Petrophysical properties prediction from prestack seismic data using convolutional neural networks

被引:69
|
作者
Das, Vishal [1 ,2 ]
Mukerji, Tapan [2 ,3 ,4 ]
机构
[1] Shell Explorat & Prod Co, Houston, TX 77079 USA
[2] Stanford Univ, Dept Geophys, Stanford, CA 94305 USA
[3] Stanford Univ, Energy Resources Engn Dept, Stanford, CA 94305 USA
[4] Stanford Univ, Dept Geol Sci, Stanford, CA 94305 USA
关键词
ROCK-PHYSICS; JOINT ESTIMATION; WELL-LOG; INVERSION; RESERVOIR; POROSITY; MODEL; INTEGRATION; TOMOGRAPHY;
D O I
10.1190/GEO2019-0650.1
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
We have built convolutional neural networks (CNNs) to obtain petrophysical properties in the depth domain from prestack seismic data in the time domain. We compare two workflows end-to-end and cascaded CNNs. An end-to-end CNN, referred to as PetroNet, directly predicts petrophysical properties from prestack seismic data. Cascaded CNNs consist of two CNN architectures. The first network, referred to as ElasticNet, predicts elastic properties from prestack seismic data followed by a second network, referred to as ElasticPetroNet, that predicts petrophysical properties from elastic properties. Cascaded CNNs with more than twice the number of trainable parameters as compared to end-to-end CNN demonstrate similar prediction performance for a synthetic data set. The average correlation coefficient for test data between the true and predicted clay volume (approximately 0.7) is higher than the average correlation coefficient between the true and predicted porosity (approximately 0.6) for both networks. The cascaded workflow depends on the availability of elastic properties and is three times more computationally expensive than the end-to-end workflow for training. Coherence plots between the true and predicted values for both cases show that maximum coherence occurs for values of the inverse wave-number greater than 15 m, which is approximately equal to 1/4 the source wavelength or lambda/4. The network predictions have some coherence with the true values even at a resolution of 10 m, which is half of the variogram range used in simulating the spatial correlation of the petrophysical properties. The Monte Carlo dropout technique is used for approximate quantification of the uncertainty of the network predictions. An application of the end-to-end network for prediction of petrophysical properties is made with the Stybarrow field located in offshore Western Australia. The network makes good predictions of petrophysical properties at the well locations. The network is particularly successful in identifying the reservoir facies of interest with high porosity and low clay volume.
引用
收藏
页码:N41 / N55
页数:15
相关论文
共 50 条
  • [1] Prediction of elastic properties using seismic prestack inversion and neural network analysis
    Mohamed, Islam A.
    El-Mowafy, Hamed Z.
    Fathy, Mohamed
    INTERPRETATION-A JOURNAL OF SUBSURFACE CHARACTERIZATION, 2015, 3 (02): : T57 - T68
  • [2] Joint elastic and petrophysical inversion using prestack seismic and well log data
    Li, Zhiyong
    Song, Beibei
    Zhang, Jiashu
    Hu, Guangmin
    EXPLORATION GEOPHYSICS, 2016, 47 (04) : 331 - 340
  • [3] Bayesian lithology and fluid prediction from seismic prestack data
    Buland, Arild
    Kolbjornsen, Odd
    Hauge, Ragnar
    Skjaeveland, Oyvind
    Duffaut, Kenneth
    GEOPHYSICS, 2008, 73 (03) : C13 - C21
  • [4] Seismic deghosting using convolutional neural networks
    Almuteri, Khalid
    Sava, Paul
    GEOPHYSICS, 2023, 88 (03) : V113 - V125
  • [5] Elastic prestack seismic inversion through discrete cosine transform reparameterization and convolutional neural networks
    Aleardi, Mattia
    Salusti, Alessandro
    GEOPHYSICS, 2021, 86 (01) : R129 - R146
  • [6] Deep-seismic-prior-based reconstruction of seismic data using convolutional neural networks
    Liu, Qun
    Fu, Lihua
    Zhang, Meng
    GEOPHYSICS, 2021, 86 (02) : V131 - V142
  • [7] Petrophysical data prediction from seismic attributes using committee fuzzy inference system
    Kadkhodaie-Ilkhchi, Ali
    Rezaee, M. Reza
    Rahimpour-Bonab, Hossain
    Chehrazi, Ali
    COMPUTERS & GEOSCIENCES, 2009, 35 (12) : 2314 - 2330
  • [8] Prediction and optimization of mechanical properties of composites using convolutional neural networks
    Abueidda, Diab W.
    Almasri, Mohammad
    Ammourah, Rami
    Ravaioli, Umberto
    Jasiuk, Iwona M.
    Sobh, Nahil A.
    COMPOSITE STRUCTURES, 2019, 227
  • [9] Prediction of Material Properties using Crystal Graph Convolutional Neural Networks
    Durvasula, Harsha
    Sahana, V. K.
    Thazhemadam, Anant
    Roy, Reshma P.
    Arya, Arti
    PROCEEDINGS OF 2022 7TH INTERNATIONAL CONFERENCE ON MACHINE LEARNING TECHNOLOGIES, ICMLT 2022, 2022, : 68 - 73
  • [10] Prediction of petrophysical properties from seismic quality factor measurements
    McCann, C
    Sothcott, J
    Assefa, SB
    DEVELOPMENTS IN PETROPHYSICS, 1997, (122): : 121 - 130