Plane-wave least-squares reverse-time migration

被引:0
|
作者
机构
[1] [1,2,Dai, Wei
[2] Schuster, Gerard T.
来源
| 1600年 / Society of Exploration Geophysicists卷 / 78期
关键词
Computation costs - Image ensemble - Marmousi-2 model - Migration velocity - Numerical tests - Reverse time migrations - Spatial resolution - Stable convergence;
D O I
10.1190/geo2012-0377.1
中图分类号
学科分类号
摘要
A plane-wave least-squares reverse-time migration (LSRTM) is formulated with a new parameterization, where the migration image of each shot gather is updated separately and an ensemble of prestack images is produced along with common image gathers. The merits of plane-wave prestack LSRTM are the following: (1) plane-wave prestack LSRTM can sometimes offer stable convergence even when the migration velocity has bulk errors of up to 5%; (2) to significantly reduce computation cost, linear phase-shift encoding is applied to hundreds of shot gathers to produce dozens of plane waves. Unlike phase-shift encoding with random time shifts applied to each shot gather, plane-wave encoding can be effectively applied to data with a marine streamer geometry. (3) Plane-wave prestack LSRTM can provide higher-quality images than standard reverse-time migration. Numerical tests on the Marmousi2 model and a marine field data set are performed to illustrate the benefits of plane-wave LSRTM. Empirical results show that LSRTM in the plane-wave domain, compared to standard reversetime migration, produces images efficiently with fewer artifacts and better spatial resolution. Moreover, the prestack image ensemble accommodates more unknowns to makes it more robust than conventional least-squares migration in the presence of migration velocity errors.
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