Evaluation of ANN model for pipe status assessment in drinking water management

Author:

Sörensen Johanna1ORCID,Nilsson Erik1ORCID,Nilsson Didrik2,Gröndahl Ebba13,Rehn David4,Giertz Tommy4

Affiliation:

1. a Department of Water Resources Engineering, Faculty of Engineering, Lund University, Lund, Sweden

2. b Sweco AB, Fredsgatan 19, Umeå S-903 47, Sweden

3. c Nordvästra Skånes Vatten och Avlopp AB, Rönnowsgatan 12, Helsingborg S-252 25, Sweden

4. d Stockholm Vatten och Avfall AB, Bryggerivägen 10, Bromma S-168 67, Sweden

Abstract

ABSTRACT Non-revenue water due to pipe leakages presents a significant global challenge, impacting both the economy and environmental sustainability. The current approach to pipe management for water utilities in Sweden is mainly reactive; leaks are repaired when detected, sometimes with large costs if the leakage is extensive and critical. With this study, we want to focus on proactive pipe network management by using an Artificial Neural Network (ANN) model to estimate the probability of leakage in water pipes. The ANN model was trained on leaks that occurred over 10 years. A comparison with leaks reported after the training shows that the model succeeds in identifying groups of pipes with a higher leakage frequency. Evaluation of both new and historical leaks in four different water pipe networks in Sweden showed that a higher prediction value from the ANN model was linked to a higher occurrence of leakage. This indicates that the ANN model succeeds in identifying some of the combinations of attributes that lead to leakage. An evaluation of the input attributes in the ANN model found that the most important attributes for leakage prediction were pipe material, pipe age, adjacent problems on the pipe stretch, pipe length and pipe dimension.

Funder

Smart Built Environment

Publisher

IWA Publishing

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