Publication | Closed Access
Automated Detection of Pipe Bursts and Other Events in Water Distribution Systems
223
Citations
20
References
2012
Year
Pipe BurstsEngineeringMachine LearningFault ForecastingIntelligent SystemsLeakage DetectionDisaster DetectionProcess SafetyData ScienceData MiningSystems EngineeringNew MethodologyStream ProcessingWater Distribution SystemsOther EventsAutomated Near-real-time DetectionPredictive AnalyticsForecastingWater DistributionIntelligent ForecastingWater UtilityWater ResourcesWater MonitoringCivil EngineeringData Stream Mining
This paper presents a new methodology for the automated near-real-time detection of pipe bursts and other events that induce similar abnormal pressure/flow variations (e.g., unauthorized consumptions) at the district metered area (DMA) level. The new methodology makes synergistic use of several self-learning artificial intelligence (AI) techniques and statistical data analysis tools, including wavelets for denoising of the recorded pressure/flow signals, artificial neural networks (ANNs) for the short-term forecasting of pressure/flow signal values, statistical process control (SPC) techniques for short- and long-term analysis of the pipe burst/other event-induced pressure/flow variations, and Bayesian inference systems (BISs) for inferring the probability of a pipe burst/other event occurrence and raising corresponding detection alarms. The methodology presented here is tested and verified on a case study involving several DMAs in the United Kingdom (U.K.) with both real-life pipe burst/other events and engineered (i.e., simulated by opening fire hydrants) pipe burst events. The results obtained illustrate that it can successfully identify these events in a fast and reliable manner with a low false alarm rate.
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