Robust Method for Reservoir Simulation History Matching Using Bayesian Inversion and Long- Short- Term Memory Network-Based

被引:0
|
作者
Zhang, Zhen [1 ]
He, Xupeng [1 ]
AlSinan, Marwah [2 ]
Kwak, Hyung [2 ]
Hoteit, Hussein [1 ]
机构
[1] King Abdullah Univ Sci & Technol KAUST, Thuwal, Saudi Arabia
[2] Saudi Aramco, Dhahran, Saudi Arabia
来源
SPE JOURNAL | 2023年 / 28卷 / 03期
关键词
ENSEMBLE KALMAN FILTER; GRADUAL DEFORMATION; NORTH-SEA; ITERATIVE CALIBRATION; MODEL; FIELD; OPTIMIZATION; ALGORITHMS; PERFORMANCE; GIANT;
D O I
暂无
中图分类号
TE [石油、天然气工业];
学科分类号
0820 ;
摘要
History matching is a critical process used for calibrating simulation models and assessing subsurface uncertainties. This common tech-nique aims to align the reservoir models with the observed data. However, achieving this goal is often challenging due to the nonunique-ness of the solution, underlying subsurface uncertainties, and usually the high computational cost of simulations. The traditional approach is often based on trial and error, which is exhaustive and labor-intensive. Some analytical and numerical proxies combined with Monte Carlo simulations are used to reduce the computational time. However, these approaches suffer from low accuracy and may not fully capture subsurface uncertainties. This study proposes a new robust method using Bayesian Markov chain Monte Carlo (MCMC) to perform assisted history matching under uncertainties. We propose a novel three -step workflow that includes (1) multiresolution low -fidelity models to guarantee high-quality matching; (2) long-short -term memory (LSTM) network as a low-fidelity model to reproduce continuous time response based on the simulation model, combined with Bayesian optimization to obtain the optimum low-fidelity mod-el; and (3) Bayesian MCMC runs to obtain the Bayesian inversion of the uncertainty parameters. We perform sensitivity analysis on the LSTM's architecture, hyperparameters, training set, number of chains, and chain length to obtain the optimum setup for Bayesian- LSTM history matching. We also compare the performance of predicting the recovery factor (RF) using different surrogate methods, including polynomial chaos expansions (PCE), kriging, and support vector machines for regression (SVR). We demonstrate the proposed method using a water flooding problem for the upper Tarbert formation of the 10th SPE comparative model. This study case represents a highly heterogeneous nearshore environment. Results showed that the Bayesian-optimized LSTM has successfully captured the physics in the high-fidelity model. The Bayesian- LSTM MCMC produces an accurate prediction with narrow ranges of uncertainties. The posterior prediction through the high-fidelity model ensures the robustness and accuracy of the workflow. This approach provides an efficient and practical history-matching method for reservoir simulation and subsurface flow modeling with significant uncertainties.
引用
收藏
页码:983 / 1007
页数:25
相关论文
共 50 条
  • [31] Wind Power Forecasting Method Based on Bidirectional Long Short-Term Memory Neural Network and Error Correction
    Liu, Wei
    Liu, Yuming
    Fu, Lei
    Yang, Minghui
    Hu, Renchun
    Kang, Yanping
    ELECTRIC POWER COMPONENTS AND SYSTEMS, 2022, 49 (13-14) : 1169 - 1180
  • [32] Prediction of surface roughness based on a hybrid feature selection method and long short-term memory network in grinding
    Guo, Weicheng
    Wu, Chongjun
    Ding, Zishan
    Zhou, Qinzhi
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2021, 112 (9-10) : 2853 - 2871
  • [33] Long Short-term Memory Neural Network-based System Identification and Augmented Predictive Control of Piezoelectric Actuators for Precise Trajectory Tracking
    Patil, Mayur S.
    Charuku, Bharat
    Ren, Juan
    IFAC PAPERSONLINE, 2021, 54 (20): : 38 - 45
  • [34] External Validation of the Long Short-Term Memory Artificial Neural Network-Based SCaP Survival Calculator for Prediction of Prostate Cancer Survival
    Lim, Bumjin
    Lee, Kwang Suk
    Lee, Young Hwa
    Kim, Suah
    Min, Choongki
    Park, Ju-Young
    Lee, Hye Sun
    Cho, Jin Seon
    Kim, Sun Il
    Chung, Byung Ha
    Kim, Choung-Soo
    Koo, Kyo Chul
    CANCER RESEARCH AND TREATMENT, 2021, 53 (02): : 558 - 566
  • [35] Wind speed forecasting method based on deep learning strategy using empirical wavelet transform, long short term memory neural network and Elman neural network
    Liu, Hui
    Mi, Xi-Wei
    Li, Yan-Fei
    ENERGY CONVERSION AND MANAGEMENT, 2018, 156 : 498 - 514
  • [36] Real-time energy consumption prediction method for air-conditioning system based on long short-term memory neural network
    Zhao, Yifan
    Li, Wei
    Zhang, Jili
    Jiang, Changwei
    Chen, Siyu
    ENERGY AND BUILDINGS, 2023, 298
  • [37] Anomaly Detection of Power Plant Equipment Using Long Short-Term Memory Based Autoencoder Neural Network
    Hu, Di
    Zhang, Chen
    Yang, Tao
    Chen, Gang
    SENSORS, 2020, 20 (21) : 1 - 20
  • [38] Road surface friction prediction using long short-term memory neural network based on historical data
    Pu, Ziyuan
    Liu, Chenglong
    Shi, Xianming
    Cui, Zhiyong
    Wang, Yinhai
    JOURNAL OF INTELLIGENT TRANSPORTATION SYSTEMS, 2021, 26 (01) : 34 - 45
  • [39] Wind speed prediction method using Shared Weight Long Short-Term Memory Network and Gaussian Process Regression
    Zhang, Zhendong
    Ye, Lei
    Qin, Hui
    Liu, Yongqi
    Wang, Chao
    Yu, Xiang
    Yin, Xingli
    Li, Jie
    APPLIED ENERGY, 2019, 247 : 270 - 284
  • [40] Automated rain fall prediction enabled by optimized convolutional neural network-based feature formation with adaptive long short-term memory framework
    Ananthajothi, K.
    Karthick, T.
    Amanullah, M.
    CONCURRENCY AND COMPUTATION-PRACTICE & EXPERIENCE, 2022, 34 (11)