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Published as Journal of Geophysics and Engineering, 18, 825-833, (2021)
Multichannel adaptive deconvolution based on streaming
prediction-error filter
Qinghan Wang, Yang Liu, Cai Liu, and Zhisheng Zheng
College of Geo-exploration Science and Technology,
Jilin University
No.938 Xi minzhu street
Changchun, China, 130026
Abstract:
Deconvolution mainly improves the resolution of seismic data by
compressing seismic wavelets, which is of great significance in
high-resolution processing of seismic data. Prediction-error
filtering/least-square inverse filtering is widely used in seismic
deconvolution and usually assumes that seismic data is
stationary. Affected by factors such as earth filtering, actual
seismic wavelets are time- and space-varying. Adaptive
prediction-error filters are designed to effectively characterize
the nonstationarity of seismic data by using iterative methods,
however, it leads to problems such as slow calculation speed and
high memory cost when dealing with large-scale data. We have
proposed an adaptive deconvolution method based on a streaming
prediction-error filter. Instead of using slow iterations,
mathematical underdetermined problems with the new local smoothness
constraints are analytically solved to predict time-varying seismic
wavelets. To avoid the discontinuity of deconvolution results along
the space axis, both time and space constraints are used to
implement multichannel adaptive deconvolution. Meanwhile, we define
the parameter of the time-varying prediction step that keeps the
relative amplitude relationship among different reflections. The new
deconvolution improves the resolution along the time direction while
reducing the computational costs by a streaming computation, which
is suitable for handling nonstationary large-scale data. Synthetic
model and filed data tests show that the proposed method can
effectively improve the resolution of nonstationary seismic data,
while maintaining the lateral continuity of seismic
events. Furthermore, the relative amplitude relationship of
different reflections is reasonably preserved.
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2022-10-28