4.5 Article

Pattern matching and associative artificial neural networks for water distribution system time series data analysis

期刊

JOURNAL OF HYDROINFORMATICS
卷 16, 期 3, 页码 617-632

出版社

IWA PUBLISHING
DOI: 10.2166/hydro.2013.057

关键词

asset monitoring; auto-associative neural network; event detection system; pattern matching; water distribution systems

资金

  1. Pennine Water Group - Urban Water Systems for a Changing World Platform Grant - UK Science and Engineering Research Council [EP/I029346/1]
  2. Pipe Dreams project - UK Science and Engineering Research Council [EP/G029946/1]
  3. EPSRC [EP/I029346/1, EP/G029946/1] Funding Source: UKRI
  4. Engineering and Physical Sciences Research Council [EP/I029346/1, EP/G029946/1] Funding Source: researchfish

向作者/读者索取更多资源

Water distribution systems, and other infrastructures, are increasingly being pervaded by sensing technologies, collecting a growing volume of data aimed at supporting operational and investment decisions. These sensors monitor system characteristics, i.e. flows, pressures and water quality, such as in pipes. This paper presents the application of pattern matching techniques and binary associative neural networks for novelty detection in such data. A protocol for applying pattern matching to automatically recognise specific waveforms in time series based on their shapes is described together with a system called Advanced Uncertain Reasoning Architecture (AURA) Alert for autonomous determination of novelty. AURA is a class of binary neural network that has a number of advantages over standard artificial neural network techniques for condition monitoring including a sound theoretical basis to determine the bounds of the system operation. Results from application to several case studies are provided including both hydraulic and water quality data. In the case of pattern matching, the results demonstrated some transferability of burst patterns across District Metered Areas; however limitations in performance and difficulties with assembling pattern libraries were found. Results for the AURA system demonstrate the potential for robust event detection across multiple parameters providing valuable information for diagnosis; one example also demonstrates the potential for detection of precursor information, vital for proactive management.

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