Genetic-algorithm/neural-network approach to seismic attribute selection for well-log prediction

被引:75
作者
Dorrington, KP [1 ]
Link, CA [1 ]
机构
[1] Montana Tech Univ Montana, Dept Geophys Engn, Butte, MT 59701 USA
关键词
D O I
10.1190/1.1649389
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
Neural-network prediction of well-log data using seismic attributes is an important reservoir characterization technique because it allows extrapolation of log properties throughout a seismic volume. The strength of neural-networks in the area of pattern recognition is key in its success for delineating the complex nonlinear relationship between seismic attributes and log properties. We have found that good neural-network generalization of well-log properties can be accomplished using a small number of seismic attributes. This study presents a new method for seismic attribute selection using a genetic-algorithm approach. The genetic algorithm attribute selection uses neural-network training results to choose the optimal number and type of seismic attributes for porosity prediction. We apply the genetic-algorithm attribute-selection method to the C38 reservoir in the Stratton field 3D seismic data set. Eleven wells with porosity logs are used to train a neural network using genetic-algorithm selected-attribute combinations. A histogram of 50 genetic-algorithm attribute selection runs indicates that amplitude-based attributes are the best porosity predictors for this data set. On average, the genetic algorithm selected four attributes for optimal porosity log prediction, although the number of attributes chosen ranged from one to nine. A predicted porosity volume was generated using the best genetic-algorithm attribute combination based on an average cross-validation correlation coefficient. This volume suggested a network of channel sands within the C38 reservoir.
引用
收藏
页码:212 / 221
页数:10
相关论文
共 50 条
[41]   Prediction and validation of gas hydrate saturation distribution in the eastern Nankai Trough, Japan: Geostatistical approach integrating well-log and 3D seismic data [J].
Tamaki, Machiko ;
Suzuki, Kiyofumi ;
Fujii, Tetsuya ;
Sato, Akihiko .
INTERPRETATION-A JOURNAL OF SUBSURFACE CHARACTERIZATION, 2016, 4 (01) :SA83-SA94
[42]   An adaptive QoS route selection algorithm based on genetic approach in combination with neural network [J].
Yuan, YW ;
Zhan, HH ;
Yan, LM .
2003 INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND CYBERNETICS, VOLS 1-5, PROCEEDINGS, 2003, :1808-1813
[43]   Reliability optimization design using a hybridized genetic algorithm with a neural-network technique [J].
Lee, C ;
Gen, M ;
Kuo, W .
IEICE TRANSACTIONS ON FUNDAMENTALS OF ELECTRONICS COMMUNICATIONS AND COMPUTER SCIENCES, 2001, E84A (02) :627-637
[44]   SHORT-TERM LOAD FORECASTING BY A NEURAL-NETWORK AND A REFINED GENETIC ALGORITHM [J].
MAIFELD, T ;
SHEBLE, G .
ELECTRIC POWER SYSTEMS RESEARCH, 1994, 31 (03) :147-152
[45]   Quality prediction and rivet/die selection for SPR joints with artificial neural network and genetic algorithm [J].
Zhao, Huan ;
Han, Li ;
Liu, Yunpeng ;
Liu, Xianping .
JOURNAL OF MANUFACTURING PROCESSES, 2021, 66 :574-594
[46]   Time series prediction with genetic-algorithm designed neural networks: an empirical comparison with modern statistical models [J].
Marriott School of Management, Brigham Young University, Provo, UT 84602, United States .
Comput Intell, 3 (171-184)
[47]   Hybrid neural network and genetic algorithm approach to the prediction of bearing capacity of driven piles [J].
Park, H. I. ;
Seok, J. W. ;
Hwang, D. J. .
Numerical Methods in Geotechnical Engineering, 2006, :671-676
[48]   A NEURAL-NETWORK APPROACH FOR DATUM SELECTION IN COMPUTER-AIDED PROCESS PLANNING [J].
MEI, JN ;
ZHANG, HC ;
OLDHAM, WJB .
COMPUTERS IN INDUSTRY, 1995, 27 (01) :53-64
[49]   Time series prediction with genetic-algorithm designed neural networks: An empirical comparison with modern statistical models [J].
Hansen, JV ;
McDonald, JB ;
Nelson, RD .
COMPUTATIONAL INTELLIGENCE, 1999, 15 (03) :171-184
[50]   Traffic management in wireless ATM network using a hierarchical neural-network based prediction algorithm [J].
Poon, TWT ;
Chan, E .
COMPUTERS AND THEIR APPLICATIONS, 2000, :393-395