Stochastic representation and conditioning of process-based geological model by deep generative and recognition networks

Author:

Cheung Siu Wun1ORCID,Kushwaha Amit2,Sun Huafei3,Wu Xiao-Hui3

Affiliation:

1. Center for Applied Scientific Computing, Lawrence Livermore National Laboratory, 7000 East Avenue, Livermore, CA 94550, USA

2. SambaNova Systems, 2200 Geng Road Suite 100, Palo Alto, CA 94303, USA

3. ExxonMobil Upstream Research Company, 22777 Springwoods Village Parkway, Spring, TX 77389, USA

Abstract

Accurate and realistic geological modelling is the core of oil and gas development and production. In recent years, process-based methods are developed to produce highly realistic geological models by simulating the physical processes that reproduce the sedimentary events and develop the geometry. However, the complex dynamic processes are extremely expensive to simulate, making process-based models difficult to be conditioned to field data. In this work, we propose a comprehensive generative adversarial network framework as a machine-learning-assisted approach for mimicking the outputs of process-based geological models with fast generation. The main objective of our work is to obtain a continuous parametrization of the highly realistic process-based geological models which enables us to calibrate the models and condition the models to data. Numerical results are presented to illustrate the capability of our proposed methodology.

Publisher

Geological Society of London

Reference48 articles.

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3. Chan S. and Elsheikh A.H. 2017. Parametrization and generation of geological models with generative adversarial networks. arXiv:1708.01810.

4. Parametric generation of conditional geological realizations using generative neural networks

5. Chen X. Duan Y. Houthooft R. Schulman J. Sutskever I. and Abbeel P. 2016. InfoGAN: interpretable representation learning by information maximizing generative adversarial nets. arXiv:1606.03657.

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