迈向高保真成像:动态匹配FWI及其应用

Q2 Earth and Planetary Sciences
Leading Edge Pub Date : 2023-02-01 DOI:10.1190/tle42020124.1
Y. Huang, J. Mao, J. Sheng, M. Perz, Yang He, F. Hao, Faqi Liu, Bin Wang, S. L. Yong, Daniel H. Chaikin, A. Ramirez, M. Hart, H. Roende
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引用次数: 0

摘要

全波形反演(FWI)作为一种强大的速度模型构建工具,在我们的行业中已经牢固地建立起来。与传统的速度模型建立方法(如折射和反射层析成像)相比,FWI具有显著的理论优势。具体而言,通过波动方程求解非线性逆问题,FWI能够恢复包含高、低空间波数的宽带速度模型,从而扩展了传统速度模型建立方法固有的残余移差校正近似。此外,FWI能够从整个波场(即早期到达、反射、折射和多重能量)反演信息,而不是像传统方法那样从一个子集(即第一次断裂和一次反射)反演信息,从而利用更多信息来更好地约束其模型估计。然而,这些理论上的好处在实践中并不容易实现,因为实际地震数据的各种复杂性经常与算法假设相违背,导致结果不令人满意。动态匹配FWI (DMFWI)是一种新发展的算法,它解决了两个动态匹配数据集(一个是记录数据集,另一个是合成数据集)相互关系最大化的反演问题。两个数据集的动态匹配去强调幅度的影响,这使得算法在数据拟合过程中专注于最小化它们的运动差异而不是幅度。多通道相关性使算法对低信噪比数据具有鲁棒性。DMFWI在不同类型采集和地质环境中的应用表明,这种新颖的FWI方法可以解决复杂的速度误差,并提供高质量的偏移图像,显示出高度的地质合理性。此外,通过计算反向FWI速度模型的方向导数,可以直接获得反射率图像作为自然副产品。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward high-fidelity imaging: Dynamic matching FWI and its applications
Full-waveform inversion (FWI) is firmly established within our industry as a powerful velocity model building tool. FWI carries significant theoretical advantages over conventional velocity model building methods such as refraction and reflection tomography. Specifically, by solving a nonlinear inverse problem through the wave equation, FWI is able to recover a broadband velocity model containing both high and low spatial wavenumbers, thus extending the approximation of residual moveout correction inherent in traditional velocity model building approaches. Moreover, FWI is capable of inverting information from the entire wavefield (i.e., early arrivals, reflections, refractions, and multiple energy) rather than from a subset as in conventional approaches (i.e., first break and primary reflections), thereby availing itself of more information to better constrain its model estimate. However, these theoretical benefits cannot be realized easily in practice because various complexities of real seismic data often conspire to violate algorithmic assumptions, leading to unsatisfactory results. Dynamic matching FWI (DMFWI) is a newly developed algorithm that solves an inversion problem that maximizes the cross correlation of two dynamically matched data sets — one recorded and the other synthetic. Dynamic matching of the two data sets de-emphasizes the amplitude impact, which allows the algorithm to focus on minimizing their kinematic differences rather than amplitude in the data-fitting process. The multichannel correlation makes the algorithm robust for data with low signal-to-noise ratio. Applications of DMFWI across different types of acquisition and geologic settings demonstrate that this novel FWI approach can resolve complex velocity errors and provide high-quality migrated images that exhibit a high degree of geologic plausibility. Additionally, reflectivity images can be obtained in a straightforward manner as natural byproducts through computation of the directional derivative of the inverted FWI velocity models.
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来源期刊
Leading Edge
Leading Edge Earth and Planetary Sciences-Geology
CiteScore
3.10
自引率
0.00%
发文量
180
期刊介绍: THE LEADING EDGE complements GEOPHYSICS, SEG"s peer-reviewed publication long unrivalled as the world"s most respected vehicle for dissemination of developments in exploration and development geophysics. TLE is a gateway publication, introducing new geophysical theory, instrumentation, and established practices to scientists in a wide range of geoscience disciplines. Most material is presented in a semitechnical manner that minimizes mathematical theory and emphasizes practical applications. TLE also serves as SEG"s publication venue for official society business.
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