Multi-scale generative adversarial networks (GAN) for generation of three-dimensional subsurface geological models from limited boreholes and prior geological knowledge

被引:23
作者
Lyu, Borui [1 ]
Wang, Yu [1 ]
Shi, Chao [2 ]
机构
[1] City Univ Hong Kong, Dept Architecture & Civil Engn, Kowloon, Tat Chee Ave, Hong Kong, Peoples R China
[2] Nanyang Technol Univ, Sch Civil & Environm Engn, 50 Nanyang Ave, Singapore City, Singapore
关键词
3D subsurface geological model; Generative adversarial networks; Sparse measurements; Data; -driven; Patterns extraction; UNCERTAINTY; STRATIGRAPHY;
D O I
10.1016/j.compgeo.2024.106336
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Delineation of subsurface stratigraphy is an essential task in site characterization. A three-dimensional (3D) subsurface geological model that precisely depicts stratigraphic relationships in a specific site can greatly benefit subsequent geotechnical analysis and designs. However, only a limited number of boreholes is usually available from a specific site in practice. It is therefore challenging to properly construct complex stratigraphic relationships in a 3D space based on sparse measurements from limited boreholes. To tackle this challenge, this study proposes a generative machine learning method called multi-scale generative adversarial networks (MS-GAN) for developing 3D subsurface geological models from limited boreholes and a 3D training image representing prior geological knowledge. The proposed method automatically learns multi-scale 3D stratigraphic patterns extracted from the 3D training image and generates 3D geological models conditioned on limited borehole data in an iterative manner. The proposed method is illustrated using 3D numerical and real data examples, and the results indicate that the proposed method can effectively learn the stratigraphic information from a 3D training image to generate multiple 3D realizations from sparse boreholes. Both accuracy and associated uncertainty of 3D realizations are quantified. Effect of borehole number on performance of the proposed method is also investigated.
引用
收藏
页数:18
相关论文
共 49 条
[1]   Surface-Based 3D Modeling of Geological Structures [J].
Caumon, G. ;
Collon-Drouaillet, P. ;
de Veslud, C. Le Carlier ;
Viseur, S. ;
Sausse, J. .
MATHEMATICAL GEOSCIENCES, 2009, 41 (08) :927-945
[2]   Three-Dimensional Geological Modeling of Coal Seams Using Weighted Kriging Method and Multi-Source Data [J].
Che, Defu ;
Jia, Qingren .
IEEE ACCESS, 2019, 7 :118037-118045
[3]   3D stochastic modeling framework for Quaternary sediments using multiple-point statistics: A case study in Minjiang Estuary area, southeast China [J].
Chen, Qiyu ;
Liu, Gang ;
Ma, Xiaogang ;
Li, Xinchuan ;
He, Zhenwen .
COMPUTERS & GEOSCIENCES, 2020, 136
[4]   Multiple-point geostatistical simulation based on conditional conduction probability [J].
Cui, Zhesi ;
Chen, Qiyu ;
Liu, Gang ;
Ma, Xiaogang ;
Que, Xiang .
STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT, 2021, 35 (07) :1355-1368
[5]   Subsurface geological-geotechnical modelling to sustain underground civil planning [J].
de Rienzo, F. ;
Oreste, P. ;
Pelizza, S. .
ENGINEERING GEOLOGY, 2008, 96 (3-4) :187-204
[6]   Learning 3D mineral prospectivity from 3D geological models using convolutional neural networks: Application to a structure-controlled hydrothermal gold deposit [J].
Deng, Hao ;
Zheng, Yang ;
Chen, Jin ;
Yu, Shuyan ;
Xiao, Keyan ;
Mao, Xiancheng .
COMPUTERS & GEOSCIENCES, 2022, 161
[7]  
DINOloket, 2014, Data and Information on the Dutch Subsurface
[8]   Stratigraphic uncertainty modelling with random field approach [J].
Gong, Wenping ;
Zhao, Chao ;
Juang, C. Hsein ;
Tang, Huiming ;
Wang, Hui ;
Hu, Xinli .
COMPUTERS AND GEOTECHNICS, 2020, 125 (125)
[9]  
Goodfellow I, 2017, Arxiv, DOI [arXiv:1701.00160, DOI 10.48550/ARXIV.1701.00160]
[10]   Generative Adversarial Networks [J].
Goodfellow, Ian ;
Pouget-Abadie, Jean ;
Mirza, Mehdi ;
Xu, Bing ;
Warde-Farley, David ;
Ozair, Sherjil ;
Courville, Aaron ;
Bengio, Yoshua .
COMMUNICATIONS OF THE ACM, 2020, 63 (11) :139-144