Paper ID: 2304.10932

Learning Dictionaries from Physical-Based Interpolation for Water Network Leak Localization

Paul Irofti, Luis Romero-Ben, Florin Stoican, Vicenç Puig

This article presents a leak localization methodology based on state estimation and learning. The first is handled by an interpolation scheme, whereas dictionary learning is considered for the second stage. The novel proposed interpolation technique exploits the physics of the interconnections between hydraulic heads of neighboring nodes in water distribution networks. Additionally, residuals are directly interpolated instead of hydraulic head values. The results of applying the proposed method to a well-known case study (Modena) demonstrated the improvements of the new interpolation method with respect to a state-of-the-art approach, both in terms of interpolation error (considering state and residual estimation) and posterior localization.

Submitted: Apr 21, 2023