Wavelet transform with generalized beta wavelets for seismic time-frequency analysis

  • Zhiguo Wang
  • , Bing Zhang
  • , Jinghuai Gao
  • , Qingzhen Wang
  • , Qing Huo Liu

Research output: Contribution to journalArticlepeer-review

36 Scopus citations

Abstract

Using the continuous wavelet transform (CWT), the timefrequency analysis of reflection seismic data can provide significant information to delineate subsurface reservoirs. However, CWT is limited by the Heisenberg uncertainty principle, with a trade-off between time and frequency localizations. Meanwhile, the mother wavelet should be adapted to the real seismic waveform. Therefore, for a reflection seismic signal, we have developed a progressive wavelet family that is referred to as generalized beta wavelets (GBWs). By varying two parameters controlling the wavelet shapes, the time-frequency representation of GBWs can be given sufficient flexibility while remaining exactly analytic. To achieve an adaptive trade-off between time-frequency localizations, an optimization workflow is designed to estimate suitable parameters of GBWs in the timefrequency analysis of seismic data. For noise-free and noisy synthetic signals from a depositional cycle model, the results of spectral component using CWT with GBWs display its flexibility and robustness in the adaptive time-frequency representation. Finally, we have applied CWT with GBWs on 3D seismic data to show its potential to discriminate stacked fluvial channels in the vertical sections and to delineate more distinct fluvial channels in the horizontal slices. CWTwith GBWs provides a potential technique to improve the resolution of exploration seismic interpretation.

Original languageEnglish
Pages (from-to)O47-O56
JournalGeophysics
Volume82
Issue number4
DOIs
StatePublished - 1 Jul 2017

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