To solve seismic inverse problems via the adjoint state method, we must be able to repeatedly solve both the wave equation and its adjoint efficiently. Operator upscaling applied to the wave equation imparts fine scale information to the coarse scale without requiring that we solve the full fine scale problem. We apply the algorithm to the stress-free form of the 3D elastic wave equation. This algorithm has two stages: first, we solve independent subgrid problems on the fine scale; second, we use these subgrid solutions to solve the coarse problem. Because the subgrid problems are independent, they can be solved via an embarrassingly parallel algorithm. Surprisingly, the most expensive part of the coarse grid solve is not assembling the mas...
The seismic method has many applications. It is important in the critical sector of energy. Besides ...
Like many other inverse problems, pre-stack waveform inversion algorithms need to address the issues...
Seismic inversion produces model estimates which are at most unique in an average sense. The model r...
To solve seismic inverse problems via the adjoint state method, we must be able to repeatedly solve ...
Abstract. Operator-based upscaling is a two-scale algorithm that speeds up the solution of the wave ...
Actuellement, le principal obstacle à la mise en œuvre de la FWI élastique en trois dimensions sur d...
In seismic waveform inversion, if we have no information on source signature, we need to invert seis...
International audienceWe give a nonlinear inverse method for seismic data recorded in a well from so...
International audienceFull Waveform Inversion (FWI) is becoming an efficient tool to derive high res...
Linearized inversion of surface seismic data for a model of the earths subsurface requires estimati...
Full waveform inversion (FWI) of seismic traces recorded at the free surface allows the reconstructi...
Adjoint methods are a key ingredient of gradient-based full-waveform inversion schemes. While being ...
Full Waveform Inversion (FWI) is a depth imaging technique that takes advantage of the full informat...
Pre-stack AVO inversion of seismic data is a modeling tool for estimating subsurface elastic propert...
This is the second part of a three-part tutorial series on full-waveform inversion (FWI) in which we...
The seismic method has many applications. It is important in the critical sector of energy. Besides ...
Like many other inverse problems, pre-stack waveform inversion algorithms need to address the issues...
Seismic inversion produces model estimates which are at most unique in an average sense. The model r...
To solve seismic inverse problems via the adjoint state method, we must be able to repeatedly solve ...
Abstract. Operator-based upscaling is a two-scale algorithm that speeds up the solution of the wave ...
Actuellement, le principal obstacle à la mise en œuvre de la FWI élastique en trois dimensions sur d...
In seismic waveform inversion, if we have no information on source signature, we need to invert seis...
International audienceWe give a nonlinear inverse method for seismic data recorded in a well from so...
International audienceFull Waveform Inversion (FWI) is becoming an efficient tool to derive high res...
Linearized inversion of surface seismic data for a model of the earths subsurface requires estimati...
Full waveform inversion (FWI) of seismic traces recorded at the free surface allows the reconstructi...
Adjoint methods are a key ingredient of gradient-based full-waveform inversion schemes. While being ...
Full Waveform Inversion (FWI) is a depth imaging technique that takes advantage of the full informat...
Pre-stack AVO inversion of seismic data is a modeling tool for estimating subsurface elastic propert...
This is the second part of a three-part tutorial series on full-waveform inversion (FWI) in which we...
The seismic method has many applications. It is important in the critical sector of energy. Besides ...
Like many other inverse problems, pre-stack waveform inversion algorithms need to address the issues...
Seismic inversion produces model estimates which are at most unique in an average sense. The model r...