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Stationary phase point extraction based on high-resolution radon transform and its application to multiple attenuation by wavefield extrapolation

Stationary phase point extraction based on high-resolution radon transform and its application to multiple attenuation by wavefield extrapolation

作     者:LI Aoqi WANG Deli LU Juntao LIU Chengming WANG Tong 

作者机构:College of Geo-Exploration Science and TechnologyJilin UniversityChangchun 130026China 

出 版 物:《Global Geology》 (世界地质(英文版))

年 卷 期:2017年第20卷第2期

页      面:98-105页

学科分类:081801[工学-矿产普查与勘探] 081802[工学-地球探测与信息技术] 08[工学] 0818[工学-地质资源与地质工程] 

基  金:Supported by the National Science and Technology Major Project(No.2016ZX05026-002-003) the National Natural Science Foundation of China(No.41374108) 

主  题:high-resolution radon transform multiple wavefield extrapolation stationary phase point 

摘      要:Multiple prediction and subtraction techniques based on wavefield extrapolation are effective for suppressing multiple related to water layers. In the conventional wavefield extrapolation method,the multiples of the seismic data are predicted from the known total wave field by the Green function convoluted with each point of the bottom. However,only the energy near the stationary phase point has an effect on the summation result when the convolutional gathers are added. The research proposed a stationary phase point extraction method based on high-resolution radon transform. In the radon domain,the energy near the stationary phase point is directly added along the convolutional gathers curve,which is a valid solution to the problem of the unstable phase of the events of multiple. The Curvelet matching subtraction technique is used to remove the multiple,which improved the accuracy of the multiple predicted by the wavefield extrapolation and the artifacts appearing around the events of multiple are well eliminated. The validity and feasibility of the proposed method are verified by the theoretical and practical data example.

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