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A wavefield-separation-based elastic least-squares reverse time migration

机译:基于波场分离的弹性最小二乘反转时间迁移

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Elastic least-squares reverse time migration (ELSRTM) has the potential to provide improved subsurface reflectivity estimation. Compared with elastic RTM (ERTM), ELSRTM can produce images with higher spatial resolution, more balanced amplitudes, and fewer artifacts. However, the crosstalk between P- and S-waves can significantly degrade the imaging quality of ELSRTM. We have developed an ELSRTM method to suppress the crosstalk artifacts. This method includes three crucial points. The first is that the forward and backward wavefields are extrapolated based on the separated elastic velocity-stress equation of P- and S-waves. The second is that the separated vector P- and S-wave residuals are migrated to form reflectivity images of Lame constants. lambda and mu independently. The third is that the reflectivity images of lambda and mu are obtained by the vector P-wave wavefields achieved in the backward extrapolation of the separated vector P-wave residuals and the vector S-wave wavefields achieved in the backward extrapolation of the separated vector S-wave residuals, respectively. Numerical tests with synthetic data demonstrate that our ELSRTM method can produce images free of crosstalk artifacts. Compared with ELSRTM based on the coupled wavefields, our ELSRTM method has better convergence and higher accuracy.
机译:弹性最小二乘反向时间迁移(ELSRTM)具有提供改进的地下反射率估计的可能性。与弹性RTM(ERTM)相比,ELSRTM可以产生具有更高空间分辨率,更平衡的幅度和更少的伪影的图像。然而,P-和S波之间的串扰可以显着降低ELSRTM的成像质量。我们开发了一个elsrtm方法来抑制串扰伪影。该方法包括三个关键点。首先是基于P-和S波的分离的弹性速度 - 应力方程来推断前后波浪。第二种是迁移分离的载体p-和S波残差以形成跛脚常数的反射率图像。 Lambda和Mu独立。第三是通过在分离的载体p波残差的后向外推开中实现的λ和mm的反射率图像通过在分离的载体s的后外推开的载体的向后推开的向后推开中获得的矢量p波波波。 - 除去残差。合成数据的数值测试表明我们的ELSRTM方法可以产生不含串扰伪影的图像。与基于耦合的波场的ELSRTM相比,我们的ELSRTM方法具有更好的收敛性和更高的准确性。

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