A Physics-Informed Spatial-Temporal Neural Network for Reservoir Simulation and Uncertainty Quantification

被引:0
|
作者
Bi J. [1 ,2 ]
Li J. [1 ]
Wu K. [1 ]
Chen Z. [1 ,2 ]
Chen S. [2 ]
Jiang L. [2 ]
Feng D. [1 ]
Deng P. [2 ]
机构
[1] National Key Laboratory of Petroleum Resources and Engineering, China University of Petroleum (Beijing)
[2] Department of Chemical and Petroleum Engineering, University of Calgary
来源
SPE Journal | 2023年 / 28卷
基金
中国国家自然科学基金; 加拿大自然科学与工程研究理事会;
关键词
Compendex;
D O I
10.2118/218386-pa
中图分类号
学科分类号
摘要
Surrogate models play a vital role in reducing computational complexity and time burden for reservoir simulations. However, traditional surrogate models suffer from limitations in autonomous temporal information learning and restrictions in generalization potential, which is due to a lack of integration with physical knowledge. In response to these challenges, a physics-informed spatial-temporal neural network (PI-STNN) is proposed in this work, which incorporates flow theory into the loss function and uniquely integrates a deep convolutional encoder-decoder (DCED) with a convolutional long short-term memory (ConvLSTM) network. To demonstrate the robustness and generalization capabilities of the PI-STNN model, its performance was compared against both a purely data-driven model with the same neural network architecture and the renowned Fourier neural operator (FNO) in a comprehensive analysis. Besides, by adopting a transfer learning strategy, the trained PI-STNN model was adapted to the fractured flow fields to investigate the impact of natural fractures on its prediction accuracy. The results indicate that the PI-STNN not only excels in comparison with the purely data-driven model but also demonstrates a competitive edge over the FNO in reservoir simulation. Especially in strongly heterogeneous flow fields with fractures, the PI-STNN can still maintain high prediction accuracy. Building on this prediction accuracy, the PI-STNN model further offers a distinct advantage in efficiently performing uncertainty quantification, enabling rapid and comprehensive analysis of investment decisions in oil and gas development. © 2023 Society of Petroleum Engineers.
引用
收藏
相关论文
共 50 条
  • [1] A Physics-Informed Spatial-Temporal Neural Network for Reservoir Simulation and Uncertainty Quantification
    Bi, Jianfei
    Li, Jing
    Wu, Keliu
    Chen, Zhangxin
    Chen, Shengnan
    Jiang, Liangliang
    Feng, Dong
    Deng, Peng
    SPE JOURNAL, 2024, 29 (04): : 2026 - 2043
  • [2] Physics-informed graph neural network for spatial-temporal production forecasting
    Liu, Wendi
    Pyrcz, Michael J.
    GEOENERGY SCIENCE AND ENGINEERING, 2023, 223
  • [3] Adversarial uncertainty quantification in physics-informed neural networks
    Yang, Yibo
    Perdikaris, Paris
    JOURNAL OF COMPUTATIONAL PHYSICS, 2019, 394 : 136 - 152
  • [4] Flow field tomography with uncertainty quantification using a Bayesian physics-informed neural network
    Molnar, Joseph P.
    Grauer, Samuel J.
    MEASUREMENT SCIENCE AND TECHNOLOGY, 2022, 33 (06)
  • [5] A framework based on physics-informed graph neural ODE: for continuous spatial-temporal pandemic prediction
    Cheng, Haodong
    Mao, Yingchi
    Jia, Xiao
    APPLIED INTELLIGENCE, 2024, 54 (24) : 12661 - 12675
  • [6] Wasserstein generative adversarial uncertainty quantification in physics-informed neural networks
    Gao, Yihang
    Ng, Michael K.
    JOURNAL OF COMPUTATIONAL PHYSICS, 2022, 463
  • [7] A principled distance-aware uncertainty quantification approach for enhancing the reliability of physics-informed neural network
    Li, Jinwu
    Long, Xiangyun
    Deng, Xinyang
    Jiang, Wen
    Zhou, Kai
    Jiang, Chao
    Zhang, Xiaoge
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2024, 245
  • [8] Flight Dynamic Uncertainty Quantification Modeling Using Physics-Informed Neural Networks
    Michek, Nathaniel E.
    Mehta, Piyush
    Huebsch, Wade W.
    AIAA JOURNAL, 2024, 62 (11) : 4234 - 4246
  • [9] Physics-informed neural network simulation of thermal cavity flow
    Fowler, Eric
    McDevitt, Christopher J.
    Roy, Subrata
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [10] TrafficFlowGAN: Physics-Informed Flow Based Generative Adversarial Network for Uncertainty Quantification
    Mo, Zhaobin
    Fu, Yongjie
    Xu, Daran
    Di, Xuan
    MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES, ECML PKDD 2022, PT III, 2023, 13715 : 323 - 339