4.6 Article

Thin-bed prestack spectral inversion

Journal

GEOPHYSICS
Volume 74, Issue 4, Pages R49-R57

Publisher

SOC EXPLORATION GEOPHYSICISTS
DOI: 10.1190/1.3148002

Keywords

geophysical signal processing; inverse problems; seismic waves; seismology; stratigraphy

Funding

  1. Universidad Nacional de La Plata, Argentina
  2. Agencia Nacional de Promocion Cientifica y Tecnologica [PICT 03-13376]
  3. CONICET [PIP 04-5126]

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Prestack seismic data has been used in a new method to fully determine thin-bed properties, including the estimation of its thickness, P- and S-wave velocities, and density. The approach requires neither phase information nor normal-moveout (NMO) corrections, and assumes that the prestack seismic response of the thin layer can be isolated using an offset-dependent time window. We obtained the amplitude-versus-angle (AVA) response of the thin bed considering converted P-waves, S-waves, and all the associated multiples. We carried out the estimation of the thin-bed parameters in the frequency (amplitude spectrum) domain using simulated annealing. In contrast to using zero-offset data, the use of AVA data contributes to increase the robustness of this inverse problem under noisy conditions, as well as to significantly reduce its inherent nonuniqueness. To further reduce the nonuniqueness, and as a means to incorporate a priori geologic or geophysical information (e.g., well-log data), we imposed appropriate bounding constraints to the parameters of the media lying above and below the thin bed, which need not be known accurately. We tested the method by inverting noisy synthetic gathers corresponding to simple wedge models. In addition, we stochastically estimated the uncertainty of the solutions by inverting different data sets that share the same model parameters but are contaminated with different noise realizations. The results suggest that thin beds can be characterized fully with a moderate to high degree of confidence below tuning, even when using an approximate wavelet spectrum.

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