Digital Mapping at Corbula Gulch outcrop, Utah
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Transcript of Digital Mapping at Corbula Gulch outcrop, Utah
Digital Mapping at Corbula Gulch outcrop, Utah
• Locate 2D and 3D GPR surveys, coreholes, measured stratigraphic sections by RTK.
• Map the beds along the cliff faces by laser rangefinders.
• Interpolate the 3D geometry of the sedimentary bodies.
• Build the 3D geological model for visualization, analysis and interpretation.
Map of San Rafael Swell
EW
S N
Photomosaic of Cliff face
Laser Surveyed Points
2D Topographic Map
3D Perspective View of Survey data Layout
3D Perspective View of Survey data Layout
GPR Cubes and Profiles (from Corbeanu, 2000)
3D Perspective View of Survey data Layout
The high-resolution topographic model at the southeast corner of the outcrop
CD 1 Top Surface
CD 1 Bottom Surface
EW
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Photomosaic of Cliff face
Thickness Contour Map of CD 1
3D Model of Major Bounding Surfaces
3D Model of Major Bounding Surfaces
Conclusions
• Utilize GPS and laser sketching to locate the GPR survey lines, stratigraphic sections, coreholes, and sedimentary bounding surfaces.
• These digital data enable us to quantitatively analyze the key surfaces.
• A three-dimensional geological model was interpolated with these digital data and 4 coreholes.
Conclusions (continuing)
• The results of this project demonstrates the usefulness of digital surface mapping and power of integration of digital subsurface information.
• The final GPR analysis and interpretation can utilize these interpolated surface fits.
• The final three-dimensional model will incorporate all of subsurface and surface geology.
3-D GPR RESOLUTION
Seismic vertical resolution = 15 m
GPR vertical resolution = 0.5 m
FERRON SANDSTONE LOCATION
• Sequence stratigraphic framework well established
• Reservoir analog for oil fields in Gulf of Mexico and North Sea
• Good exposure of the vertical cliff faces
• Flat mesas and an arid environment are ideal for GPR surveying
Delta shoreline
CoyoteBasin
CorbulaGulch
X
Y
GPR METHOD
• High resolution electro-magnetic method• Similar to seismic methods• Characterizes a medium by its electrical permittivity, k and electrical conductivity, .• Decreasing velocity with depth
• Depth of penetration proportional to the loss tangent
tan() = /0k, where :0 = permittivity in a vacuum = angular frequency
v = c/ k, where c is the velocity of light in a vacuum
System console
Optic fiberAntennas
CORBULA GULCH BASEMAP
• reservoir simulator voxel scale: 3-D GPR cubes (51m x 28m and 31m x 27)
• reservoir grid cell scale(100mx100m)
• inter-well scale(550mx350m)
CORBULA GULCH FACIES MAP
INTEGRATING OUTCROP AND GPR DATA
• Good correlation of lithology and permeability.
• Good correlation of lithology and velocity.
• GPR reflections are produced at the surface between layers with contrast in electrical properties.
3-D GPR INTERPRETATION
3-D GPR INTERPRETATION
• High amplitude, continuous, oblique GPR reflections.
• Tuning effects at thin layers interfaces resolved with GPR attributes.
INCLINED SURFACES MAPS
CONCLUSION
• To effectively integrate geologic and GPR data, 3-D migration of the GPR data from the time domain into the depth domain is essential.
• Correlating outcrop, boreholes and GPR data allows relationships between vertical facies successions through different architectural elements and their lateral geometry to be directly interpreted in 3-D.
• The channel deposits at Coyote Basin are interpreted as scour and fill channel deposits of distributary channels on the upper delta plain.
CONCLUSION
• Reservoir heterogeneities are estimated by modeling 3-D experimental variograms of GPR amplitudes and are smaller (4-6 m) in scour and fill channel deposits and longer (10-15 m) in marine influenced point bar deposits.
• 3-D permeability and mudstone distributions can be predicted from empirical relationships between physical properties and GPR attributes.
Objectives
• 3D integration of data sets, including GPR surfaces, borehole and cliff face data.
• Building 3D model for visualization, analysis and interpretation.
Data Source
• GPR Survey
• Cliff Face Laser Mapping
• Stratigraphic Measured Sections
• Well cores
-All Integrated by GPS
EW
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Photomosaics of Cliff Faces
Laser Surveyed Points
2D Topographic Map
3D Perspective View of Survey Data Layout
CD 1 Top Surface
CD 1 Bottom Surface
Thickness Contour Map of CD 1
3D Model of Major Bounding Surfaces
3D Model of Major Bounding Surfaces
GPR Cubes and Profiles of Depth Sections
Rendering Procedures
• Curve fitting of the data
• Generating initial surfaces
• Installing constraints to honor geologic interpretations.
Initial surface
Honor geologic interpretation
Incline 0 border at Surface C
Incline 4 with laser data
Laser data
Major Bounding Surfaces-looking northeast
Z: X3
Major Bounding Surfaces-looking northwest
Z: X3
Location of the solid model
Volume of bounding surfaces
Topography
CIncl 0
Incl 1
Unit 1 Upper unit
Incl 7Incl 6 Incl 5
Incl 4
Incl 3
Incl 2
Volume of bounding surfaces
Surface C
Unit 1Upper unit
Incl 0
Incl 1
Incl 2
Incl 3Incl 4Incl 5Incl 6
Incl 7
Volume of bounding surfaces
Incl
2
Lessons Learned
• Laser Mapping provides an efficient way to map the surface geometry, but …
• Photorealistic model preferable because interpretation change and different interfaces interpreted from photos
Mismatch
Photorealistic Outcrop at Dallas Post Office
• Accuracy of a few centimeters• Photo registration about 0.7 – 2.7
pixels.• Bring outcrop back to office
photorealistically in three-dimensions• Directly taking measurement on photos
in three-dimensions• Virtual field trip