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Detailed Leak Localization in Water Distribution Networks Using Random Forest Classifier and Pipe Segmentation (CROSBI ID 306734)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Lučin, Ivana ; Čarija, Zoran ; Družeta, Siniša ; Lučin, Bože Detailed Leak Localization in Water Distribution Networks Using Random Forest Classifier and Pipe Segmentation // IEEE access, 9 (2021), 155113-155122. doi: 10.1109/access.2021.3129703

Podaci o odgovornosti

Lučin, Ivana ; Čarija, Zoran ; Družeta, Siniša ; Lučin, Bože

engleski

Detailed Leak Localization in Water Distribution Networks Using Random Forest Classifier and Pipe Segmentation

In this paper, a Random Forest classifier was used to predict leak locations for two differently sized water distribution networks based on pressure sensor measurements. The prediction model is trained on simulated leak scenarios with randomly chosen parameters - leak location, leak size, and base node demand uncertainty. Leak localization methods found in literature that rely on numerical simulations can only predict network nodes as leak nodes ; however, since a leak can occur at any point along a pipe segment, additional spatial discretization of suspect pipe is proposed in this paper. It was observed that pipe segmentation of the whole network is a non-feasible approach since it rapidly increases the number of potential leak locations, consequently increasing the complexity of the prediction model. Therefore, a novel approach is proposed, in which a prediction model is trained on scenarios with leaks occurring in original network nodes only, but with its accuracy assessed against pressure sensor measurements from scenarios in which leaks occur in points between network nodes. It was observed that this approach can successfully narrow down the suspect leak area and, followed by additional segmentation of that network area and subsequent prediction, a precise leak localization can be achieved. The proposed approach enables incorporation of various uncertainties by simulating leak scenarios under different conditions. Investigation of leak size uncertainty and base demand variation showed that several different scenarios can produce similar sensor measurements which makes it difficult to unambiguously determine leak location using the prediction model. Therefore, future approaches of coupling prediction modeling with optimization methods are proposed.

leak localization ; pipe segmentation ; prediction modeling ; random forest ; water distribution networks

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Podaci o izdanju

9

2021.

155113-155122

objavljeno

2169-3536

10.1109/access.2021.3129703

Povezanost rada

Temeljne tehničke znanosti

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