A deep learning-based method for enhancing isotropic reverse time migration in complex media

IF 2.1 4区 地球科学
Yi Sun, Zhefeng Wei, Xiaofeng Jia, Chenghong Zhu
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引用次数: 0

Abstract

In the field of geophysical exploration, reverse time migration (RTM) stands out as an effective seismic imaging technique, offering significant advantages in imaging complex geological structures. However, the seismic data collected in most cases of exploration contain complex geological anisotropy. Employing isotropic RTM methods for processing anisotropic seismic data may result in various issues, including artifacts and inaccuracies in structural imaging. We develop a convolutional neural network (CNN) model that improves isotropic RTM results by learning the results of anisotropic RTM, and the proposed U-net network with ResNet and SmoothL1 loss function can combine the advantages of the two migration methods. The input of the neural network is acoustic isotropic RTM images, and the label is the results of anisotropic RTM based on the tilted transversely isotropic (TTI) acoustic first-order velocity-stress equations. Validation and testing of complex models such as Marmousi model and SEG overthrust model have shown that the trained network effectively improves the imaging quality of isotropic RTM especially for dip structures and suppresses artifacts such as those caused by incomplete convergence of diffraction waves. The application of our CNN model to process isotropic RTM images produces enhanced results, with lower computational burden and implementation difficulty compared to anisotropic RTM methods.

Abstract Image

Abstract Image

基于深度学习的复杂介质中各向同性逆时偏移增强方法
在地球物理勘探领域,逆时偏移(RTM)作为一种有效的地震成像技术,在复杂地质构造成像方面具有显著的优势。然而,在大多数勘探中收集到的地震数据包含复杂的地质各向异性。采用各向同性RTM方法处理各向异性地震数据可能会导致各种问题,包括结构成像中的伪影和不准确性。我们通过学习各向异性RTM的结果,开发了一种改进各向同性RTM结果的卷积神经网络(CNN)模型,并提出了具有ResNet和SmoothL1损失函数的U-net网络,可以结合两种迁移方法的优点。神经网络的输入是声学各向同性RTM图像,标记是基于倾斜的横向各向同性(TTI)声学一阶速度-应力方程的各向异性RTM结果。对Marmousi模型和SEG逆冲模型等复杂模型的验证和测试表明,训练后的网络有效地提高了各向同性RTM成像质量,特别是对倾角结构的成像质量,抑制了衍射波不完全收敛等伪影。应用我们的CNN模型处理各向异性RTM图像,与各向异性RTM方法相比,计算负担和实现难度更低,结果更好。
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来源期刊
Acta Geophysica
Acta Geophysica GEOCHEMISTRY & GEOPHYSICS-
CiteScore
3.80
自引率
13.00%
发文量
251
期刊介绍: Acta Geophysica is open to all kinds of manuscripts including research and review articles, short communications, comments to published papers, letters to the Editor as well as book reviews. Some of the issues are fully devoted to particular topics; we do encourage proposals for such topical issues. We accept submissions from scientists world-wide, offering high scientific and editorial standard and comprehensive treatment of the discussed topics.
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