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Enabling numerically exact local solver for waveform inversion-a low-rank approach

机译:为波形反转 - 一个低秩法启用数字精确的本地求解器

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As in many fields, in seismic imaging, the data in the field is collected over a relatively large medium even though only a part of that medium is truly of interest. This results in significant waste in computation as a typical inversion algorithm requires many solutions of the wave equation throughout the entire domain, even if only a small part of the domain is being updated. One way to mitigate this is to use a numerically exact local wave equation solver to perform waveform inversions in an area of interest, where the idea is to compute accurate solutions of the wave equation within a subdomain of interest. Although such solvers exist, many require the computation of Green's function matrices in the background domain. For large-scale seismic data acquisition, the computation of the Green's function matrices is prohibitively expensive since it involves solving thousands of partial differential equations in the background model. To mitigate this, in this work, we propose to exploit the low-rank structure of the full subsurface Green's function. Using carefully selected 2D stylized models, we first show that the full subsurface Green's function tensor organized as a matrix exhibits the low-rank structure in a transform domain. We then propose a randomized singular value decomposition-based framework to compute the low-rank approximation of the Green's functions, where the cost of wave equation solves depends on the rank of the underlying Green's function matrix instead of the number of grid points at the surface of the background model and on the boundary of the local domain. Next, we validate the proposed framework by performing time-lapse waveform inversion using the 2D Marmousi model. Finally, we demonstrate a rank-minimization-based framework to compute the low-rank factorized form of the Green's function matrices in large-scale 3D seismic data acquisition.
机译:与许多领域一样,在地震成像中,即使只有其介质的一部分真的是感兴趣的,该领域中的数据也在相对大的媒体上收集。这导致计算中的大量浪费,因为典型的反转算法需要在整个域中的波动方程的许多解,即使只更新域的一小部分。缓解这一点的一种方法是使用数值精确的本地波形方程求解器来执行感兴趣区域中的波形反转,其中思想是计算感兴趣的子域内的波动方程的准确解。虽然存在这种求解器,但是许多需要计算背景域中的绿色函数矩阵。对于大规模地震数据采集,绿色函数矩阵的计算非常昂贵,因为它涉及在背景模型中解决数千个部分微分方程。为了减轻这一点,在这项工作中,我们建议利用完整地下绿色功能的低级结构。我们首先使用精心选择的2D风格化模型显示作为矩阵组织的完整地下绿色的函数张量在变换域中展示了低秩结构。然后,我们提出了一种基于随机的奇异值分解的框架来计算绿色函数的低秩近似,其中波浪方程求解的成本取决于底层绿色函数矩阵的等级而不是表面上的网格点数背景模型和地方域的边界。接下来,我们通过使用2D Marmous模型执行时间流逝波形反演来验证所提出的框架。最后,我们展示了一种基于秩最小化的框架,用于在大规模3D地震数据采集中计算绿色函数矩阵的低级别分子形式。

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