Frontiers in Earth Science (Sep 2021)

Sparse Constrained Least-Squares Reverse Time Migration Based on Kirchhoff Approximation

  • Xu Hong-Qiao,
  • Xu Hong-Qiao,
  • Xu Hong-Qiao,
  • Wang Xiao-Yi,
  • Wang Xiao-Yi,
  • Wang Xiao-Yi,
  • Wang Chen-Yuan,
  • Wang Chen-Yuan,
  • Wang Chen-Yuan,
  • Zhang Jiang-Jie,
  • Zhang Jiang-Jie

DOI
https://doi.org/10.3389/feart.2021.731697
Journal volume & issue
Vol. 9

Abstract

Read online

Least-squares reverse time migration (LSRTM) is powerful for imaging complex geological structures. Most researches are based on Born modeling operator with the assumption of small perturbation. However, studies have shown that LSRTM based on Kirchhoff approximation performs better; in particular, it generates a more explicit reflected subsurface and fits large offset data well. Moreover, minimizing the difference between predicted and observed data in a least-squares sense leads to an average solution with relatively low quality. This study applies L1-norm regularization to LSRTM (L1-LSRTM) based on Kirchhoff approximation to compensate for the shortcomings of conventional LSRTM, which obtains a better reflectivity image and gets the residual and resolution in balance. Several numerical examples demonstrate that our method can effectively mitigate the deficiencies of conventional LSRTM and provide a higher resolution image profile.

Keywords