ACOUSTIC IMPEDANCE INVERSION RECOVERY STRATEGY IN DEPTH DOMAIN SEISMIC DATA USING INTEGRATION OF LOG CALIBRATION TECHNIQUE AND MULTICHANNEL INVERSION WITH ANISOTROPIC TOTAL VARIATION REGULARIZATION
With the development of subsurface imaging techniques through depth migration, the acoustic impedance inversion process in depth domain seismic data began to be developed and still a challenging idea to be researched. The challenge that must be faced when conducting acoustic impedance inversion i...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/51523 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | With the development of subsurface imaging techniques through depth migration,
the acoustic impedance inversion process in depth domain seismic data began to
be developed and still a challenging idea to be researched. The challenge that must
be faced when conducting acoustic impedance inversion in the depth domain is the
wavelet condition that varies with depth according to the variation of the medium
velocity so that convolution cannot be directly carried out to produce synthetic
seismic and nonlinear relationships between the reflection coefficient series and
the acoustic impedance. This study seeks to overcome these two challenges by
performing log calibration by changing the data domain to the stationary domain
through pseudodepth transformation so that convolution can be operated which
then is carried out well-seismic correlation in the depth domain after reverse
transformation and inversion with anisotropic total variation regularization which
is operated to group of seismic traces (multichannel) at once. Experiments on
synthetic data are performed first to see the effect of input parameter variations on
the log calibration and inversion processes before implemented on real data.
Pseudodepth transformation plays a role in the domain conversion and wavelet
decomposition where the process is influenced by pseudovelocity, interval velocity
model, and estimated wavelet results in which there is a relation of multiplication
pseudovelocity with the dominant wavenumber of a wavelet is constant in the
interval velocity model used. Comparatively, the results of the inversion of synthetic
and real data using the proposed method in this study are able to provide contrast
and spatial coherence better than the standard inversion process without
regularization. |
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