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Understanding the Seismic Wavelet*
By
Steven G. Henry1
Search and Discovery Article #40028 (2001)
1Geolearn, Houston, TX ([email protected])
*Adapted for online presentation from two articles by same author,
entitled “Catch the (Seismic) Wavelet” in Geophysical Corner, AAPG
Explorer, March, 1997, and “
Zero
Phase
Can Aid Interpretation” in
Geophysical Corner, AAPG Explorer, April, 1997. Appreciation is expressed to the author
and to M. Ray Thomasson, former Chairman of the AAPG Geophysical Integration
Committee, and Larry Nation, AAPG Communications Director, for their support of
this online version.
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uComparison of different methods of deconvolution
uComparison of different methods of deconvolution
uComparison of different methods of deconvolution
uComparison of different methods of deconvolution
uComparison of different methods of deconvolution
uComparison of different methods of deconvolution
uComparison of different methods of deconvolution
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The
seismic wavelet is the link between seismic data (traces) on which
interpretations are based and the geology (reflection coefficients) that
is being interpreted, and it must be known to interpret the geology
correctly. However, it is typically unknown, and assumed to be both broad
band and The
purpose of this article is to show interpreters that significant
improvements in seismic data quality and, correspondingly, their
interpretations of those data are easily obtainable by converting from
mixed-
Click here for sequence of Figures 7 and 8.
Click here for sequence of Figures 7 and 8.
Seismic data can provide a remarkably good image of the subsurface. However, without knowing the seismic wavelet, there are many equally valid surface geologic interpretations of the actual subsurface geology. The seismic wavelet is the filter through which geology is viewed when interpreting the image provided by seismic data. The
common assumption that seismic data contain a broad band - The convolutional model is useful for understanding how changes in rock properties (velocity and density) result in the waveform changes observed in seismic data. At lithologic boundaries the magnitude of change (reflection coefficient) in these rock properties determines how much of the wavelet’s energy is reflected to the surface. In acquiring seismic data (Figure 1), the subsurface is illuminated with sonic energy (field wavelet), which is reflected from these acoustic boundaries and recorded at the surface as a raw field trace. Where lithologic boundaries are widely separated, the field wavelet can be seen “hanging” below the reflector at 2.2 seconds (Figure 1). When boundaries are more closely spaced (2.3-2.5 seconds), the wavelet is not as easily seen due to the wavelets being summed together. This summing is also known as convolution. The convolutional model states that all seismic traces are the result of convolving (summing) the wavelet with the reflection coefficient series. In Figure 1, the raw field trace images the desired geology (lithologic boundaries = reflection coefficients), but it is through the complex filter (convolution) of the field wavelet. Exploring
for the sand in Figure 1 and assuming the wavelet is broad band - The
seismic processing procedure designed to convert the field wavelet to the
desired broad band - Deterministic
deconvolution can be applied when the field wavelet is known (measured
and/or modeled). As shown in Figure 2, when the wavelet is known, an
inverse can be determined and the field trace deconvolved to contain the
desired More typically, the field wavelet is unknown and statistical deconvolutions must be used. Statistical deconvolutions must make assumptions about both the wavelet and the reflection coefficient series. The most common assumption is that the wavelet is minimum phase and that the reflection coefficient series is random. Over
90 percent of all seismic data are processed assuming minimum phase.
Examples of a few of the more popular minimum phase deconvolutions include
Spiking, Gapped, Predictive, and Adaptive. Unfortunately, most field
wavelets are not minimum phase, and that basic assumption is not met.
