[an error occurred while processing this directive] Global Geology 2016, 19(1) 26-32 DOI:     ISSN: 1673-9736 CN: 22-1371/P

本期目录 | 下期目录 | 过刊浏览 | 高级检索                                                            [打印本页]   [关闭]
论文
扩展功能
本文信息
Supporting info
PDF(635KB)
[HTML全文]
参考文献[PDF]
参考文献
服务与反馈
把本文推荐给朋友
加入我的书架
加入引用管理器
引用本文
Email Alert
文章反馈
浏览反馈信息
本文关键词相关文章
 
本文作者相关文章
CHANG Kai
LIN Ye
GAO Ji
CHEN Yukuan and ZHANG Jiewen
PubMed
Article by Chang K
Article by Lin Y
Article by Gao J
Article by Chen YAZJ
 
 
 
摘要:  
关键词    
Downhole microseismic data reconstruction and imaging based on combination of spline interpolation and curveletsparse constrained interpolation
CHANG Kai, LIN Ye, GAO Ji, CHEN Yukuan and ZHANG Jiewen
1. College of Geo- Exploration Science and Technology,Jilin University,Changchun 130026,China; 2. Wantai Microseismic Lab of School of Earth and Space Sciences,University Science and Technology of China,Hefei 230026, China ; 3. Laboratory of Seismology and Physics of Earth's Interior,University of Science and Technology of China,Hefei 230026,China
Abstract:

When using borehole sensors and microseimic events to image,spatial aliasing often occurred be- cause of the lack of sensors underground and the distance between the sensors which were too large. To solve the aliasing problem,data reconstruction is often needed. Curvelet transform sparsity constrained inversion was widely used in the seismic data reconstruction field for its anisotropic,multiscale and local basis. However,for the downhole case,because the number of sampling point is much larger than the number of the sensors,the advantage of the curvelet basis can't perform very well. To mitigate the problem,the method that joints spline and curvlet- based compressive sensing was proposed. First,we applied the spline interpolation to the first arri- vals that to be interpolated. And the events are moved to a certain direction,such as horizontal,which can be represented by the curvelet basis sparsely. Under the spasity condition,curvelet- based compressive sensing was applied for the data,and directional filter was also used to mute the near vertical noises. After that,the events were shifted to the spline line to finish the interpolation workflow. The method was applied to a synthetic mod- el,and better result was presented than using curvelet transform interpolation directly. We applied the method to a real dataset,a microseismic downhole observation field data in Nanyang,using Kirchhoff migration method to image the microseimic event. Compared with the origin data,artifacts were suppressed on a certain degree.

Keywords: downhole microseismic monitoring   spline interpolation   curvelet transform   data reconstruction  
收稿日期  修回日期  网络版发布日期  
DOI:
基金项目:

 

通讯作者:
作者简介:
作者Email:

参考文献:
 
本刊中的类似文章
1.. [J]. Global Geology, 2024,27(4): 207-215
2.. [J]. Global Geology, 2024,27(4): 177-195
3.. [J]. Global Geology, 2024,27(4): 196-206
4.. [J]. Global Geology, 2024,27(4): 216-232
5.. [J]. Global Geology, 2024,27(3): 121-131
6.. [J]. Global Geology, 2024,27(3): 132-144
7.. [J]. Global Geology, 2024,27(3): 167-176
8.. [J]. Global Geology, 2024,27(3): 145-153
9.. [J]. Global Geology, 2024,27(3): 154-166
10.. [J]. Global Geology, 2024,27(2): 93-104
11.. [J]. Global Geology, 2024,27(2): 105-120
12.. [J]. Global Geology, 2024,27(2): 63-75
13.. [J]. Global Geology, 2024,27(2): 76-92
14.. [J]. Global Geology, 2024,27(1): 35-42
15.. [J]. Global Geology, 2024,27(1): 43-55

Copyright by Global Geology