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Depth imaging using slowness-averaged Kirchoff extrapolators
Slowness-averaged Kirchhoff extrapolators Depth imaging using slowness-averaged Kirchoff extrapolators Hugh Geiger, Gary Margrave, Kun Liu and Pat Daley CREWES Nov Hugh Geiger
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POTSI* Sponsors: C&C Systems
*Pseudo-differential Operator Theory in Seismic Imaging
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Overview motivation wave equation depth migration simplified
our approach recursive Kirchhoff extrapolators conceptual theory PSPI, NSPS, SNPS, and Weyl-type extrapolators PAVG or slowness-averaged extrapolator 2D tests towards “true-amplitude” depth migration accurate source modeling extrapolator aperture size and taper width modified deconvolution imaging condition depth imaging of Marmousi dataset conclusions
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Sigsbee image - “Kirchhoff” diffraction stack
J. Paffenholz - SEG 2001
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Sigsbee image - recursive “wave-equation”
J. Paffenholz - SEG 2001
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The standard terminology
“Kirchhoff” migration - synonym: weighted diffraction stack - typically nonrecursive (Bevc semi-recursive) - diffraction surface defined by ray-tracing or eikonal solvers - first arrival, maximum energy, multi-arrivals - more efficient/flexible, common-offset possible “wave equation” migration – synonyms: up/downward continuation and forward/inverse wavefield extrapolation with an imaging condition - typically recursive - typically Fourier or finite difference or combo - less efficient/flexible, common-offset difficult but all extrapolators are based on the wave equation!
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Wave equation depth migration = wavefield extrapolation + imaging condition
a) forward extrapolate b) backward extrapolate source wavefield (modeling) receiver wavefield t t x x z z horizontal reflector (blue) (figures a and b courtesy J. Bancroft) c) deconvolution of receiver wavefield by source wavefield each extrapolated (x,t) depth plane yields depth image x z image of horizontal reflector
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z=0 z=2 z=3 z=4 z=1 x t reflector In constant velocity, 2D forward (green) and backward (red) extrapolators sum over a hyperbola and output to a point
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recursive Kirchhoff vs. non-recursive Kirchhoff
- operator varies laterally v(x,z) does not vary with time output to next depth plane - operator varies laterally also varies with time output to depth image x x t t Recursive extrapolation can be implemented in space-frequency domain
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Our approach shot-record “wave-equation” migration
recursive downward extrapolation (forward modeling) of the source wavefield using one-way recursive Kirchhoff extrapolators recursive downward extrapolation (backpropagation) of the receiver wavefield using one-way recursive Kirchhoff extrapolators modified stabilized deconvolution imaging condition at optimal image resolution (Zhang et al, 2003) why Kirchhoff extrapolators? Applications: resampling the wavefield, rough topography, and complex near surface velocities POTSI goal: excellent imaging of 2D and 3D land data
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Extrapolator tests For the 2D forward extrapolator tests that follow, there are two impulses at x=1728m and x=2880m, t=1.024s, and z=0m. Output (e.g. green curve above – a hyperbola in constant velocity) lies on the x-t plane at z=-200m.
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V=3000m/s V=2000m/s
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V=( i)*2000m/s V=( i)*3000m/s
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Kirchhoff/k-f PSPI extrapolator
velocity defined at output point wavenumber-frequency domain PSPI has wrap-around that can also be reduced using a complex velocity velocity Input pts Output pts vi(x) vo(x) x2 x3 x1 x4 x5 vo(x3)
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V=3000m/s V=2000m/s cos taper 70°-87.5°
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V=( i)*2000m/s V=( i)*3000m/s
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Kirchhoff/k-f NSPS extrapolator
velocity defined at input points wavenumber-frequency domain NSPS has wrap-around that can also be reduced using a complex velocity velocity Input pts Output pts vi(x) vo(x) x2 x3 x1 x4 x5 vi(x1) vi(x2) vi(x3) vi(x4) vi(x5)
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V=2000m/s V=3000m/s cos taper 70°-87.5°
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V=( i)*2000m/s V=( i)*3000m/s
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SNPS as cascaded k-f PSPI/NSPS
velocity defined using input points but output point formulation possible wavenumber-frequency domain SNPS has wraparound that can reduced using complex velocities velocity Input pts Output pts vi(x) vo(x) x2 x3 x1 x4 x5 vi(x1) vi(x2) vi(x3) vi(x4) vi(x5)
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V=( i)*2000m/s V=( i)*3000m/s
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Kirchhoff WEYL extrapolator
velocity defined as average of velocities at input and output points no wavenumber-frequency domain equivalent for Weyl extrapolator velocity Input pts Output pts vi(x) vo(x) x2 x3 x1 x4 x5 0.5*[vi(x1)+vo(x3)] 0.5*[vi(x2)+vo(x3)] 0.5*[vi(x3)+vo(x3)] 0.5*[vi(x5)+vo(x3)] 0.5*[vi(x4)+vo(x3)]
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V=2000m/s V=3000m/s cos taper 70°-87.5°
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Kirchhoff averaged slowness
velocity defined using average of slownesses along straight ray path best performance of all extrapolators based on kinematics and amplitudes velocity Input pts Output pts vi(x)=1/pi(x) x2 x3 x1 x4 x5 4/[pi(x1)+pi(x2)+po(x2)+po(x3)] 2/[pi(x2)+po(x3)] 2/[pi(x3)+po(x3)] 2/[pi(x4)+po(x3)] vo(x)=1/po(x) 4/[pi(x5)+pi(x4)+po(x4)+po(x3)]
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V=2000m/s V=3000m/s cos taper 70°-87.5°
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V=( i)*2000m/s V=( i)*3000m/s
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Comments on extrapolator tests
The recursive Kirchhoff “averaged slowness” method should compare well against other wide-angle methods, such as Fourier finite-difference. We plan to compare performance and accuracy between our new method and other methods Note that the recursive Kirchhoff method has advantages over methods requiring a regularized grid, for example when dealing with resampling and rough topography.
