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GCWhat Is Deconvolution?*
By
Robert E. Sheriff1
Search and Discovery Article #40132 (2004)
*Adapted from the Geophysical Corner column in AAPG Explorer, April, 2004, entitled “A Demystifying of Deconvolution” and prepared by the author. Appreciation is expressed to the author, to Alistar R. Brown, editor of Geophysical Corner, and to Larry Nation, AAPG Communications Director, for their support of this online version.
1Professor, University of Houston ([email protected])
General Statement
Deconvolution is a
process universally applied to seismic data, but is one that is mysterious to
many geoscientists. Deconvolution compresses the basic
wavelet
in the recorded
seismogram and attenuates reverberations and short-period multiples. Hence, it
increases resolution and yields a more interpretable seismic section.
Note the differences in the Figure 1. The quality of modern seismic data owes a great deal to the success of deconvolution. Seismic processing often involves several stages of deconvolution, each of a different type and with a different objective.
Deconvolution
usually involves convolution with an
inverse
filter. The idea is that this will
undo the effects of a previous filter, such as the earth or the recording
system. The difficulty in designing an
inverse
filter is that we hardly ever
know the properties of the filter whose effects we are trying to remove.
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uGeneral statementuFigure captionuTypes of deconvolution
uGeneral statementuFigure captionuTypes of deconvolution
uGeneral statementuFigure captionuTypes of deconvolution
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Different kinds of deconvolution are generally described by the different adjectives. They usually designate the type of assumptions made in the process. Deterministic deconvolution can be used to remove the effects of the recording system, if the system characteristics are known. This type also can be used to remove the ringing that results from waves undergoing multiple bounces in the water layer, if the travel time in the water layer and the reflectivity of the seafloor are known.
In the
case of the earth, the previous filtering that was applied is not known,
and thus the deconvolution takes on a statistical nature. In this
situation the needed information comes from an autocorrelation of the
seismic trace. Because the embedded
The
embedded
Autocorrelations may be calculated over several time windows in an
attempt to allow for changes in the shape of the embedded
Spiking
deconvolution
shortens the embedded Predictive deconvolution uses the later portions of the autocorrelation to remove the effects of some multiples. Predictability means that the arrival of an event can be predicted from knowledge of earlier events. Different formulations are used, including maximum and minimum entropy, a measure of disorder. Sparse-spike deconvolution attempts to minimize the number of reflections, thus emphasizing large amplitudes. |