Using minimum phase deconvolutions typically results in processed traces
that contain mixed-phase rather than the desired A
wavelet extracted deterministically from seismic data (using the known
reflection coefficient series from the well) that had been deconvolved
assuming minimum phase is shown in Figure 3. Note that this wavelet is not
In describing mixed-phase wavelets, it is useful to group frequency into bands in which a linear fit can be extrapolated to the phase axis (phase spectrum). For the wavelet in Figure 3, the higher frequencies (20-65 Hertz) have a phase of -90 degrees, while the lower frequencies (5-20 Hertz) have a phase of +60 degrees. The description of this mixed-phase wavelet is interpretive, and could be described differently by using other frequency bands. Using the bands shown in Figure 3, with most of the power (amplitude spectrum squared) in the 20-65 Hertz band, this wavelet has the phase characteristic of -90 degrees (trough-peak). An important ramification of mixed-phase wavelets is that their peak-trough relationships will change with depth due to the effects of earth filtering. In the case of the wavelet shown in Figure 3, shallow in the section where the earth has not filtered the higher frequences (maximum power 20-60 Hertz), positive reflectors (low to high velocity) will display -90 degrees (trough-peak). Deep in the section where the high frequencies have been attenuated (dashed line in the amplitude spectra, Figure 3), the wavelet will appear with the phase characteristics of the lower frequencies and will have a phase of +60 degrees (peak-trough). Mixed-phase wavelets are the most common wavelets found in seismic data and can have a strong affect on interpretations. This is shown in Figure 4 by filtering back (5-20 Hertz) the processed wavelet to illustrate strong earth filtering. The identical reservoir sandstone would appear as a trough-peak (-90 degrees) shallow (1.0 seconds) in the section and as a peak-trough (+60 degrees) deeper (3.0 seconds) in the section. This change in the peak-trough relationship due to earth filtering is commonly observed when comparing constant phase synthetics (from well logs) to seismic data. Typically this problem is compensated by applying a bulk time shift (linear phase shift) and changing the constant phase wavelet used in making the synthetic. Combining these corrections will approximate the curved shape of the mixed-phase (Figure 3) with a single sloping line (time shift) that intersects the phase axis at the desired constant phase. A different time shift and constant phase is required to match the curve deeper in the section due to the earth’s absorption of higher frequencies. Due
to the mixed-phase wavelet, peak-trough relationship change as a function
of earth absorption (Figure 4), and interpretations based on amplitudes,
AVO, attributes, etc., are likely to be incorrect. The solutions to these
problems are to convert the mixed-phase wavelet to When
interpreting seismic data, it is important to realize that the actual
subsurface geology is always being viewed through the filter of the
seismic wavelet. Although deconvolution is designed to provide a broad
band - Comparison of Seismic Data After Different Methods of Deconvolution The
wavelets shown in Figure 5 were extracted from the seismic data in
Figures
7 and 8. Both sets of seismic data were processed identically, other than
the method of deconvolution (statistical-minimum phase vs. deterministic).
The wavelets were extracted deterministically, by cross-correlating
(Wiener-Levinson filter) seismic traces with the known geology derived
from the subsurface well reflection coefficient series. At first glance,
most interpreters would be content having either of these “spike-like”
wavelets convolved on the subsurface reflectors. The primary difference
between these wavelets is that statistical deconvolution has resulted in a
mixed-phase wavelet (Figure 5 – phase spectrum), whereas the
deterministic deconvolution provided the desired broad band, The reason for the improved accuracy is illustrated in Figure 6. The extracted wavelets (Figure 5) have been convolved on a single reflector (Top Sand). Note that the mixed-phase wavelet has sharp “Pinocchio-like” nose at the top of the sand, but is followed by a low-frequency “beer-gut.” When seismic data contains a mixed-phase wavelet, each reflector has this “Pinocchio with a beer-gut” character. Neighboring reflectors deeper in the section (base sand) are phase rotated and lose amplitude as their “noses” are summed with the “beer-guts” from above. The
The seismic data comparison for the shallower section is shown in Figure 9. Due
to minor earth absorption, the majority of the wavelet’s phase
characteristics, as noted above, are derived from the higher frequencies
(20-65 Hertz). The lower frequencies, although contributing less, still
influence the character of the reflectors. The non- These
two images (Figure 9a and b) of the same geology would likely result in
different interpretations. For example, laterally discontinuous reflectors
within the high amplitude package (2.2-2.3 seconds) appear with different
seismic character and even in different locations. Interpretation of them
(channel sands? carbonate mounds?) and their position relative to the
deeper high amplitude reflector (within/below--Figure
9a, or above--Figure 9b) are in question. Knowing that mixed-phase wavelets distort the
seismic image, the interpretation should be made from the In
general, the Absorption
also affects the The
most striking improvement seen in the Significant
improvements in the quality of seismic data are shown here to be easily
obtainable when wavelets are converted from mixed- |
