2019
DOI: 10.17014/ijog.6.3.223-233
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Multi-Ricker Spectral Modeling in the S-transform Domain for Enhancing Vertical Resolution of Seismic Reflection Data

Abstract: A relatively straightforward methodology is presented for extending seismic bandwidth, and hence enhancing the seismic resolution by performing time-variant deconvolution. The generalized S-transform (GST) approach is used in order to properly compute the time-frequency components of the seismic reflection trace. In estimating the time-variant wavelet, a spectral modeling method is proposed, named multi-Ricker spectral approximation (MRA). After obtaining the estimated wavelet spectrum at each time sample, a d… Show more

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“…Second, Gabor deconvolution combines the essential ideas of stationary deconvolution and inverse Q filtering (Margrave et al, 2011), or assuming seismic traces are split into segments which are called the molecular-Gabor transform (Wang et al, 2013). Finally, in recent developments, time-varying deconvolution uses the lessassumption technique in its processes, such as using S-transform (Jia et al, 2017;Winardhi & Pranowo, 2019) or other mathematical approaches (Pranowo, 2019;van der Baan, 2008).…”
Section: Introductionmentioning
confidence: 99%
“…Second, Gabor deconvolution combines the essential ideas of stationary deconvolution and inverse Q filtering (Margrave et al, 2011), or assuming seismic traces are split into segments which are called the molecular-Gabor transform (Wang et al, 2013). Finally, in recent developments, time-varying deconvolution uses the lessassumption technique in its processes, such as using S-transform (Jia et al, 2017;Winardhi & Pranowo, 2019) or other mathematical approaches (Pranowo, 2019;van der Baan, 2008).…”
Section: Introductionmentioning
confidence: 99%