Determination of an infill well placement using a data-driven multi-modal convolutional neural network

被引:38
作者
Chu, Min-gon [1 ]
Min, Baehyun [2 ,3 ]
Kwon, Seoyoon [2 ]
Park, Gayoung [2 ]
Kim, Sungil [4 ]
Nguyen Xuan Huy [5 ]
机构
[1] Korea Natl Oil Corp, E&P Technol Ctr, 305 Jongga Ro, Ulsan 44538, South Korea
[2] Ewha Womans Univ, Dept Climate & Energy Syst Engn, 52 Ewhayeodae Gil, Seoul 03760, South Korea
[3] Ewha Womans Univ, Ctr Climate Environm Change Predict Res, 52 Ewhayeodae Gil, Seoul 03760, South Korea
[4] Korea Inst Geosci & Mineral Resources, Petr & Marine Res Div, 124 Gwahak Ro, Daejeon 34132, South Korea
[5] Ho Chi Minh Univ, VNU HCM, Fac Geol & Petr Engn, 268 Ly Thuong Kiet,Dist 10, Ho Chi Minh City, Vietnam
关键词
Infill well; Convolutional neural network; Multi-modal learning; Productivity; OPTIMIZATION;
D O I
10.1016/j.petrol.2019.106805
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
This study determines the optimal placement for a vertical infill well using a multi-modal convolutional neural network (CNN). 3D arrays composed of static and dynamic reservoir properties near a candidate infill well are inputted to the convolution stage of CNN. Multi-modal learning is applied to CNN for feature extraction of inputs. The features are compressed via fully connected layers for evaluating the productivity of every candidate infill scenario. The proposed CNN is applied to a channelized oil reservoir, and its performance is compared to that of a feedforward neural network. Dataset for the neural networks is obtained by running full-physics simulations for selected scenarios. CNN outperforms the feedforward neural network for the test scenarios of single- and dualmodal cases. Both neural networks yield comparable predictability for a quad-modal case. Results of the quad-modal CNN are in agreement with reservoir simulation results at cheaper computational costs. The results highlight the potential of data-driven machine learning in expediting the optimal well placement by partially replacing expensive simulation runs.
引用
收藏
页数:20
相关论文
共 51 条
[1]  
Al-Fattah S.M., 2001, P SPE HYDR EC EV S D, DOI 10.2118/68593-MS
[2]  
Alusta G., 2011, SOC PET ENG, DOI [10.2118/143300-MS, DOI 10.2118/143300-MS]
[3]  
[Anonymous], representation learning with deep convolutional generative
[4]  
[Anonymous], 2017, IMEX USER GUIDE
[5]  
[Anonymous], 2015, Deep learn. nat., DOI [10.1038/nature14539, DOI 10.1038/NATURE14539]
[6]  
[Anonymous], 2011, 28 INT C MACH LEARN
[7]  
[Anonymous], 2011, P 14 INT C ART INT S
[8]   Comparative evaluation of back-propagation neural network learning algorithms and empirical correlations for prediction of oil PVT properties in Iran oilfields [J].
Asadisaghandi, Jalil ;
Tahmasebi, Pejman .
JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING, 2011, 78 (02) :464-475
[9]  
Behnke S, 2003, LECT NOTES COMPUT SC, V2766, P1
[10]   Gradient-based optimization of hyperparameters [J].
Bengio, Y .
NEURAL COMPUTATION, 2000, 12 (08) :1889-1900