A Comprehensive Summary of the Application of Machine Learning Techniques for CO2-Enhanced Oil Recovery Projects

被引:10
作者
Du, Xuejia [1 ]
Salasakar, Sameer [1 ]
Thakur, Ganesh [1 ]
机构
[1] Univ Houston, Cullen Coll Engn, Dept Petr Engn, Houston, TX 77204 USA
关键词
machine learning; CO2-EOR; minimum miscible pressure (MMP); water-alternating-gas (WAG); system review; MINIMUM MISCIBILITY PRESSURE; SUPPORT VECTOR REGRESSION; WATER ALTERNATING GAS; IMPURE CO2 STREAMS; NEURAL-NETWORK; GENETIC ALGORITHM; CO2-OIL SYSTEM; CRUDE-OIL; PREDICTION; MODEL;
D O I
10.3390/make6020043
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
This paper focuses on the current application of machine learning (ML) in enhanced oil recovery (EOR) through CO2 injection, which exhibits promising economic and environmental benefits for climate-change mitigation strategies. Our comprehensive review explores the diverse use cases of ML techniques in CO2-EOR, including aspects such as minimum miscible pressure (MMP) prediction, well location optimization, oil production and recovery factor prediction, multi-objective optimization, Pressure-Volume-Temperature (PVT) property estimation, Water Alternating Gas (WAG) analysis, and CO2-foam EOR, from 101 reviewed papers. We catalog relative information, including the input parameters, objectives, data sources, train/test/validate information, results, evaluation, and rating score for each area based on criteria such as data quality, ML-building process, and the analysis of results. We also briefly summarized the benefits and limitations of ML methods in petroleum industry applications. Our detailed and extensive study could serve as an invaluable reference for employing ML techniques in the petroleum industry. Based on the review, we found that ML techniques offer great potential in solving problems in the majority of CO2-EOR areas involving prediction and regression. With the generation of massive amounts of data in the everyday oil and gas industry, machine learning techniques can provide efficient and reliable preliminary results for the industry.
引用
收藏
页码:917 / 943
页数:27
相关论文
共 123 条
[21]   Simulation of CO2-oil minimum miscibility pressure (MMP) for CO2 enhanced oil recovery (EOR) using neural networks [J].
Chen, Guangying ;
Wang, Xiangzeng ;
Liang, Zhiwu ;
Gao, Ruimin ;
Sema, Teerawat ;
Luo, Peng ;
Zeng, Fanhua ;
Tontiwrachwuthikul, Paitoon .
GHGT-11, 2013, 37 :6877-6884
[22]   The genetic algorithm based back propagation neural network for MMP prediction in CO2-EOR process [J].
Chen, Guangying ;
Fu, Kaiyun ;
Liang, Zhiwu ;
Sema, Teerawat ;
Li, Chen ;
Tontiwachwuthikul, Paitoon ;
Idem, Raphael .
FUEL, 2014, 126 :202-212
[23]   A machine learning model for predicting the minimum miscibility pressure of CO2 and crude oil system based on a support vector machine algorithm approach [J].
Chen, Hao ;
Zhang, Chao ;
Jia, Ninghong ;
Duncan, Ian ;
Yang, Shenglai ;
Yang, YongZhi .
FUEL, 2021, 290
[24]   Application of machine learning techniques for selecting the most suitable enhanced oil recovery method; challenges and opportunities [J].
Cheraghi, Yasaman ;
Kord, Shahin ;
Mashayekhizadeh, Vahid .
JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING, 2021, 205
[25]  
Choubineh A, 2019, Advances in GeoEnergy Research, V3, P52, DOI DOI 10.26804/AGER.2019.01.04
[26]  
Christiansen R.L., 1987, SPE 13114 SPE RESERV, V2, P523, DOI [10.2118/13114-PA, DOI 10.2118/13114-PA]
[27]   Modeling minimum miscibility pressure of pure/impure CO2-crude oil systems using adaptive boosting support vector regression: Application to gas injection processes [J].
Dargahi-Zarandi, Atefeh ;
Hemmati-Sarapardeh, Abdolhossein ;
Shateri, Mohammadhadi ;
Menad, Nait Amar ;
Ahmadi, Mohammad .
JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING, 2020, 184
[28]   Prediction of CO2-Oil Minimum Miscibility Pressure Using Soft Computing Methods [J].
Dehaghani, Amir Hossein Saeedi ;
Soleimani, Reza .
CHEMICAL ENGINEERING & TECHNOLOGY, 2020, 43 (07) :1361-1371
[29]  
Dehghani S.A.M., 2006, Iran. J. Chem. Eng, V3, P44
[30]   Minimum miscibility pressure prediction based on a hybrid neural genetic algorithm [J].
Dehhani, S. A. Mousavi ;
Sefti, M. Vafaie ;
Ameri, A. ;
Kaveh, N. Shojai .
CHEMICAL ENGINEERING RESEARCH & DESIGN, 2008, 86 (A2) :173-185