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Velocity Building by Reflection Waveform Inversion without Cycle-skipping

机译:通过无循环跳变的反射波形反演来建立速度

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摘要

Reflection waveform inversion (RWI) provides estimation of low wavenumber model components using reflections generated from a migration/demigration process. The resulting model tends to be a good initial model for FWI. In fact, the optimization images to combine the migration velocity analysis (MVA) objectives (given here by RWI) and the FWI ones. However, RWI may still encounter cycle-skipping at far offsets if the velocity model is highly inaccurate. Similar to MVA, RWI is devoted to focusing reflection data to its true image positions, yet because of the cycle skipping potential we tend to initially use only near offsets. To make the inversion procedure more robust, we introduce the extended image into our RWI. Extending the model perturbations (or image) allows us to better fit the data at larger offsets even with an inaccurate velocity. Thus, we implement a nested approach to optimize the velocity and extended image simultaneously using the objective function of RWI. We slowly reduce the extension, as the image becomes focused, to allow wavepath updates from far offsets to near as a natural progression from long wavelength updates to shorter ones. Applications on synthetic data demonstrate the effectiveness of our method without much additional cost to RWI.
机译:反射波形反演(RWI)使用迁移/消融过程中产生的反射来估计低波数模型分量。所得的模型往往是FWI的良好初始模型。实际上,将迁移速度分析(MVA)目标(在此由RWI提供)和FWI目标结合在一起的优化图像。但是,如果速度模型非常不准确,RWI可能仍会在很远的偏移处遇到循环跳跃。与MVA相似,RWI致力于将反射数据聚焦到其真实图像位置,但是由于循环跳跃的潜力,我们最初倾向于仅使用接近偏移量。为了使反演过程更加健壮,我们将扩展图像引入到RWI中。扩展模型的扰动(或图像)使我们能够以更大的偏移量更好地拟合数据,即使速度不准确。因此,我们使用RWI的目标函数实现了一种嵌套方法来同时优化速度和扩展图像。随着图像变得聚焦,我们逐渐减小了扩展范围,以允许波径从远偏移更新为近,就像从长波长更新到短波长的自然发展一样。综合数据的应用证明了我们方法的有效性,而无需增加RWI的额外成本。

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