A convolutional neural network for pipe crack and leak detection in smart water network

Author:

Zhang Chi12ORCID,Alexander Bradley J.3,Stephens Mark L.42,Lambert Martin F.5ORCID,Gong Jinzhe6

Affiliation:

1. Data Scientist, Strategic Asset Management, South Australia Water Corporation, Adelaide, SA, Australia

2. Adjunct Lecturer, School of Civil and Environmental Engineering, University of Adelaide, Adelaide, SA, Australia

3. School of Computer Science, University of Adelaide, Adelaide, SA, Australia

4. Strategic Asset Management, South Australia Water Corporation, Adelaide, SA, Australia

5. School of Civil and Environmental Engineering, University of Adelaide, Adelaide, SA, Australia

6. School of Engineering, Deakin University, Waurn Ponds, VIC, Australia

Abstract

The implementation of a smart water network (SWN) is viewed as a strategic approach to address many challenges faced by water utilities, such as pipe leak detection and main break prevention. This paper develops a convolutional neural network (CNN)–based model to classify acoustic wave files collected by the South Australian Water Corporation’s (SA Water’s) SWN over the city of Adelaide. The VGGish model (VGG refers to the team who developed the model—Visual Geometry Group) is selected as a suitable transfer learning model to extract features from wave files. The CNN model classifies an acoustic wave file as an anomaly or other background or environmental noise. Identification of a wave file as an anomaly triggers a Siamese CNN model to determine whether it is related to a regular/irregular scheduled event (for example, irrigation system near public parks or water consumption by large buildings). A field investigation is initiated if a wave file is classified as an anomaly and it is not related to a scheduled event. The developed models have been validated using data that is recorded by SWN in Adelaide. This validation data set comprises 1098 wave files, which are recorded by 34 accelerometers and are associated with 32 known leaks. The validation results shown that accuracy of alarms generated by the developed models is 92.44%. The validations confirm the developed models as an effective tool for water pipeline leak and crack detection, which, in turn, enables proactive management of the pipeline assets.

Funder

Australian Research Council through the Linkage project

Publisher

SAGE Publications

Subject

Mechanical Engineering,Biophysics

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