GAN-enhanced directional seismic wavefield decomposition and its application in reverse-time migration

GEOPHYSICS Pub Date : 2024-02-09 DOI:10.1190/geo2023-0296.1
Jiaxing Sun, Jidong Yang, Jianping Huang, Youcai Yu, Yiwei Tian, Shanyuan Qin
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Abstract

Reverse time migration (RTM) is an accurate method for imaging complex geologic structures without imposing any dip limitations. However, a large amount of high-amplitude, low-frequency noise, which is mainly generated by the crosscorrelation of source and receiver wavefields propagating in the same directions, seriously contaminates the image quality. The causal imaging condition with separated up- and downgoing wavefields is an effective approach to reduce these low-frequency artifacts. Explicit up- and downgoing wavefield decomposition based on the Hilbert transform is computationally expensive due to additional wavefield extrapolation and storage for the imaginary parts. Directionally propagating wavefield has distinctive kinematic patterns such as traveltime and wavefront curvature, which provides us an opportunity to implement the wavefield decomposition using the statistical neural network method. Using extrapolated wavefields as the input and the decomposed up-, down-, left- and rightgoing wavefields as the labeled data, we train a pair of generative adversarial networks to predict directional wavefields. The training datasets are generated using seismic full-waveform modeling and explicit wavefield decomposition based on the Hilbert transform. Then, the decomposed directional wavefields are incorporated into a novel imaging condition that depends on subsurface dip angles to compute the reflectivity perpendicular to reflectors. Numerical experiments demonstrate that the proposed method can produce accurate directional wavefield decomposition results and high-quality reflectivity images without low-wavenumber artifacts.
GAN 增强型定向地震波场分解及其在逆时迁移中的应用
反向时间迁移(RTM)是一种对复杂地质结构进行成像的精确方法,且不受任何倾角限制。然而,大量高振幅、低频噪声(主要由在同一方向传播的源波场和接收波场的交叉相关性产生)严重污染了图像质量。分离上行波场和下行波场的因果成像条件是减少这些低频伪影的有效方法。基于希尔伯特变换的显式上行波场和下行波场分解需要额外的波场外推和虚部存储,因此计算成本很高。定向传播波场具有独特的运动模式,如行进时间和波前曲率,这为我们提供了使用统计神经网络方法实现波场分解的机会。使用外推波场作为输入,分解后的上行、下行、左行和右行波场作为标记数据,我们训练了一对生成式对抗网络来预测定向波场。训练数据集是通过地震全波形建模和基于希尔伯特变换的显式波场分解生成的。然后,将分解的定向波场纳入一种新的成像条件,该条件取决于地下倾角,以计算垂直于反射体的反射率。数值实验证明,所提出的方法能产生精确的定向波场分解结果和高质量的反射率图像,且无低波数伪影。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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