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Towards “true-amplitude” depth migration
“True-amplitude” depth migration depends on preprocessing, velocity model, extrapolators, source modeling, and imaging condition a more correct term is “relative amplitude preserving” depth migration, because a number of effects are not typically considered, such as transmission losses (including mode conversions), attenuation, and reflector curvature our approach includes preprocessing towards a zero-phase response (possibly Gabor deconvolution to address attenuation), accurate source modeling, tapered recursive Kirchhoff extrapolators, and a modified deconvolution imaging condition
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Accurate source amplitudes
- seed a depth level with a bandlimited analytic Green’s function then forward extrapolate source wavefield using one-way operator ideal for marine air-gun source (constant velocity Green’s function) simple to model source arrays and surface ghosting (e.g. Marmousi) might be useful for land seismic (the Green’s function is complicated) z = 0 z = 2dz dx z = dz z = 0 z = 2dz dx z = dz
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free surface source array rec array hard water bottom Complications for Marmousi imaging: free-surface and water bottom ghosting and multiples modify wavelet source and receiver array directivity two-way wavefield, one-way extrapolators heterogeneous velocity
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x=0m x=400m 0m v=1500m/s ρ=1000kg/m3 28m v=1549m/s ρ=1478kg/m3 32m v=1598m/s ρ=1955kg/m3 220m v=1598m/s ρ=4000kg/m3 Marmousi source array: 6 airguns at 8m spacing, depth 8m receiver array: 5 hydrophones at 4m spacing, depth 12m
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upgoing reflected wave
Modeled with finite difference code (courtesy Peter Manning) to examine response of isolated reflector at 0º and ~45º degree incidence receiver 0º receiver 45º upgoing reflected wave reflector downgoing transmitted wave
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Marmousi airgun wavelet
desired 24 Hz zero-phase Ricker wavelet ~60ms ~60ms normal incidence reflection ~45 degree incidence reflection After free-surface ghosting and water-bottom multiples, the Marmousi airgun wavelet propagates as ~24 Hz zero-phase Ricker with 60 ms delay.
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Deconvolution The deconvolution chosen for the Marmousi data set is a simple spectral whitening followed by a gap deconvolution (40ms gap, 200ms operator) this yields a reasonable zero phase wavelet in preparation for depth imaging
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the receiver wavefield is then static shifted by -60ms to create an approximate zero phase wavelet
if the receiver wavefield is extrapolated and imaged without compensating for the 60ms delay, focusing and positioning are compromised, as illustrated using a simple synthetic for a diffractor diffractor imaging with no delay diffractor imaging with 60ms delay
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Shot modelling the shot can be seeded at depth using finite difference modeling or constant velocity Green’s functions. This accounts for source directivity and inserts the correct zero-phase wavelet Marmousi shot wavefield seeded at 24m depth with ghost amplitudes Seeded shot wavefield propagated to 400m depth – phase preserved
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Adaptive extrapolator taper
an adaptive taper minimizes artifacts from data truncation and extrapolator operator truncation
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Modified deconvolution imaging condition
The reflectivity at each depth level is determined using a modified deconvolution imaging condition expressed as a crosscorrelation over autocorrelation, which ensures that the stability factor does not contaminate the phase response. Estimate of true-amplitude reflectivity Upgoing receiver wavefield backward extrapolated to depth z Downgoing source wavefield forward extrapolated to depth z Optimal chi-squared weighting function, where is a good estimator of the signal to noise ratio at each frequency, normalized such that: ( is the source spectrum)
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Marmousi velocity model (m/s)
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Marmousi reflectivity model
calculated for vertical incidence
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Marmousi model shallow image
deconvolution imaging condition PAVG-type extrapolator: slowness-averaged velocities and a 90º aperture with no taper
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deconvolution imaging condition
PSPI-type extrapolator: smoothed velocities and a 90º aperture with no taper
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accurate prestack imaging requires good lateral and vertical propagation of source and receiver wavefields
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deconvolution imaging condition
PAVG-type extrapolator: slowness-averaged velocities and a 84.5º aperture with 1.75º taper (10dx/5dx per dz) reduced extrapolator aperture can result in inaccurate imaging of steeper dips
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Conclusions Kirchhoff extrapolators can be designed to mimic a variety of explicit extrapolators (e.g. PSPI, NSPS) Kirchhoff extrapolators can provide flexibility in cases of irregular sampling and rough topography the slowness averaged Kirchhoff extrapolator appears to have excellent wide-angle accuracy in cases of strongly varying lateral velocity when combined with a modified deconvolution imaging condition, Kirchhoff extrapolators can be used for true amplitude imaging
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