Recent Developments Combining Ensemble Smoother and Deep Generative
Networks for Facies History Matching
- URL: http://arxiv.org/abs/2005.10638v1
- Date: Fri, 8 May 2020 21:32:42 GMT
- Title: Recent Developments Combining Ensemble Smoother and Deep Generative
Networks for Facies History Matching
- Authors: Smith W. A. Canchumuni, Jose D. B. Castro, J\'ulia Potratz, Alexandre
A. Emerick and Marco Aurelio C. Pacheco
- Abstract summary: This research project focuses on the use of autoencoders networks to construct a continuous parameterization for facies models.
We benchmark seven different formulations, including VAE, generative adversarial network (GAN), Wasserstein GAN, variational auto-encoding GAN, principal component analysis (PCA) with cycle GAN, PCA with transfer style network and VAE with style loss.
- Score: 58.720142291102135
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Ensemble smoothers are among the most successful and efficient techniques
currently available for history matching. However, because these methods rely
on Gaussian assumptions, their performance is severely degraded when the prior
geology is described in terms of complex facies distributions. Inspired by the
impressive results obtained by deep generative networks in areas such as image
and video generation, we started an investigation focused on the use of
autoencoders networks to construct a continuous parameterization for facies
models. In our previous publication, we combined a convolutional variational
autoencoder (VAE) with the ensemble smoother with multiple data assimilation
(ES-MDA) for history matching production data in models generated with
multiple-point geostatistics. Despite the good results reported in our previous
publication, a major limitation of the designed parameterization is the fact
that it does not allow applying distance-based localization during the ensemble
smoother update, which limits its application in large-scale problems.
The present work is a continuation of this research project focusing in two
aspects: firstly, we benchmark seven different formulations, including VAE,
generative adversarial network (GAN), Wasserstein GAN, variational
auto-encoding GAN, principal component analysis (PCA) with cycle GAN, PCA with
transfer style network and VAE with style loss. These formulations are tested
in a synthetic history matching problem with channelized facies. Secondly, we
propose two strategies to allow the use of distance-based localization with the
deep learning parameterizations.
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