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Next: What do we want Up: Prucha and Biondi: STANFORD Previous: Introduction

Motivation

Most of the large structural onshore and shelf hydrocarbon plays have already been delineated, and seismic imaging efforts have begun to concentrate on subtler phenomena, such as those related to the presence of hydrocarbons in rocks. A resonant note is struck in crustal seismology by the need to delineate the extent of lithospheric melts. AVO is one of the most common methods of characterizing the fluids in rocks in either exploration () or crustal () surveys.

The FEAVO anomalies are much stronger than regular AVO effects, rendering AVO analysis impossible. Their removal will thus allow AVO analysis. A byproduct of the FEAVO removal process is a very accurate velocity model [() shows that velocity contrasts as small as 2% can generate FEAVO], and this will also highly benefit AVO analysis, which is highly sensitive to the velocity used for prestack migration [(), ()].

FEAVO removal is also desirable for reasons beyond the obvious practical ones described above: in principle, the reflectivity that seismology seeks to recover is the high spatial frequency component of the impedance field. A FEAVO-contaminated image is simply inaccurate. Imaging the correct reflectivities is in line with the modern efforts towards true-amplitude imaging [(); ()]. And the by-product - an accurate velocity model describing the low spatial frequencies of the velocity field - is every bit as important as the reflectivity image itself ().

 
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Figure 1
a: Part of a CMP gather exhibiting FEAVO anomalies. The strong event at 2.3s shows a slight departure from hyperbolic moveout, too subtle to allow successful classical traveltime tomography. b: FEAVO anomalies in the midpoint-offset space (Kjartansson ``V''s). The preprocessing consisted in: muting, spherical divergence correction, bandpass filter, interpolation of missing or noisy traces, hydrophone balancing, f-k filtering, and offset continuation to fill in the small offsets (with a forward and inverse DMO cascade using the log-stretch DMO in the Fourier domain described in () and implemented by ()). The figure has been produced exactely as in (): square and vertically stack the data between 1.5 and 3.5 seconds, then take the logarithm to increase the dynamic range. Offset continuation does not predict the FEAVO anomalies (the tips of the ``V''s are not extended into the extrapolated small offsets)
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Figure 2
The physical explanation for the expression of FEAVO anomalies in CMP gathers (Figure [*]a). If the frequency of the waves is high enough or the anomaly large enough, we will see a small triplication. Otherwise, only offset-dependant amplitude focusing (FEAVO) is visible. The traveltime delays are negligible, as the velocity anomaly changes only very little the length of the rays. Figure taken from ().
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Figure 3
The physical explanation for the expression of FEAVO anomalies in midpoint-offset space (Kjartansson ``V''s, Figure [*]b). In the upper picture, the blobs are transmission anomalies and the arrows are raypaths for the zero offset and for the maximum offset recordings. For case A (anomaly on the reflector), only a single midpoint is affected, for all offsets. Case C (anomaly at the surface), is actually a static: its ``footprint'' is a pair of streaks slanting 45o from the offset axis. Case B (in between) gives a pair of streaks with angles smaller than 45o.
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next up previous print clean
Next: What do we want Up: Prucha and Biondi: STANFORD Previous: Introduction
Stanford Exploration Project
6/7/2002