Document detail
ID

oai:arXiv.org:2404.01870

Topic
Mathematics - Numerical Analysis
Author
Sushnikova, Daria Ravasi, Matteo Keyes, David
Category

Computer Science

Year

2024

listing date

4/10/2024

Keywords
mdd
Metrics

Abstract

We address the estimation of seismic wavefields by means of Multidimensional Deconvolution (MDD) for various redatuming applications.

While offering more accuracy than conventional correlation-based redatuming methods, MDD faces challenges due to the ill-posed nature of the underlying inverse problem and the requirement to handle large, dense, complex-valued matrices.

These obstacles have long limited the adoption of MDD in the geophysical community.

Recent interest in this technology has spurred the development of new strategies to enhance the robustness of the inversion process and reduce its computational overhead.

We present a novel approach that extends the concept of block low-rank approximations, usually applied to linear operators, to simultaneously compress the operator, right-hand side, and unknowns.

This technique greatly alleviates the data-heavy nature of MDD.

Moreover, since in 3d applications the matrices do not lend themselves to global low rank approximations, we introduce a novel H2-like approximation.

We aim to streamline MDD implementations, fostering efficiency and controlling accuracy in wavefield reconstruction.

This innovation holds potential for broader applications in the geophysical domain, possibly revolutionizing the analysis of multi-dimensional seismic datasets.

Sushnikova, Daria,Ravasi, Matteo,Keyes, David, 2024, Multidimensional deconvolution with shared bases

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