Deep Learning for Latent Space Data Assimilation in Subsurface Flow Systems

被引:8
|
作者
Razak, Syamil Mohd [1 ]
Jahandideh, Atefeh [1 ]
Djuraev, Ulugbek [1 ]
Jafarpour, Behnam [1 ]
机构
[1] Univ Southern Calif, Los Angeles, CA 90007 USA
来源
SPE JOURNAL | 2022年 / 27卷 / 05期
关键词
ENCODER-DECODER NETWORKS; ENSEMBLE KALMAN FILTER; UNCERTAINTY QUANTIFICATION; FACIES MODELS; PARAMETERIZATION; EFFICIENT; REPRESENTATION; SIMULATION; SMOOTHER;
D O I
10.2118/203997-PA
中图分类号
TE [石油、天然气工业];
学科分类号
0820 ;
摘要
We present a new deep learning architecture for efficient reduced -order implementation of ensemble data assimilation in learned low -dimensional latent spaces. Specifically, deep learning is used to improve two important aspects of data assimilation workflows: (i) low -rank representation of complex reservoir property distributions for geologically consistent feature -based model updating, and (ii) efficient prediction of the statistical information that are required for model updating. The proposed method uses deep convolutional autoencoders (AEs) to nonlinearly map the original complex and high-dimensional parameters onto a low-dimensional parameter latent space that compactly represents the original parameters. In addition, a low-dimensional data latent space is constructed to predict the observable response of each model parameter realization, which can serve as a proxy model in the latent space to compute the statistical information needed for data assimilation. The two mappings are developed as a joint deep learning architecture with two variational AEs (VAEs) that are connected and trained together. The training procedure uses an ensemble of model parameters and their corresponding production response predictions. Simultaneous training of the two mappings leads to a joint data-parameter manifold that captures the most salient information in the two spaces for effective data assimilation, where only relevant data and parameter features are included. Moreover, the parameter-to -data mapping provides a fast forecast model that can be used to significantly increase the ensemble size in data assimilation, without the corresponding computational overhead. We apply the developed approach to a series of numerical experiments, including a 3D example based on the Volve field in the North Sea. For data assimilation methods that involve iterative schemes, such as the ensemble smoother with multiple data assimilation (ESMDA) or iterative forms of the ensemble Kalman filter (EnKF), the proposed approach offers a computationally competitive alternative. Our results suggest that a fully low-dimensional implementation of ensemble data assimilation in effectively constructed latent spaces using deep learning architectures could offer several advantages over the standard algorithms, including joint data-parameter reduction that respects the salient features in each space, geologically consistent feature -based updates, as well as increased ensemble size to improve the accuracy and computational efficiency of calculating the required statistics for the update step.
引用
收藏
页码:2820 / 2840
页数:21
相关论文
共 50 条
  • [41] Variational Autoencoder or Generative Adversarial Networks? A Comparison of Two Deep Learning Methods for Flow and Transport Data Assimilation
    Bao, Jichao
    Li, Liangping
    Davis, Arden
    MATHEMATICAL GEOSCIENCES, 2022, 54 (06) : 1017 - 1042
  • [42] Robot skill learning in latent space of a deep autoencoder neural network
    Pahic, Rok
    Loncarevic, Zvezdan
    Gams, Andrej
    Ude, Ales
    ROBOTICS AND AUTONOMOUS SYSTEMS, 2021, 135
  • [43] Variational Autoencoder or Generative Adversarial Networks? A Comparison of Two Deep Learning Methods for Flow and Transport Data Assimilation
    Jichao Bao
    Liangping Li
    Arden Davis
    Mathematical Geosciences, 2022, 54 : 1017 - 1042
  • [44] Ensemble latent assimilation with deep learning surrogate model: application to drop interaction in a microfluidics device
    Zhuang, Yilin
    Cheng, Sibo
    Kovalchuk, Nina
    Simmons, Mark
    Matar, Omar K.
    Guo, Yi-Ke
    Arcucci, Rossella
    LAB ON A CHIP, 2022, 22 (17) : 3187 - 3202
  • [45] A hybrid deep learning and data assimilation method for model error estimation
    Ziyi PENG
    Lili LEI
    ZheMin TAN
    Science China Earth Sciences, 2024, 67 (12) : 3655 - 3670
  • [46] A hybrid deep learning and data assimilation method for model error estimation
    Peng, Ziyi
    Lei, Lili
    Tan, Zhe-Min
    SCIENCE CHINA-EARTH SCIENCES, 2024, 67 (12) : 3655 - 3670
  • [47] Nonlinear Data Assimilation by Deep Learning Embedded in an Ensemble Kalman Filter
    Tsuyuki, Tadashi
    Tamura, Ryosuke
    JOURNAL OF THE METEOROLOGICAL SOCIETY OF JAPAN, 2022, 100 (03) : 533 - 553
  • [48] Latent Space Physics: Towards Learning the Temporal Evolution of Fluid Flow
    Wiewel, S.
    Becher, M.
    Thuerey, N.
    COMPUTER GRAPHICS FORUM, 2019, 38 (02) : 71 - 82
  • [49] Indoor Space Flow Analysis Based on Deep Learning
    Choi, Chang Woo
    Kang, Hyo Eun
    Hong, Yoon Young
    Kim, Yong Su
    Kim, Guem Bo
    Prihatno, Aji Teguh
    Ji, Jang Hyun
    Hong, Seung Do
    Kim, Ho Won
    2023 INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE IN INFORMATION AND COMMUNICATION, ICAIIC, 2023, : 771 - 776
  • [50] Deep learning of subsurface flow via theory-guided neural network
    Wang, Nanzhe
    Zhang, Dongxiao
    Chang, Haibin
    Li, Heng
    JOURNAL OF HYDROLOGY, 2020, 584