The Use of 3D Convolutional Autoencoder in Fault and Fracture Network Characterization

Conventional pattern recognition methods directly use 1D poststack data or 2D prestack data for the statistical pattern recognition of fault and fracture network, thereby ignoring the spatial structure information in 3D seismic data. As a result, the generated fault and fracture network is not disti...

Full description

Bibliographic Details
Main Authors: Feng Xu, Zhiyong Li, Bo Wen, Youhui Huang, Yaojun Wang
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Geofluids
Online Access:http://dx.doi.org/10.1155/2021/6650823
id doaj-4d1b193c6ba045a2ae2f0dac472bae54
record_format Article
spelling doaj-4d1b193c6ba045a2ae2f0dac472bae542021-02-15T12:52:49ZengHindawi-WileyGeofluids1468-81151468-81232021-01-01202110.1155/2021/66508236650823The Use of 3D Convolutional Autoencoder in Fault and Fracture Network CharacterizationFeng Xu0Zhiyong Li1Bo Wen2Youhui Huang3Yaojun Wang4School of Geosciences and Technology, Southwest Petroleum University, Xindu 610500, ChinaSchool of Information Engineering, Sichuan Agricultural University, Ya’an 625014, ChinaSchool of Information Engineering, Sichuan Agricultural University, Ya’an 625014, ChinaDepartment of Exploration and Development, PetroChina Tarim Oilfield Company, Kuerle 841000, ChinaSchool of Resources and Environment, University of Electronic Science and Technology of China, Chengdu 611731, ChinaConventional pattern recognition methods directly use 1D poststack data or 2D prestack data for the statistical pattern recognition of fault and fracture network, thereby ignoring the spatial structure information in 3D seismic data. As a result, the generated fault and fracture network is not distinguishable and has poor continuity. In this paper, a fault and fracture network characterization method based on 3D convolutional autoencoder is proposed. First, in the autoencoder training frame, 3D prestack data are used as input, and the 3D convolution operation is used to mine the spatial structure information to the maximum and gradually reduce the spatial dimension of the input. Then, the residual network is used to recover the input’s details and the corresponding spatial dimension. Lastly, the hidden features extracted by the encoders are recognized via k-means, SOM, and two-step clustering analysis. The validity of the method is verified by testing the seismic simulation data and applying real seismic data. The 3D convolution can directly process the seismic data and maximize the prestack texture attributes and spatial structure information provided by 3D seismic data without dimensionality reduction and other preprocessing operations. The interleaving convolution layer and residual block overcome low learning and accuracy rates due to the deepening of networks.http://dx.doi.org/10.1155/2021/6650823
collection DOAJ
language English
format Article
sources DOAJ
author Feng Xu
Zhiyong Li
Bo Wen
Youhui Huang
Yaojun Wang
spellingShingle Feng Xu
Zhiyong Li
Bo Wen
Youhui Huang
Yaojun Wang
The Use of 3D Convolutional Autoencoder in Fault and Fracture Network Characterization
Geofluids
author_facet Feng Xu
Zhiyong Li
Bo Wen
Youhui Huang
Yaojun Wang
author_sort Feng Xu
title The Use of 3D Convolutional Autoencoder in Fault and Fracture Network Characterization
title_short The Use of 3D Convolutional Autoencoder in Fault and Fracture Network Characterization
title_full The Use of 3D Convolutional Autoencoder in Fault and Fracture Network Characterization
title_fullStr The Use of 3D Convolutional Autoencoder in Fault and Fracture Network Characterization
title_full_unstemmed The Use of 3D Convolutional Autoencoder in Fault and Fracture Network Characterization
title_sort use of 3d convolutional autoencoder in fault and fracture network characterization
publisher Hindawi-Wiley
series Geofluids
issn 1468-8115
1468-8123
publishDate 2021-01-01
description Conventional pattern recognition methods directly use 1D poststack data or 2D prestack data for the statistical pattern recognition of fault and fracture network, thereby ignoring the spatial structure information in 3D seismic data. As a result, the generated fault and fracture network is not distinguishable and has poor continuity. In this paper, a fault and fracture network characterization method based on 3D convolutional autoencoder is proposed. First, in the autoencoder training frame, 3D prestack data are used as input, and the 3D convolution operation is used to mine the spatial structure information to the maximum and gradually reduce the spatial dimension of the input. Then, the residual network is used to recover the input’s details and the corresponding spatial dimension. Lastly, the hidden features extracted by the encoders are recognized via k-means, SOM, and two-step clustering analysis. The validity of the method is verified by testing the seismic simulation data and applying real seismic data. The 3D convolution can directly process the seismic data and maximize the prestack texture attributes and spatial structure information provided by 3D seismic data without dimensionality reduction and other preprocessing operations. The interleaving convolution layer and residual block overcome low learning and accuracy rates due to the deepening of networks.
url http://dx.doi.org/10.1155/2021/6650823
work_keys_str_mv AT fengxu theuseof3dconvolutionalautoencoderinfaultandfracturenetworkcharacterization
AT zhiyongli theuseof3dconvolutionalautoencoderinfaultandfracturenetworkcharacterization
AT bowen theuseof3dconvolutionalautoencoderinfaultandfracturenetworkcharacterization
AT youhuihuang theuseof3dconvolutionalautoencoderinfaultandfracturenetworkcharacterization
AT yaojunwang theuseof3dconvolutionalautoencoderinfaultandfracturenetworkcharacterization
AT fengxu useof3dconvolutionalautoencoderinfaultandfracturenetworkcharacterization
AT zhiyongli useof3dconvolutionalautoencoderinfaultandfracturenetworkcharacterization
AT bowen useof3dconvolutionalautoencoderinfaultandfracturenetworkcharacterization
AT youhuihuang useof3dconvolutionalautoencoderinfaultandfracturenetworkcharacterization
AT yaojunwang useof3dconvolutionalautoencoderinfaultandfracturenetworkcharacterization
_version_ 1714867133887807488