Optimization of Targeted Differential Interferometric Measurements for Wellpads Detected by Mask Region-Based Convolutional Neural Network in the Tengiz Oilfield of the Caspian Sea Coast

Author:

Bayramov Emil12,Tessari Giulia3,Aliyeva Saida4,Duisenbiev Askar5ORCID,Kada Martin2

Affiliation:

1. School of Mining and Geosciences, Nazarbayev University, 53 Kabanbay Batyr Avenue, Block 6, Room 6.239, Astana 010000, Kazakhstan

2. Institute of Geodesy and Geoinformation Science, Technical University of Berlin, Main Building, Room H 5123, 10623 Berlin, Germany

3. Sarmap SA, Via Stazione 52, 6987 Caslano, Switzerland

4. School of Agricultural and Food Sciences, ADA University, Ahmadbey Aghaoghlu Str. 61, Baku AZ1008, Azerbaijan

5. Kazakhstan Maritime Academy, Kazakh-British Technical University, Tole Bi Street 59, Almaty 050000, Kazakhstan

Abstract

Many previous studies have primarily focused on the use of deep learning for interferometric processing or separate recognition purposes rather than targeted measurements of detected wellpads. The present study centered around the integration of deep learning recognition and interferometric measurements for Tengiz oilfield wellpads. This study proposes the optimization, automation, and acceleration of targeted ground deformation wellpad monitoring. Mask Region-based Convolutional Neural Network (R-CNN)-based deep learning wellpad recognition and consequent Small Baseline Subset Synthetic Aperture Radar Interferometry (SBAS-InSAR) analyses were used for the assessment of ground deformation in the wellpads. The Mask R-CNN technique allowed us to detect 159 wells with a confidence level of more than 95%. The Mask R-CNN model achieved a precision value of 0.71 and a recall value of 0.91. SBAS-InSAR interferometric measurements identified 13 wells for Sentinel-1 (SNT1), 8 wells for COSMO-SkyMed (CSK), and 20 wells for TerraSAR-X (TSX) located within the −54–−40 mm/y class of vertical displacement (VD) velocity. Regression analyses for the annual deformation velocities and cumulative displacements (CD) of wells derived from SNT1, CSK, and TSX satellite missions showed a good agreement with R2 > 95. The predictions for cumulative displacements showed that the vertical subsidence processes will continue and reach −339 mm on 31 December 2023, with increasing spatial coverage and the potential to impact a higher number of wells. The hydrological analyses in the Tengiz oilfield clearly demonstrated that water flow has been moving towards the detected hotspot of subsidence and that its accumulation will increase with increasing subsidence. This detected subsidence hotspot was observed at a crossing with a seismic fault that might always be subject to reactivation. The role of this seismic fault should also be investigated as one of the ground deformation-controlling factors, even though this area is not considered seismically active. The primary practical and scientific values of these studies were identified for the operational risk assessment and maintenance needs of oilfield and gas field operators.

Funder

Nazarbayev University

Publisher

MDPI AG

Reference61 articles.

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2. Zhou, W., Chen, G., Li, S., and Ke, J. (2006, January 17–21). InSAR Application in Detection of Oilfield Subsidence on Alaska North Slope. Proceedings of the 41st US Symposium on Rock Mechanics (USRMS), Golden, CO, USA.

3. Monitoring land motion due to natural gas extraction: Validation of the Intermittent SBAS (ISBAS) DInSAR algorithm over gas fields of North Holland, The Netherlands;Gee;Mar. Pet. Geol.,2016

4. InSAR reveals complex surface deformation patterns over an 80,000 km2oil-producing region in the Permian Basin;Staniewicz;Geophys. Res. Lett.,2020

5. Togaibekov, A.Z. (2020). Monitoring of Oil-Production-Induced Subsidence and Uplift. [Master’s Thesis, Massachusetts Institute of Technology].

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