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Optimization driven model-space versus data-space approaches to invert elastic data with the acoustic wave equation

机译:优化驱动的模型空间与数据空间与声波方程一起反转弹性数据的方法

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Inverting data with elastic phases using an acoustic wave equation can lead to erroneous results, especially when the number of iterations is too high, which may lead to over fitting the data. Several approaches have been proposed to address this issue. Most commonly, people apply "data-independent" filtering operations that are aimed to deemphasize the elastic phases in the data in favor of the acoustic phases. Examples of this approach are nested loops over offset range and Laplace parameters. In this paper, we discuss two complementary optimization-driven methods where the minimization process decides adaptively which of the data or model components are consistent with the objective. Specifically, we compare the Student's t misfit function as the data-space alternative and curvelet-domain sparsity promotion as the model-space alternative. Application of these two methods to a realistic synthetic lead to comparable results that we believe can be improved by combining these two methods.
机译:使用声波方程的弹性相反转数据可以导致错误的结果,尤其是当迭代的数量过高时,这可能导致过度拟合数据。提出了几种方法来解决这个问题。最常见的是,人们应用“独立无关”的过滤操作,该滤波操作旨在深入地监视有利于声学阶段的数据中的弹性阶段。此方法的示例是嵌套循环超偏移范围和拉普拉斯参数。在本文中,我们讨论了两个互补优化驱动的方法,其中最小化过程自适应地决定哪些数据或模型组件与目标一致。具体而言,我们将学生的T错误函数与数据空间替代和Curvelet域稀疏性促销进行比较,作为模型空间替代品。将这两种方法应用于现实的合成导致我们认为可以通过组合这两种方法来改善的可比结果。

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