Rock-physics-guided machine learning for shear sonic log prediction

被引:0
作者
Zhao, Luanxiao [1 ]
Liu, Jingyu [1 ]
Xu, Minghui [1 ]
Zhu, Zhenyu [2 ]
Chen, Yuanyuan [1 ]
Geng, Jianhua [1 ]
机构
[1] Tongji Univ, State Key Lab Marine Geol, Shanghai, Peoples R China
[2] CNOOC Res Inst Ltd, Beijing, Peoples R China
关键词
WAVE VELOCITY; LITHOFACIES PREDICTION; POROSITY; REGRESSION; MODEL; FLUID; AVO;
D O I
10.1190/geo2023-0152.1
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
The S -wave velocity (VS) is a vital parameter for various petrophysical, geophysical, and geomechanical applications in subsurface characterization. Nevertheless, obtaining shear sonic log is frequently challenging because of its high economic, time, and operating costs. Conventional methods for predicting VS rely on empirical relationships and rock -physics models, which often fall short in accuracy due to their inability to account for the complex factors influencing the relationship between VS and other parameters. We develop a physics -guided machine learning (ML) approach to predict the shear sonic log using various physical parameters (e.g., natural gamma ray, P -wave velocity, density, and resistivity) that can be readily obtained from standard logging suites. Three types of rock -physical constraints combined with three guidance strategies form the various physics -guided models. Specifically, the three constraint models include mudrock line, empirical P- and S -wave velocity relationship, and multiparameter regression from the logging data, and the three guidance strategies involve physics -guided pseudolabels, physics -guided loss function, and transfer learning. To assess the model's generalization ability and simulate the lack of labeled data in real -world applications, a single well is used as a training well, whereas the remaining four wells are used to blind test in a clastic reservoir. Compared with supervised ML without any constraints, all models incorporating physical constraints demonstrate a significant improvement in prediction accuracy and generalization performance. This underscores the importance of integrating the first -order physical laws into the network training for shear sonic log prediction. The most successful approach combines the multiparameter regression relationship with the physics -guided pseudolabels in this case, resulting in a remarkable 47% reduction in the average rootmean -square error during the blind test.
引用
收藏
页码:D75 / D87
页数:13
相关论文
共 62 条
[1]  
Akhundi H., 2014, OPEN J GEOL, V4, P303, DOI DOI 10.4236/ojg.2014.47023
[2]   Support vector regression based determination of shear wave velocity [J].
Bagheripour, Parisa ;
Gholami, Amin ;
Asoodeh, Mojtaba ;
Vaezzadeh-Asadi, Mohsen .
JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING, 2015, 125 :95-99
[3]   Bayesian linearized AVO inversion [J].
Buland, A ;
Omre, H .
GEOPHYSICS, 2003, 68 (01) :185-198
[4]   RELATIONSHIPS BETWEEN COMPRESSIONAL-WAVE AND SHEAR-WAVE VELOCITIES IN CLASTIC SILICATE ROCKS [J].
CASTAGNA, JP ;
BATZLE, ML ;
EASTWOOD, RL .
GEOPHYSICS, 1985, 50 (04) :571-581
[5]   Deep carbonate reservoir characterisation using multi-seismic attributes viamachine learning with physical constraints [J].
Chen, Yuanyuan ;
Zhao, Luanxiao ;
Pan, Jianguo ;
Li, Chuang ;
Xu, Minghui ;
Li, Kejian ;
Zhang, Fengshou ;
Geng, Jianhua .
JOURNAL OF GEOPHYSICS AND ENGINEERING, 2021, 18 (05) :761-775
[6]  
Cho KYHY, 2014, Arxiv, DOI arXiv:1409.1259
[7]  
Chung J., 2014, NIPS 2014 WORKSHOP D
[8]   Modeling of shear wave velocity in limestone by soft computing methods [J].
Danial, Behnia ;
Kaveh, Ahangari ;
Rahim, Moeinossadat Sayed .
INTERNATIONAL JOURNAL OF MINING SCIENCE AND TECHNOLOGY, 2017, 27 (03) :423-430
[9]   Physics-guided deep autoencoder to overcome the need for a starting model in full-waveform inversion [J].
Dhara A. ;
Sen M.K. .
Leading Edge, 2022, 41 (06) :375-381
[10]   Combining classification and regression for improving shear wave velocity estimation from well logs data [J].
Du, Qizhen ;
Yasin, Qamar ;
Ismail, Atif ;
Sohail, Ghulam Mohyuddin .
JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING, 2019, 182