Leveraging petrophysical and geological constraints for AI-driven predictions of total organic carbon (TOC) and hardness in unconventional reservoir prospects

被引:0
|
作者
Davy, Nandito [1 ]
El-Husseiny, Ammar [1 ,3 ]
Waheed, Umair bin [1 ]
Ayranci, Korhan [1 ]
Fawad, Manzar [3 ]
Mahmoud, Mohamed [2 ]
Harris, Nicholas B. [4 ]
机构
[1] King Fahd Univ Petr & Minerals KFUPM, Coll Petr Engn & Geosci CPG, Dept Geosci, Acad Belt Rd, Dhahran 31261, Eastern Provinc, Saudi Arabia
[2] King Fahd Univ Petr & Minerals KFUPM, Coll Petr Engn & Geosci CPG, Dept Petr Engn, Acad Belt Rd, Dhahran 31261, Eastern Provinc, Saudi Arabia
[3] King Fahd Univ Petr & Minerals KFUPM, Ctr Integrat Petr Res CIPR, Acad Belt Rd, Dhahran 31261, Eastern Provinc, Saudi Arabia
[4] Univ Alberta, Fac Sci, Dept Earth & Atmospher Sci, 2-04B Earth Sci Bldg, 11223 Saskatchewan Dr NW, Edmonton, AB T6G 2E3, Canada
关键词
Total organic carbon (TOC); Hardness; Petrophysical constraint; Geological constraint; Unconventional reservoir; Machine learning; VECTOR-REGRESSION MACHINE; HORN RIVER GROUP; BRITISH-COLUMBIA; SHALE RESERVOIRS; LOGS; BRITTLENESS; BASIN; TECHNOLOGY; TOUGHNESS; MATURITY;
D O I
10.1007/s40948-024-00904-4
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
Key parameters for evaluating shale reservoirs include total organic carbon (TOC), thermal maturity, and hardness, the latter influencing fracture development and being crucial for managing ultralow permeability reservoirs. These parameters are often derived from costly, time-consuming core sample analyses and may be limited in availability. Recently, machine learning (ML) and deep learning (DL) have effectively predicted TOC and hardness from well logs but often require large datasets and lack integration with petrophysical and geological constraints. This study examines the impact of incorporating these constraints on prediction accuracy using four manually fine-tuned ML algorithms: Random Forest (RF), Support Vector Regression (SVR), XGBoost (XGB), and Artificial Neural Network (ANN). Data from five wells in the Horn River Basin (HRB) comprising 6366 data points were analyzed, with TOC and hardness values for 612 and 3492 points, respectively. Petrophysical constraints were derived from triple combo well logs (gamma ray, bulk density, neutron porosity), while geological constraints included stratigraphic data or spatial distance between training and target wells-petrophysical constraints most improved predictions, while stratigraphic and spatial constraints had progressively less impact. Our optimized models achieved R2 (coefficient of determination) of 0.89 and RMSE (root-mean-square error) of 0.47 for TOC predictions and 0.90 and 34.8 for hardness predictions, reducing RMSE by up to 13.52% compared to the unconstrained model. The XGB algorithm emerged as the best choice, and integrating domain knowledge transforms a data-driven method into a scientifically driven one, enhancing prediction accuracy and aligning model predictions with petrophysical and geological intricacies.
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页数:31
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