--> Abstract: Multi-Component Full Wave Data for Reservoir Fracture Analysis, by Brian Donnelly; #90081 (2008)
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Multi-Component Full Previous HitWaveNext Hit Data for Reservoir Fracture Analysis

Brian Donnelly
ION Geophysical Corporation, London, United Kingdom

For a fractured reservoir knowledge of the dominant fracture orientation is key to understanding field development and prospectivity. We describe a method for acquiring, processing and interpreting multi-component data to give a reliable picture of fracture morphology, by using the particular properties of converted shear waves. We illustrate this using a case-history approach. The first consideration is survey design. Converted Previous HitwaveNext Hit recording and anisotropy analysis require a full azimuth distribution, which must be reflected in a survey design free of azimuthal bias. Similarly point-sensor recording removes the effects of array directionality and inter-element statics. The sensors are multi-component, recording all components of the seismic Previous HitwaveNext Hit-field, hence Full Previous HitWaveNext Hit. Converted waves propagate more slowly than p-waves so a denser receiver spacing is required. As well as p-Previous HitwaveNext Hit seismic, this technique yields converted Previous HitwaveNext Hit data from the horizontal channels. This is rotated to the correct source-receiver azimuth, then the 3 volumes - p-Previous HitwaveNext Hit and 2 c-Previous HitwaveNext Hit - are processed through PSTM. Comparison of the volumes by horizon registration gives a measure of Vp/Vs ratio, which can be a direct lithology indicator. The next stage makes use of shear-Previous HitwaveTop splitting, or birefringence, whereby shear waves are polarised in anisotropic media by the presence of fractures. Analysis of the slow and fast polarisation directions gives a direct indication of fracture orientation, as the fast direction is aligned along the dominant fracture plane. Using advanced visualisation technology data is interpreted to give a highly detailed picture of reservoir fracturing, also derived attributes such as Vp/Vs and shear impedance. Application of this method has proven to be highly successful in field development and productive well-planning.

Presentation GEO India Expo XXI, Noida, New Delhi, India 2008©AAPG Search and Discovery