Training-Image Based Geostatistical Inversion Using a Spatial Generative Adversarial Neural Network

Details

Serval ID
serval:BIB_057E3A79282A
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
Training-Image Based Geostatistical Inversion Using a Spatial Generative Adversarial Neural Network
Journal
Water Resources Research
Author(s)
Laloy E., Hérault R., Jacques D., Linde N.
ISSN
0043-1397
ISSN-L
1944-7973
Publication state
Published
Issued date
2018
Peer-reviewed
Oui
Volume
54
Pages
381-406
Language
english
Abstract
Probabilistic inversion within a multiple‐point statistics framework is often computationally prohibitive for high‐dimensional problems. To partly address this, we introduce and evaluate a new training‐image based inversion approach for complex geologic media. Our approach relies on a deep neural network of the generative adversarial network (GAN) type. After training using a training image (TI), our proposed spatial GAN (SGAN) can quickly generate 2‐D and 3‐D unconditional realizations. A key characteristic of our SGAN is that it defines a (very) low‐dimensional parameterization, thereby allowing for efficient probabilistic inversion using state‐of‐the‐art Markov chain Monte Carlo (MCMC) methods. In addition, available direct conditioning data can be incorporated within the inversion. Several 2‐D and 3‐D categorical TIs are first used to analyze the performance of our SGAN for unconditional geostatistical simulation. Training our deep network can take several hours. After training, realizations containing a few millions of pixels/voxels can be produced in a matter of seconds. This makes it especially useful for simulating many thousands of realizations (e.g., for MCMC inversion) as the relative cost of the training per realization diminishes with the considered number of realizations. Synthetic inversion case studies involving 2‐D steady state flow and 3‐D transient hydraulic tomography with and without direct conditioning data are used to illustrate the effectiveness of our proposed SGAN‐based inversion. For the 2‐D case, the inversion rapidly explores the posterior model distribution. For the 3‐D case, the inversion recovers model realizations that fit the data close to the target level and visually resemble the true model well.
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Create date
19/12/2018 17:51
Last modification date
20/08/2019 13:27
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