Acoustic leak localization for water distribution network through time-delay-based deep learning approach.

Rongsheng Liu, Tarek Zayed, Rui Xiao
Author Information
  1. Rongsheng Liu: Department of Building and Real Estate, The Hong Kong Polytechnic University, Hung Hom, Kowloon, Hong Kong.
  2. Tarek Zayed: Department of Building and Real Estate, The Hong Kong Polytechnic University, Hung Hom, Kowloon, Hong Kong.
  3. Rui Xiao: Department of Building and Real Estate, The Hong Kong Polytechnic University, Hung Hom, Kowloon, Hong Kong; Department of Civil Engineering, McGill University, Montreal, QC H3A 0C3, Canada. Electronic address: rui.xiao@mail.mcgill.ca.

Abstract

Water leakage within Water distribution networks (WDNs) presents significant challenges, encompassing infrastructure damage, economic losses, and public health risks. Traditional methods for leak localization based on acoustic signals encounter inherent limitations due to environmental noise and signal distortions. In response to this crucial issue, this study introduces an innovative approach that utilizes deep learning-based techniques to estimate time delay for leak localization. The research findings reveal that while the Res1D-CNN model demonstrates inferior performance compared to the GCC-SCOT and BCC under high signal-to-noise ratio (SNR) conditions, it exhibits robust capabilities and higher accuracy in low SNR scenarios. The proposed method's efficacy was empirically validated through field measurements. This advancement in acoustic leak localization holds the potential to significantly improve fault diagnosis and maintenance systems, thereby enabling efficient management of WDNs.

Keywords

MeSH Term

Deep Learning
Acoustics
Water Supply
Signal-To-Noise Ratio
Water

Chemicals

Water

Word Cloud

Created with Highcharts 10.0.0localizationleakdistributionWaterwaternetworksWDNsacousticapproachdeepdelaySNRnetworkleakagewithinpresentssignificantchallengesencompassinginfrastructuredamageeconomiclossespublichealthrisksTraditionalmethodsbasedsignalsencounterinherentlimitationsdueenvironmentalnoisesignaldistortionsresponsecrucialissuestudyintroducesinnovativeutilizeslearning-basedtechniquesestimatetimeresearchfindingsrevealRes1D-CNNmodeldemonstratesinferiorperformancecomparedGCC-SCOTBCChighsignal-to-noiseratioconditionsexhibitsrobustcapabilitieshigheraccuracylowscenariosproposedmethod'sefficacyempiricallyvalidatedfieldmeasurementsadvancementholdspotentialsignificantlyimprovefaultdiagnosismaintenancesystemstherebyenablingefficientmanagementAcoustictime-delay-basedlearningConvolutionalneuralCNNLeakResidualblockTimeestimation

Similar Articles

Cited By