Journal Article10.1190/1.3238367
An overview of full-waveform inversion in exploration geophysics
Jean Virieux,Stéphane Operto +1 more
TL;DR: This review attempts to illuminate the state of the art of FWI by building accurate starting models with automatic procedures and/or recording low frequencies, and improving computational efficiency by data-compression techniquestomake3DelasticFWIfeasible.
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Abstract: Full-waveform inversion FWI is a challenging data-fitting procedure based on full-wavefield modeling to extract quantitative information from seismograms. High-resolution imaging at half the propagated wavelength is expected. Recent advances in high-performance computing and multifold/multicomponent wide-aperture and wide-azimuth acquisitions make 3D acoustic FWI feasible today. Key ingredients of FWI are an efficient forward-modeling engine and a local differential approach, in which the gradient and the Hessian operators are efficiently estimated. Local optimization does not, however, prevent convergence of the misfit function toward local minima because of the limited accuracy of the starting model, the lack of low frequencies, the presence of noise, and the approximate modeling of the wave-physics complexity. Different hierarchical multiscale strategiesaredesignedtomitigatethenonlinearityandill-posedness of FWI by incorporating progressively shorter wavelengths in the parameter space. Synthetic and real-data case studies address reconstructing various parameters, from VP and VS velocities to density, anisotropy, and attenuation. This review attempts to illuminate the state of the art of FWI. Crucial jumps, however, remain necessary to make it as popular as migration techniques. The challenges can be categorized as 1 building accurate starting models with automatic procedures and/or recording low frequencies, 2 defining new minimization criteria to mitigate the sensitivity of FWI to amplitude errors and increasing the robustness of FWI when multiple parameter classes are estimated, and 3 improving computational efficiency by data-compression techniquestomake3DelasticFWIfeasible.
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Citations
Devito: automated fast finite difference computation
Navjot Kukreja,Mathias Louboutin,Felippe Vieira,Fabio Luporini,Michael Lange,Gerard J. Gorman +5 more
- 13 Nov 2016
TL;DR: Inspired by the complexity of real-world seismic imaging problems, Devito is introduced, a domain specific language in which high level equations are expressed using symbolic expressions from the SymPy package.
26
Seismic waveform inversion for core–mantle boundary topography
TL;DR: In this paper, a broad-band waveform inversion strategy is introduced and applied with relatively low computational cost and based on a first-order Born approximation to produce topography models with mutual agreement up to degree 2.
26
Application of 2D full-waveform tomography on land-streamer data for assessment of roadway subsidence
Khiem T. Tran,Justin Sperry +1 more
TL;DR: In this article, the authors proposed a method to assess roadway subsidence in order to improve the health and safety of the traveling public by using existing seismic radii and seismic sensors.
26
Estimation and accounting for the modeling error in probabilistic linearized amplitude variation with offset inversion
TL;DR: A linearized form of Zoeppritz equations combined with the convolution model is widely used in inversion of amplitude variation with offset (AVO) seismic data as discussed by the authors, which is shown to introduce a...
Full-waveform inversion based on Kaniadakis statistics
TL;DR: The results show that the κ-FWI outperforms the least-squares FWI, providing better parameter estimation of the subsurface, especially in situations where the seismic data are very noisy and with outliers, independently of theκ-parameter, important for the fast convergence of FWI.
26
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