Toward high-fidelity imaging: Dynamic matching FWI and its applications

Author:

Huang Yi1,Mao Jian2,Sheng James1,Perz Mike3,He Yang1,Hao Feng1,Liu Faqi1,Wang Bin1,Yong Seet Li1,Chaikin Daniel1,Ramirez Adriana Citlali4,Hart Matt4,Roende Henrik1

Affiliation:

1. TGS, Houston, Texas, USA..

2. Formerly TGS; presently Schlumberger, Houston, Texas, USA..

3. Formerly TGS; presently EOG Resources, Houston, Texas, USA..

4. TGS, Woking, UK..

Abstract

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.

Publisher

Society of Exploration Geophysicists

Subject

Geology,Geophysics

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Potential of FWI imaging for shallow turbidite shadow zone: A case study;Third International Meeting for Applied Geoscience & Energy Expanded Abstracts;2023-12-14

2. Resolving geological complexity with legacy streamer survey: Potiguar 3D offshore Brazil case study;Third International Meeting for Applied Geoscience & Energy Expanded Abstracts;2023-12-14

3. Rapid glacial sedimentation and overpressure in oozes causing large craters on the mid-Norwegian margin: integrated interpretation of the Naust, Kai and Brygge formations;Geological Society, London, Special Publications;2023-08-24

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