Identification of deformation pattern changes caused by enhanced oil recovery (EOR) using InSAR

Journal Article (2018)
Author(s)

L. Chang (University of Twente)

Ou Ku (SkyGeo)

Ramon Hanssen (TU Delft - Mathematical Geodesy and Positioning)

Research Group
Mathematical Geodesy and Positioning
Copyright
© 2018 L. Chang, Ou Ku, R.F. Hanssen
DOI related publication
https://doi.org/10.1080/01431161.2018.1526426
More Info
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Publication Year
2018
Language
English
Copyright
© 2018 L. Chang, Ou Ku, R.F. Hanssen
Research Group
Mathematical Geodesy and Positioning
Issue number
4
Volume number
40
Pages (from-to)
1495-1505
Reuse Rights

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Abstract

Continuous hydrocarbon production and steam/water injection cause compaction and expansion of the reservoir rock, leading to irregular downward and upward ground movements. Detecting such anthropogenic ground movements is of importance, as they may significantly influence the safety and sustainability of hydrocarbon production activities, in particular, enhanced oil recovery (EOR) and even lead to local hazards, e.g. earthquakes and sinkholes. As InSAR (Interferometric Synthetic Aperture Radar) can routinely deliver global ground deformation observations on a weekly basis, with millimetre-level precision, it can be a cost-effective, and less labour intensive tool to monitor surface deformation changes due to hydrocarbon production activities. Aimed at identifying the associated deformation pattern changes, this study focuses on InSAR deformation model optimization, in order to automatically detect irregularities, both spatially and temporally. We apply multiple hypothesis testing to determine the best model based on a library of physically realistic canonical deformation models. We develop a cluster-wise constrained least-squares estimation method for parameter estimation, in order to directly introduce contextual information, such as spatio-temporal correlation, into the mathematical model. Here a cluster represents a group of spatially correlated InSAR measurement points. Our approach is demonstrated over an enhanced oil recovery site using a stack of TerraSAR-X images.