Seismic Full Waveform Inversion Accelerated by Overlapping Data Input and Computation

被引:0
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作者
Junqiu Zhang
Ying Rao
机构
[1] China University of Petroleum (Beijing),College of Geophysics
来源
关键词
Full wave inversion; FWI; overlapping data input and computation (ODIC); parallel framework; POSIX threads (Pthreads);
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学科分类号
摘要
Seismic full waveform inversion (FWI) is a powerful technology to obtain high-precision and high-resolution images of subsurface structures. However, FWI is a data-intensive algorithm that needs to read extensive seismic data from disks, which significantly affects its performance. We proposed a portable parallel framework to improve FWI by overlapping data input and computation (ODIC). The framework is based on POSIX threads (Pthreads), which is a standard thread API library and can create a parent thread and a child thread in the FWI process. The former is used to perform computation and the latter to read data from disks, both running simultaneously. This framework has two attractive features. First, it is broadly applicable; it can run on almost any computer from a laptop to a supercomputer. Second, it is easy to implement; it can be readily applied to existing FWI programs. A 3D FWI example shows that the framework speeds up FWI considerably.
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页码:3517 / 3526
页数:9
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