Sequential design strategy for kriging and cokriging-based machine learning in the context of reservoir history-matching

被引:0
作者
A. Thenon
V. Gervais
M. Le Ravalec
机构
[1] IFP Energies nouvelles,
来源
Computational Geosciences | 2022年 / 26卷
关键词
Meta-modeling; Multi-fidelity; Machine learning; Kriging; Cokriging; Sequential design; History-matching;
D O I
暂无
中图分类号
学科分类号
摘要
Numerical models representing geological reservoirs can be used to forecast production and help engineers to design optimal development plans. These models should be as representative as possible of the true dynamic behavior and reproduce available static and dynamic data. However, identifying models constrained to production data can be very challenging and time consuming. Machine learning techniques can be considered to mimic and replace the fluid flow simulator in the process. However, the benefit of these approaches strongly depends on the simulation time required to train reliable predictors. Previous studies highlighted the potential of the multi-fidelity approach rooted in cokriging to efficiently provide accurate estimations of fluid flow simulator outputs. This technique consists in combining simulation results obtained on several levels of resolution for the reservoir model to predict the output properties on the finest level (the most accurate one). The degraded levels can correspond for instance to a coarser discretization in space or time, or to less complex physics. The idea behind is to take advantage of the coarse level low-cost information to limit the total simulation time required to train the meta-models. In this paper, we propose a new sequential design strategy for iteratively and automatically training (kriging and) cokriging based meta-models. As highlighted on two synthetic cases, this approach makes it possible to identify training sets leading to accurate estimations for the error between measured and simulated production data (objective function) while requiring limited simulation times.
引用
收藏
页码:1101 / 1118
页数:17
相关论文
共 25 条
  • [21] Machine learning-based design strategy for 3D printable bioink: elastic modulus and yield stress determine printability
    Lee, Jooyoung
    Oh, Seung Ja
    An, Sang Hyun
    Kim, Wan-Doo
    Kim, Sang-Heon
    BIOFABRICATION, 2020, 12 (03)
  • [22] Improving the CFPP property of biodiesel via composition design: An intelligent raw material selection strategy based on different machine learning algorithms
    Cui, Ziheng
    Huang, Shuai
    Wang, Meng
    Nie, Kaili
    Fang, Yunming
    Tan, Tianwei
    RENEWABLE ENERGY, 2021, 170 : 354 - 363
  • [23] A novel neural network-based alloy design strategy: Gated recurrent unit machine learning modeling integrated with orthogonal experiment design and data augmentation
    Yin, Jie
    Lei, Qian
    Li, Xiang
    Zhang, Xiaoyan
    Meng, Xiangpeng
    Jiang, Yanbin
    Tian, Liang
    Zhou, Shuang
    Li, Zhou
    ACTA MATERIALIA, 2023, 243
  • [25] A systematic review of RdRp of SARS-CoV-2 through artificial intelligence and machine learning utilizing structure-based drug design strategy
    Imtiaz, Fariha
    Pasha, Mustafa Kamal
    TURKISH JOURNAL OF CHEMISTRY, 2022, 46 (03) : 583 - 594