Deep learning for characterizing CO2 migration in time-lapse seismic images

被引:8
|
作者
Sheng, Hanlin [1 ,2 ]
Wu, Xinming [1 ,2 ]
Sun, Xiaoming [1 ,2 ]
Wu, Long [3 ]
机构
[1] Univ Sci & Technol China, Sch Earth & Space Sci, Lab Seismol & Phys Earths Interior, 96 JinZhai Rd, Hefei 230026, Anhui, Peoples R China
[2] Univ Sci & Technol China, Mengcheng Natl Geophys Observ, Hefei 230026, Anhui, Peoples R China
[3] Equinor ASA, Sandsliveien 90, N-5254 Bergen, Norway
基金
美国国家科学基金会;
关键词
Seismic data; Seismic interpretation; Deep learning; CO2; characterization; Convolutional neural network; migration; SLEIPNER FIELD; FLOW SIMULATIONS; GAS-PRODUCTION; STORAGE SITE; INJECTION; PLUME; DENSITY; LAYER; SEGMENTATION; CALIBRATION;
D O I
10.1016/j.fuel.2022.126806
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Time-lapse (or 4-D) seismic data play an important role in monitoring the spatial CO2 distribution during and after the injection period. However, traditional interpretation or prediction of CO2 distribution is time-consuming and might be sensitive to the quality of 4D seismic data. To solve these problems, we propose a deep-learning-based method to efficiently and accurately characterize CO2 plumes in time-lapse seismic data. We first introduce a workflow to build 3-D realistic impedance models containing CO2 plumes with various shapes, sizes, and locations. From the impedance models, we then simulate synthetic seismic datasets and automatically obtain the corresponding CO2 label volumes. We extract real noise from field seismic datasets and add the noise to the synthetic ones to make them more realistic. We further construct a diverse and realistic training dataset with the combination of synthetic data containing CO2 plumes and real data without CO2 plumes that are randomly cropped from field seismic data before CO2 injection. We finally utilize the training datasets without any human labeling to train a 3-D deep U-shape convolutional neural network for detecting CO2 plumes in the Sleipner time-lapse seismic images. Compared to traditional interpretation methods that take several days or even weeks, our method takes only 29 s using one graphics processing unit (GPU) to predict CO2 plumes in a 512*512*256 seismic volume. Besides, our CO2 prediction can achieve 95.8% accuracy (compared to the manual interpretation) and could distinguish reflections of CO2 plumes from the ones of pre-existing fluids, thin layers, and noise. To more accurately characterize the CO2 plumes migration, we use dynamic image warping to compute relative shifts that register the time-lapse seismic volumes before and after CO2 injection and then apply the same shifts to the predicted CO2 plumes. By doing this, we are able to reduce the inconsistencies that may be introduced by acquisition, processing, push-down effect (velocity decrease by injected CO2), and pull-up effect (wavelet distortion), which is helpful to more accurately characterize the CO2 plumes migration.
引用
收藏
页数:17
相关论文
共 50 条
  • [41] Time-lapse pre-stack seismic data registration and inversion for CO2 sequestration study at Cranfield
    Zhang, Rui
    Song, Xiaolei
    Fomel, Sergey
    Sen, Mrinal K.
    Srinivasan, Sanjay
    GEOPHYSICAL PROSPECTING, 2014, 62 (05) : 1028 - 1039
  • [42] Fitting top seal topography and CO2 layer thickness to time-lapse seismic amplitude maps at Sleipner
    Kiaer, Anders Fredrik
    INTERPRETATION-A JOURNAL OF SUBSURFACE CHARACTERIZATION, 2015, 3 (02): : SM47 - SM55
  • [43] Time-lapse seismic performance of a sparse permanent array: Experience from the Aquistore CO2 storage site
    White, Don J.
    Roach, Lisa A. N.
    Roberts, Brian
    GEOPHYSICS, 2015, 80 (02) : WA35 - WA48
  • [44] Time-lapse seismic reservoir monitoring
    Lumley, DE
    GEOPHYSICS, 2001, 66 (01) : 50 - 53
  • [45] Using Deep Learning to Identify Cell and Particle in Live-Cell Time-lapse Images
    Cheng, Hui-Jun
    Wu, Cheng-Xian
    Chen, Wei-Hsiang
    Lin, Chun-Yuan
    Hung, Che-Lun
    Tang, Chuan-Yi
    PROCEEDINGS 2018 IEEE INTERNATIONAL CONFERENCE ON BIOINFORMATICS AND BIOMEDICINE (BIBM), 2018, : 1327 - 1331
  • [46] Rough seas and time-lapse seismic
    Laws, R
    Kragh, E
    GEOPHYSICAL PROSPECTING, 2002, 50 (02) : 195 - 208
  • [47] Forensic mapping of seismic velocity heterogeneity in a CO2 layer at the Sleipner CO2 storage operation, North Sea, using time-lapse seismics
    Chadwick, R. A.
    Williams, G. A.
    Falcon-Suarez, I
    INTERNATIONAL JOURNAL OF GREENHOUSE GAS CONTROL, 2019, 90
  • [48] Unsupervised machine learning for time-lapse seismic studies and reservoir monitoring
    Hussein, Marwa
    Stewart, Robert R.
    Sacrey, Deborah
    Johnston, David H.
    Wu, Jonny
    INTERPRETATION-A JOURNAL OF SUBSURFACE CHARACTERIZATION, 2021, 9 (03): : T791 - T807
  • [49] Measuring water ponding time, location and connectivity on soil surfaces using time-lapse images and deep learning
    Zamboni, Pedro
    Bluemlein, Mikesch
    Lenz, Jonas
    Goncalves, Wesley Nunes
    Marcato Jr, Jose
    Woehling, Thomas
    Eltner, Anette
    CATENA, 2025, 254
  • [50] A method for estimating apparent displacement vectors from time-lapse seismic images
    Hale, Dave
    GEOPHYSICS, 2009, 74 (05) : V99 - V107