences. Specifically, we propose counterfactual event fingerprints, a representation of the difference between the current event diagnosis and the closest alternative explanation, which can be presented in a graphical way. The proposed methodology is applied and evaluated on a realistic use case using the L-Town benchmark.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes