Introduction
Outcrop analogues can give additional geometric and kinematic
constraints to help bridge the critical scale-gap needed to
integrate seismic and borehole datasets. We use a range of
digital
survey methods (Figure 1) to capture
detailed, spatially referenced outcrop data (Jones et al. 2004;
McCaffrey et al. 2005). Of the various methods, Terrestrial Laser
Scanning (also commonly called ground-based LiDAR) is usually the
most efficient way to capture large amounts of spatially precise
data from relevant areas of outcrop. With typical acquisition rates
up to 12,000 points a second, laser-scanning makes it possible to
rapidly acquire a detailed virtual copy of an outcrop, in which the
topography of the outcrop is represented by a point cloud comprising
tens or hundreds of millions of points (Figure
2b). With modern high-speed laser scanners (Figs.
1f and 2a), an experienced operator
will usually be able to survey many hundred square metres of outcrop
per day (depending on the nature of the topography and the level of
detail required). In areas of good exposure and 3D topography, laser
scanning is therefore an extremely efficient way to study large
outcrop analogues of sedimentary and structural architectures on a
scale directly comparable to seismically imaged structures, but with
100-1000 times better resolution. In this way, outcrop studies based
on laser-scanning can effectively bridge the gap between seismic and
borehole datasets.
While laser-scanning has high potential to enhance outcrop
studies, it is not a replacement for careful geological field work,
and in our experience, the most useful approach to studying outcrop
analogues is to integrate key geological observations, measurements,
and interpretations into the detailed geospatial outcrop model
derived from laser-scanning. To facilitate this integration in the
field, the precise locations of geological observations and
measurements are recorded using either differential Real-Time
Kinematic (RTK) GPS (Figure 1a, b) or
laser-ranging devices (Figure 1c), or
are tied directly to specific points in the laser-scan dataset. RTK
GPS is also ideal to enable laser-ranger and laser-scan data to be
georeferenced to a global coordinate system.
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Figure 1. Examples of digital survey
methods to capture spatially referenced outcrop data; (a)
Real-Time Kinematic (RTK) GPS, stationary base-station. In the
field, differential GPS locates the base station with a global
accuracy of ca. 0.5m; this is improved by post-processing to ca.
10mm; (b) Two RTK GPS rover-units. A positional fix relative to
the base-station can be made instantaneously, typically with a
precision of ca. 10mm; (c) MDL LaserAce 300 laser-ranging
device, with hand-held PDA data-logger. The laser-ranger is used
to record the precise position of individual observations and
structural measurements made on the outcrop, relative to the
instrument. RTK GPS is then used to measure the accurate
location of the instrument, and thus the absolute position of
all its relative measurements; (d) terrestrial laser-scanning
using MDL Quarryman The data captured includes x,y,z position
and intensity information for each point scanned, and the
resultant grey-scale laser-scan point-cloud can be imported into
most 3D visualisation tools; (e) false-colour laser-scan
point-cloud from MDL scanner, imported into GoCad; (f) Riegl
LMS-Z360i laser-scanner, with top-mounted high resolution
digital camera (to give true-colour point cloud data) and RTK
GPS unit to record precise scanner location; (g) true-colour
point cloud data from Riegl LMS-Z360i scanner. Locations: (a)
analysis of fault-related folding, Howick, NE England (Pearce et
al., 2006); (b) segmented faults, Lamberton, SE Scotland; (c)
study of onshore analogues for Devonian clastics of West Orkney
Basin, Kirtomy, N Scotland; (d-e) faulting in Carboniferous
sandstone/shale sequence, NE England; (f-g) study of fractured
carbonates, Flamborough, E England. |
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Figure 2. Terrestrial laser-scanning
study of fault relay zone architectures in normal faults from
Kilve, Somerset, SW England: (a) Riegl LMS Z420i scanner,
with tilt-mount to allow the scanner to be pointed downwards to
scan the wave-cut platform from the cliff top; (b) Oblique view
looking down on part of the laser scan point cloud. Yellow scale
bar is 200m; (C) area of detail showing anastomosing fault
strands. These can be picked directly within the scan data
(comparable to picking faults in seismic), so that fault offsets
and displacement gradients can be quantified. The view is
approximately 100m wide, and is from the area of the red box in
(b). |
Outcrop to Basin Scale Models
Additional
digital
methods are also useful to provide wider
geographical and geological context to the virtual outcrop analogue
(Figure 3). Integrating the laser-scan
data with other more regional datasets, such as aerial images draped
over a DEM, subsurface maps, ground-penetrating radar (Pringle et
al., 2003), seismic sections and satellite data, make it easier for
the geologist to visualise the spatial and scaling relationships
between structures seen in outcrop and those of reservoir and basin
scale (Jones et al., 2007, in press). Equally useful is to
isolate the virtual outcrop dataset and to incorporate it directly
into a reservoir model from a hydrocarbon field of current
interest--to allow the asset team to study the analogue in full
detail within the context of their own subsurface volume.
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Figure 3. Example of integrated
multi-scale 3D geological model from NE England, spanning seven
orders of magnitude, from Jones et al. (2007, in press):
(A) regional scale, showing the solid geology at the Earth’s
surface, above a surface showing basement topography: field of
view ca. 1.6 x 105 m. X and Y mark traces of the
90-fathom/Stublick fault system on the surface and at top
basement, respectively; (B) subsurface data at sub-regional
scale; the Maudlin coal seam (lower surface) and
Carboniferous-Permian unconformity (upper surface); width of
subsurface area covered ca. 2.5 x 104 m. These
surfaces are shown embedded within a cut-away geology map of
Tyneside-Teesside; (C) local scale with integration of
geological boundaries draped onto local topography: X is the
trace of 90-fathom fault on the foreshore. The field of view ca.
5 x 102 m, location shown in (B); (D) outcrop scale,
showing interpretation of detailed terrestrial laser-scan data
in an immersive 3D visualisation facility: field of view ca. 3 x
101 m, location given in (C); laser-scan point
spacing ca. 2 x 10-2 m. |
Quantification of Structural
Attributes
The
laser-scan data provide unprecedented detail and allow spatial
variation in various fracture attributes to be quantified, including
3D curvature (Figure 4), fracture
connectivity, branch-line geometry, relationship between
corrugations and fault splays, detailed fault throw profiles, and
the spatial correlation between fracture density and fold curvature.
Measurement of such fracture parameters, collected from a range of
outcrop analogues, provides direct quantitative input for
calibration of geomechanical models and for validation of fracture
networks derived by deterministic or stochastic methods. A case
study using regular laser-scanning of an active opencast coal mine,
provides additional constraint, with 3D fault geometries
sequentially revealed throughout the rock volume, as the working
coal face progressively migrates with time.
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Figure 4. Laser scan from spectacularly
exposed neotectonic faults at Arkitsa, Gulf of Evia, Greece
(Kokkalas et al., 2007, in press): (a) Laser scan
point cloud. Polished areas of fault surface in foreground and
background are two separate fault panels; (b) filtered and
meshed surface from the fault panel shown in the foreground of
(a), consisting of ca. 117,000 polygons, derived from 10 million
laser scan points. Fault panel is 65m high; (c) Stereonet
showing the orientation of a subset (N=5726) of the normals
(i.e., poles) to polygons from the mesh shown in (b). Colours
correspond to orientation of each normal relative to the mean
orientation. (d) colours from (c) re-projected onto the meshed
fault surface, to emphasise changes in orientation of the
surface. This makes it easier to visualise fault curvature,
corrugations, and small-scale rupturing and fracturing of the
fault surface. |
References
Jones, R.R., McCaffrey, K.J.W, Wilson, R.W., and
Holdsworth, R.E. 2004.
Digital
field data acquisition: towards
increased quantification of uncertainty during geological mapping,
in Curtis, A., Wood, R., eds., Geological Prior Information:
Geological Society Special Publication 239, p.43-56.
Jones, R.R., McCaffrey, K.J.W., Clegg, P., Wilson,
R.W., Holliman, N.S., Holdsworth, R.E., Imber, J., and Waggott, S.,
2007 (in press), Integration of regional to outcrop
digital
data: 3D visualisation of multi-scale geological models: Computers &
Geosciences, v.33.
Kokkalas, S., Jones, R.R., McCaffrey, K.J.W., Clegg,
P., 2007 (in press), Quantitative fault analysis at Arkitsa,
Central Greece, using Terrestrial Laser Scanning (“LiDAR”): Bulletin
of the Geological Society of Greece, vol. XXXVII, p.2007.
McCaffrey, K.J.W., Jones, R.R., Holdsworth, R.E.,
Wilson, R.W., Clegg, P., Imber, J., Holliman, N., and Trinks, I.
2005, Unlocking the spatial dimension:
digital
technologies and the
future of geoscience fieldwork: Journal of the Geological Society,
London, v. 162, p.927-938.
Pringle,
J.K., Clark, J.D., Westerman, A.R., and Gardiner, A.R. 2003, Using
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