为流体模拟准备的相和储层性质空间连续性和同步地震反演

H. Debeye
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引用次数: 0

摘要

提出了一种基于贝叶斯推理方法的地质统计同步相反演方法。最近关于这个话题的辩论集中在一步法和两步法之间。在这里,我们通过研究和讨论逐迹与空间全三维反演方法来回避这个主题。通过实验比较了无侧向调节的逐迹跟踪、有侧向调节的逐迹跟踪和有侧向调节的全3D方法的几种变化。条件作用是基于指数或高斯变量。通过几个qc,从逐迹到全三维反演的结果质量得到了提高。同样,从基于指数变量的条件反射到基于高斯变量的条件反射,结果的质量也得到了改善。基于高斯变差的横向调节的全三维方法在相实现的观感和统计方面优于其他方案。
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Spatial Continuity and Simultaneous Seismic Inversion of Facies and Reservoir Properties Ready for Flow Simulation
Summary Geostatistical simultaneous facies inversion based on the Bayesian inference method is presented. Recent debate on the topic has been focused on the one-step versus the two-step approach. Here we side-step this topic by investigating and discussing the trace-by-trace versus the spatial full 3D inversion method. Experiments are done to compare several variations of trace-by-trace with no lateral conditioning, trace-by-trace with lateral conditioning and full 3D methods with lateral conditioning. Conditioning is based on either exponential or Gaussian variograms. With several QCs it is shown that quality of results improves going from trace-by-trace to full 3D inversion. Likewise quality of results improves going from conditioning based on exponential variograms to conditioning based on Gaussian variograms. The full 3D method with lateral conditioning based on Gaussian variograms beats the other schemes with respect to the look and feel and statistics of the facies realizations.
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