用于三维弹性波传播和反演的深度神经舵霍兹算子

IF 2.8 3区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS
Caifeng Zou, Kamyar Azizzadenesheli, Zachary E Ross, Robert W Clayton
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引用次数: 0

摘要

摘要 地震波在异质三维介质中传播的数值模拟是研究地下结构和了解地震过程的核心,但对于大型问题来说计算成本很高。这对于全波形反演来说尤其困难,因为全波形反演通常需要运行无数次正演过程。在机器学习方面,近来在算子学习领域开展了大量工作,一类名为神经算子的新模型允许对偏微分方程进行数据驱动求解。最近的地震学研究表明,神经算子经过充分训练后,可以大大缩短波传播的计算时间。然而,三维时域方程所需的内存可能过大。在本研究中,我们证明可以通过求解频域波方程(也称为亥姆霍兹方程)来克服这些限制,因为一组频率的解可以并行确定。三维亥姆霍兹神经算子的内存效率是等效时域版本的 40 倍。我们采用亥姆霍兹神经算子进行二维和三维弹性波建模,与基线谱元法相比,速度提高了两个数量级。神经算子能准确地泛化到变速结构,并能在比训练模拟更密集的输入网格上进行评估。我们还表明,当求解严格位于表面的波场时,通过图神经算子层可以显著提高精度。利用自动微分,所提出的方法可以替代三维全波形反演的邻接态方法,将计算时间减少 350 倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep neural helmholtz operators for 3D elastic wave propagation and inversion
Summary Numerical simulations of seismic wave propagation in heterogeneous 3D media are central to investigating subsurface structures and understanding earthquake processes, yet are computationally expensive for large problems. This is particularly problematic for full waveform inversion, which typically involves numerous runs of the forward process. In machine learning there has been considerable recent work in the area of operator learning, with a new class of models called neural operators allowing for data-driven solutions to partial differential equations. Recent works in seismology have shown that when neural operators are adequately trained, they can significantly shorten the compute time for wave propagation. However, the memory required for the 3D time domain equations may be prohibitive. In this study, we show that these limitations can be overcome by solving the wave equations in the frequency domain, also known as the Helmholtz equations, since the solutions for a set of frequencies can be determined in parallel. The 3D Helmholtz neural operator is 40 times more memory-efficient than an equivalent time-domain version. We employ a Helmholtz neural operator for 2D and 3D elastic wave modeling, achieving two orders of magnitude acceleration compared to a baseline spectral element method. The neural operator accurately generalizes to variable velocity structures and can be evaluated on denser input meshes than used in the training simulations. We also show that when solving for wavefields strictly on the surface, the accuracy can be significantly improved via a graph neural operator layer. In leveraging automatic differentiation, the proposed method can serve as an alternative to the adjoint-state approach for 3D full-waveform inversion, reducing the computation time by a factor of 350.
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来源期刊
Geophysical Journal International
Geophysical Journal International 地学-地球化学与地球物理
CiteScore
5.40
自引率
10.70%
发文量
436
审稿时长
3.3 months
期刊介绍: Geophysical Journal International publishes top quality research papers, express letters, invited review papers and book reviews on all aspects of theoretical, computational, applied and observational geophysics.
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