Compressibility predictions using digital thin-section images of rocks

被引:0
|
作者
Das, Vishal [1 ,2 ]
Saxena, Nishank [2 ]
Hofmann, Ronny [2 ]
机构
[1] Department of Geophysics, Stanford University, United States
[2] Shell International Exploration and Production, Houston,TX, United States
来源
Computers and Geosciences | 2020年 / 139卷
关键词
Forecasting - Compressibility - Sandstone - Research laboratories;
D O I
暂无
中图分类号
学科分类号
摘要
We use numerical simulations on petrographically characterized thin-section images to predict three-dimensional elastic compressibility of sandstones. We predict two key statistics of compressibility curves measured under uniaxial boundary conditions in a laboratory – i) minimum compressibility at 1500 psi or 10 MPa depletion stress, and ii) maximum compressibility. A new Digital Rock workflow was developed for predicting compressibility based on the simulation of stress field using a segmented two-dimensional thin-section image. We also propose linear and non-linear relationships of log base 10 (compressibility) with in-situ porosity that can be used for compressibility prediction in the absence of laboratory measurements or two-dimensional images. Based on the results of application of the proposed relationships on samples from different fields with laboratory measurements, we conclude that the best prediction for minimum compressibility is obtained using the Digital Rock workflow and the best prediction for maximum compressibility is obtained using the proposed non-linear relationship using in-situ porosity. The range of compressibility values given by the difference between maximum and minimum compressibility predicted using the proposed methods can be used in making better informed economic decisions in field development planning. © 2020 Elsevier Ltd
引用
收藏
相关论文
共 50 条
  • [41] THIN-SECTION CT OF THE SKULL BASE
    BEYERENKE, SA
    TIEDEMANN, K
    GORICH, J
    GAMROTH, A
    RADIOLOGE, 1987, 27 (10): : 483 - 488
  • [42] DEFORMATION OF CRYSTALLINE MATERIALS IN THIN-SECTION
    MEANS, WD
    XIA, ZG
    GEOLOGY, 1981, 9 (11) : 538 - 543
  • [43] THIN-SECTION AND FREEZE-FRACTURE IMAGES OF LACTATING MOUSE MAMMARY-GLAND
    ISHIMURA, K
    KAWAMATA, S
    FUJITA, H
    JOURNAL OF ELECTRON MICROSCOPY, 1981, 30 (03): : 267 - 267
  • [44] Pulmonary organs analysis for differential diagnosis based on thoracic thin-section CT images
    Tozaki, T
    Kawata, Y
    Niki, N
    Ohmatsu, H
    Kakinuma, R
    Eguchi, K
    Kaneko, M
    Moriyama, N
    IEEE TRANSACTIONS ON NUCLEAR SCIENCE, 1998, 45 (06) : 3075 - 3082
  • [45] AUTOMATED EVALUATION OF VOLUMETRIC GRAIN-SIZE DISTRIBUTION FROM THIN-SECTION IMAGES
    PARESCHI, MT
    POMPILIO, M
    INNOCENTI, F
    COMPUTERS & GEOSCIENCES, 1990, 16 (08) : 1067 - 1084
  • [46] Automatic classification of volcanic rocks from thin section images using transfer learning networks
    Polat, Ozlem
    Polat, Ali
    Ekici, Taner
    NEURAL COMPUTING & APPLICATIONS, 2021, 33 (18): : 11531 - 11540
  • [47] Pulmonary structure analysis based on thoracic thin-section CT images and its application
    Tozaki, T
    Kawata, Y
    Niki, N
    Ohmatsu, H
    Kakinuma, R
    Eguchi, K
    Kaneko, M
    Moriyama, N
    COMPUTER-AIDED DIAGNOSIS IN MEDICAL IMAGING, 1999, 1182 : 143 - 148
  • [48] Classification of igneous rocks from petrographic thin section images using convolutional neural network
    Seo, Wanhyuk
    Kim, Yejin
    Sim, Ho
    Song, Yungoo
    Yun, Tae Sup
    EARTH SCIENCE INFORMATICS, 2022, 15 (02) : 1297 - 1307
  • [49] Automatic classification of volcanic rocks from thin section images using transfer learning networks
    Özlem Polat
    Ali Polat
    Taner Ekici
    Neural Computing and Applications, 2021, 33 : 11531 - 11540
  • [50] Classification of igneous rocks from petrographic thin section images using convolutional neural network
    Wanhyuk Seo
    Yejin Kim
    Ho Sim
    Yungoo Song
    Tae Sup Yun
    Earth Science Informatics, 2022, 15 : 1297 - 1307