Predicting shear wave velocity from conventional well logs with deep and hybrid machine learning algorithms

被引:59
作者
Rajabi, Meysam [1 ]
Hazbeh, Omid [2 ]
Davoodi, Shadfar [3 ]
Wood, David A. [4 ]
Tehrani, Pezhman Soltani [5 ]
Ghorbani, Hamzeh [6 ]
Mehrad, Mohammad [7 ]
Mohamadian, Nima [8 ]
Rukavishnikov, Valeriy S. [3 ]
Radwan, Ahmed E. [9 ]
机构
[1] Birjand Univ Technol, Dept Min Engn, Birjand, Iran
[2] Shahid Chamran Univ, Fac Earth Sci, Ahwaz, Iran
[3] Tomsk Polytech Univ, Sch Earth Sci & Engn, Lenin Ave, Tomsk, Russia
[4] DWA Energy Ltd, Lincoln LN5 9JP, England
[5] Univ Tehran, Dept Petr Engn, Kish Int Campus, Kish, Iran
[6] Islamic Azad Univ, Ahvaz Branch, Young Researchers & Elite Club, Ahvaz, Iran
[7] Shahrood Univ Technol, Fac Min Petr & Geophys Engn, Shahrood, Iran
[8] Islamic Azad Univ, Omidiyeh Branch, Young Researchers & Elite Club, Omidiyeh, Iran
[9] Jagiellonian Univ, Fac Geog & Geol, Inst Geol Sci, Gronostajowa 3a, PL-30387 Krakow, Poland
关键词
Shear wave velocity; Hybrid machine learning; Deep learning; Well-log influencing variables; Multi-well dataset; Convolutional neural network; ARTIFICIAL NEURAL-NETWORKS; GENETIC ALGORITHM; MODEL; RESERVOIR; PRESSURE; BASIN; OPTIMIZATION; POROSITY; DENSITY; PATTERN;
D O I
10.1007/s13202-022-01531-z
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
Shear wave velocity (V-s) data from sedimentary rock sequences is a prerequisite for implementing most mathematical models of petroleum engineering geomechanics. Extracting such data by analyzing finite reservoir rock cores is very costly and limited. The high cost of sonic dipole advanced wellbore logging service and its implementation in a few wells of a field has placed many limitations on geomechanical modeling. On the other hand, shear wave velocity V-s tends to be nonlinearly related to many of its influencing variables, making empirical correlations unreliable for its prediction. Hybrid machine learning (HML) algorithms are well suited to improving predictions of such variables. Recent advances in deep learning (DL) algorithms suggest that they too should be useful for predicting V-s for large gas and oil field datasets but this has yet to be verified. In this study, 6622 data records from two wells in the giant Iranian Marun oil field (MN#163 and MN#225) are used to train HML and DL algorithms. 2072 independent data records from another well (MN#179) are used to verify the V-s prediction performance based on eight well-log-derived influencing variables. Input variables are standard full-set recorded parameters in conventional oil and gas well logging data available in most older wells. DL predicts V-s for the supervised validation subset with a root mean squared error (RMSE) of 0.055 km/s and coefficient of determination (R-2) of 0.9729. It achieves similar prediction accuracy when applied to an unseen dataset. By comparing the V-s prediction performance results, it is apparent that the DL convolutional neural network model slightly outperforms the HML algorithms tested. Both DL and HLM models substantially outperform five commonly used empirical relationships for calculating V-s from V-p relationships when applied to the Marun Field dataset. Concerns regarding the model's integrity and reproducibility were also addressed by evaluating it on data from another well in the field. The findings of this study can lead to the development of knowledge of production patterns and sustainability of oil reservoirs and the prevention of enormous damage related to geomechanics through a better understanding of wellbore instability and casing collapse problems.
引用
收藏
页码:19 / 42
页数:24
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