Estimation of temperature and associated uncertainty from fiber-optic raman-spectrum distributed temperature sensing

Journal Article (2020)
Author(s)

Bas Tombe (TU Delft - Water Resources)

Bart Schilperoort (TU Delft - Water Resources)

Mark Bakker (TU Delft - Water Resources)

Research Group
Water Resources
Copyright
© 2020 B.F. des Tombe, B. Schilperoort, M. Bakker
DOI related publication
https://doi.org/10.3390/s20082235
More Info
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Publication Year
2020
Language
English
Copyright
© 2020 B.F. des Tombe, B. Schilperoort, M. Bakker
Research Group
Water Resources
Bibliographical Note
Corrigendum: DOI 10.3390/s21030912. The original article has been updated.@en
Issue number
8
Volume number
20
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Abstract

Distributed temperature sensing (DTS) systems can be used to estimate the temperature along optic fibers of several kilometers at a sub-meter interval. DTS systems function by shooting laser pulses through a fiber and measuring its backscatter intensity at two distinct wavelengths in the Raman spectrum. The scattering-loss coefficients for these wavelengths are temperature-dependent, so that the temperature along the fiber can be estimated using calibration to fiber sections with a known temperature. A new calibration approach is developed that allows for an estimate of the uncertainty of the estimated temperature, which varies along the fiber and with time. The uncertainty is a result of the noise from the detectors and the uncertainty in the calibrated parameters that relate the backscatter intensity to temperature. Estimation of the confidence interval of the temperature requires an estimate of the distribution of the noise from the detectors and an estimate of the multi-variate distribution of the parameters. Both distributions are propagated with Monte Carlo sampling to approximate the probability density function of the estimated temperature, which is different at each point along the fiber and varies over time. Various summarizing statistics are computed from the approximate probability density function, such as the confidence intervals and the standard uncertainty (the estimated standard deviation) of the estimated temperature. An example is presented to demonstrate the approach and to assess the reasonableness of the estimated confidence intervals. The approach is implemented in the open-source Python package “dtscalibration”.