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Acoustic-and elastic-waveform inversion with total generalized p-variation regularization

  • Los Alamos National Laboratory

Research output: Contribution to journalArticlepeer-review

Abstract

Geophysical models usually contain both sharp interfaces and smooth variations, and it is difficult to accurately account for both of these two types of medium parameter variations using conventional full-waveform inversion methods. We develop a novel full-waveform inversion method for acoustic and elastic waves using a total generalized p-variation regularization scheme to address these challenging problems. We decompose the full-waveform inversion into two subproblems and solve these two minimization subproblems using an alternatingdirection minimization strategy. One important advantage of the total generalized p-variation regularization scheme is that it can simultaneously reconstruct sharp interfaces and smooth background variations of geophysical parameters. Such capability can also effectively suppress the noises in source-encoded inversion and sparse-data inversion, or inversion of noisy data. We demonstrate the advantages of our full-waveform inversion method using a checkerboard model, a modified elastic SEG/EAGE overthrust model, and a land field seismic data set. Our results of synthetic and field seismic data demonstrate that our method reconstructs both smooth background variations and sharp interfaces of subsurface geophysical properties accurately, and provides a useful tool for accurate and reliable inversion of field seismic data.

Original languageEnglish
Article number203
Pages (from-to)933-957
Number of pages25
JournalGeophysical Journal International
Volume218
Issue number2
DOIs
StatePublished - 2 May 2019
Externally publishedYes

Keywords

  • Inverse theory
  • Seismic tomography
  • Wave propagation.
  • Waveform inversion

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