Shear-Wave Splitting Analysis Using Optimization Algorithms

Author:

He Zhengtao1,Yang Yuyong2ORCID,Zhou Huailai1

Affiliation:

1. 1 College of Geophysics Chengdu University of Technology Chengdu 610059 China cdut.edu.cn

2. 2 State Key Laboratory of Oil and Gas Reservoir Geology and Exploitation Chengdu University of Technology Chengdu 610059 China cdut.edu.cn

Abstract

Abstract Shear-wave splitting (SWS) analysis is used to predict fractures in subsurface media. Specifically, two parameters relevant to SWS analysis (the azimuth of the fast shear wave and the time delay between the fast and slow shear waves) are used to quantify the main azimuth and degree of the fracture development, respectively. However, the algorithms of SWS analysis using a grid search have relatively low computational efficiency, as they need to calculate the objective function values of all grid points. To improve the efficiency of SWS analysis, we proposed new algorithms using the gradient descent, Newton, and advance-retreat methods. The new methods use the direction of the fastest gradient descent, the intersection points of the tangent plane of the first-order objective function with the zero plane, and narrowing the range of extremum points to determine the search path. Therefore, this removes the necessity to compare all grid points in the value region. We compared the three methods and the rotation-correlation method, and both synthetic and field data tests indicated that all three methods had higher computational efficiency than the traditional grid search method. Among the proposed methods, the gradient-descent method obtained the most accurate results for both synthetic and field data. Our study shows that SWS analysis combined with the gradient-descent method can accurately and efficiently obtain SWS parameters for fracture prediction.

Funder

National Natural Science Foundation of China

Sichuan International Science and Technology Innovation Cooperation Program

Natural Science Foundation of Sichuan Province

Publisher

GeoScienceWorld

Subject

Geology

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