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Frequency-domain acoustic-elastic coupled waveform inversion using the Gauss-Newton conjugate gradient method

机译:高斯-牛顿共轭梯度法的频域声弹耦合波形反演

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We developed a frequency-domain acoustic-elastic coupled waveform inversion based on the Gauss-Newton conjugate gradient method. Despite the use of a high-performance computer system and a state-of-the-art parallel computation algorithm, it remained computationally prohibitive to calculate the approximate Hessian explicitly for a large-scale inverse problem. Therefore, we adopted the conjugate gradient least-squares algorithm, which is frequently used for geophysical inverse problems, to implement the Gauss-Newton method so that the approximate Hessian is calculated implicitly. Thus, there was no need to store the Hessian matrix. By simultaneously back-propagating multi-components consisting of the pressure and displacements, we could efficiently extract information on the subsurface structures. To verify our algorithm, we applied it to synthetic data sets generated from the Marmousi-2 model and the modified SEG/EAGE salt model. We also extended our algorithm to the ocean-bottom cable environment and verified it using ocean-bottom cable data generated from the Marmousi-2 model. With the assumption of a hard seafloor, we recovered both the P-wave velocity of complicated subsurface structures as well as the S-wave velocity. Although the inversion of the S-wave velocity is not feasible for the high Poisson's ratios used to simulate a soft seafloor, several strategies exist to treat this problem. Our example using multi-component data showed some promise in mitigating the soft seafloor effect. However, this issue still remains open.
机译:我们开发了基于高斯-牛顿共轭梯度法的频域声弹耦合波形反演。尽管使用了高性能的计算机系统和最新的并行计算算法,但是对于大规模逆问题,显式地计算近似Hessian仍然在计算上受到阻碍。因此,我们采用了共轭梯度最小二乘算法(通常用于地球物理反问题)来实现高斯-牛顿法,从而隐式计算了近似Hessian。因此,不需要存储黑森州矩阵。通过同时反向传播由压力和位移组成的多分量,我们可以有效地提取地下结构的信息。为了验证我们的算法,我们将其应用于从Marmousi-2模型和改进的SEG / EAGE盐模型生成的合成数据集。我们还将算法扩展到海底电缆环境,并使用从Marmousi-2模型生成的海底电缆数据进行了验证。在坚硬的海底的假设下,我们既恢复了复杂地下结构的P波速度,又恢复了S波速度。尽管对于模拟软海底的高泊松比而言,S波速度的反演是不可行的,但仍存在几种解决该问题的策略。我们的使用多组分数据的示例显示了减轻软海底效应的一些希望。但是,这个问题仍然存在。

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