Volume 3: Operations, Monitoring, and Maintenance; Materials and Joining 2018
DOI: 10.1115/ipc2018-78640
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Application of Machine Learning to Distributed Temperature Sensing (DTS) Systems

Abstract: The timely detection of small leaks from liquid pipelines poses a significant challenge for pipeline operations. One technology considered for continual monitoring is distributed temperature sensing (DTS), which utilizes a fiber-optic cable to provide distributed temperature measurements along a pipeline segment. This measurement technique allows for a high accuracy of temperature determination over long distances. Unexpected deviations in temperature at any given location can indicate various physical changes… Show more

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“…Another method that can be developed for the detection of seepage within the embankments from the temperature data is the machine learning (ML) technique. This technique has already been developed and used for the detection of seepage around the pipelines [ 81 ]. We also suggest that a coupled hydro-thermal numerical simulation should be performed for the intended structure.…”
Section: Discussionmentioning
confidence: 99%
“…Another method that can be developed for the detection of seepage within the embankments from the temperature data is the machine learning (ML) technique. This technique has already been developed and used for the detection of seepage around the pipelines [ 81 ]. We also suggest that a coupled hydro-thermal numerical simulation should be performed for the intended structure.…”
Section: Discussionmentioning
confidence: 99%