Dynamic detection of anomalous regions within distributed acoustic sensing data streams using locally stationary wavelet time series

Wilson, R.E. and Eckley, I.A. and Nunes, M.A. and Park, T. (2019) Dynamic detection of anomalous regions within distributed acoustic sensing data streams using locally stationary wavelet time series. Data Mining and Knowledge Discovery, 33 (3). pp. 748-772. ISSN 1384-5810

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Abstract

Distributed acoustic sensing technology is increasingly being used to support production and well management within the oil and gas sector, for example to improve flow monitoring and production profiling. This sensing technology is capable of recording substantial data volumes at multiple depths within an oil well, giving unprecedented insights into production behaviour. However the technology is also prone to recording periods of anomalous behaviour, where the same physical features are concurrently observed at multiple depths. Such features are called ‘stripes’ and are undesirable, detrimentally affecting well performance modelling. This paper focuses on the important challenge of developing a principled approach to identifying such anomalous periods within distributed acoustic signals. We extend recent work on classifying locally stationary wavelet time series to an online setting and, in so doing, introduce a computationally-efficient online procedure capable of accurately identifying anomalous regions within multivariate time series. © 2019, The Author(s).

Item Type:
Journal Article
Journal or Publication Title:
Data Mining and Knowledge Discovery
Uncontrolled Keywords:
/dk/atira/pure/subjectarea/asjc/1700/1706
Subjects:
?? COHERENCEDISTRIBUTED ACOUSTIC SENSINGDYNAMIC CLASSIFICATIONLOCALLY STATIONARY TIME SERIESSTRIPE DETECTIONWAVELETSCOHERENT LIGHTGAS INDUSTRYOIL WELL PRODUCTIONOIL WELLSACOUSTIC SENSINGCOMPUTATIONALLY EFFICIENTMULTIVARIATE TIME SERIESON-LINE PROCEDURESSENSI ??
ID Code:
131829
Deposited By:
Deposited On:
12 Mar 2019 15:30
Refereed?:
Yes
Published?:
Published
Last Modified:
20 Sep 2023 01:20