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Imaging conditions in depth migration algorithms

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Presentation on theme: "Imaging conditions in depth migration algorithms"— Presentation transcript:

1 Imaging conditions in depth migration algorithms
Bogdan G. Nita Assistant Professor, Dept. of Mathematical Sciences Montclair State University May 11, 2006

2 Main results presented in this talk
Summation over frequencies with the data in wavenumber-frequency domain is a imaging condition Summation over frequencies with the data in space-frequency domain is a imaging condition

3 Outline Motivation Spherical and plane waves
Depth migration algorithms and imaging conditions Analytic examples Conclusions

4 Outline Motivation Spherical and plane waves
Depth migration algorithms and imaging conditions Analytic examples Conclusions

5 Motivation Provide a better understanding of today’s most used migration algorithms Differentiate between their efficiency and capability Develop better seismic processing algorithms (for imaging, internal multiple elimination etc).

6 Motivation (cont’d) M-OSRP 2004 report Nita & Weglein discussed the inverse scattering internal multiple attenuation algorithm. They showed monotonicity in pseudo-depth is equivalent to vertical time monotonicity The algorithm attenuates multiples with headwaves subevents. Also discussed: casting the algorithm in other domains

7 Outline Spherical and plane waves Motivation
Depth migration algorithms and imaging conditions Analytic examples Conclusions

8 Spherical and plane waves
+BC FT FT +BC Point-source/point-receiver response is the sum of all planewave responses.

9 The geometry of planewaves
Equation of the wave front in the xz-plane

10 The geometry of planewaves
Vertical intercept time Def.:

11 The geometry of planewaves
Moving planewave Compare with a Fourier planewave kzz is important in phase-shift migration algorithms hints towards the type of imaging when summing over frequencies in wavenumbers domain.

12 Outline Depth migration algorithms and imaging conditions Motivation
Spherical and plane waves Depth migration algorithms and imaging conditions Analytic examples Conclusions

13 Depth migration algorithms
Wavenumber-frequency Gazdag’s phase-shift, Stolt’s f-k, etc. Space-frequency Kirchoff, etc. Criteria for this classification: the domain in which the integration over frequency (imaging) takes place.

14 Wavenumber-frequency algorithm
Apply shift term

15 Wavenumber-frequency algorithm
Source and receiver horizontal coordinates Corresponding horizontal wavenumbers Temporal frequency

16 Imaging step/condition
Each planewave event in the data is completely described by horizontal wavenumbers and depth z. Downward extrapolation results in a change of z only Depth z, vertical wavenumber kz and frequency are related to the vertical intercept time Integration over frequency amounts to a imaging condition

17 Space-frequency algorithm
Apply shift term Apply Diffraction term

18 Space-frequency algorithm
Source and receiver horizontal coordinates Corresponding horizontal wavenumbers Temporal frequency

19 Wavenumber-frequency algorithm
Source and receiver horizontal coordinates Corresponding horizontal wavenumbers Temporal frequency

20 Space-frequency algorithm
Source and receiver horizontal coordinates Corresponding horizontal wavenumbers Temporal frequency

21 Imaging step/condition
Each event in the data is described by horizontal and vertical positions which relate to the total traveltime Integration over frequency amounts to a t=0 imaging condition

22 Variables dependence for wavenumber-frequency algorithm
the set of independent variables are integration over frequency is performed while keeping the horizontal wavenumbers constant. only the time component related to vertical wavenumber is taken to zero.

23 Variables dependence for space-frequency algorithm
the extrapolation term is both a downward and a lateral extrapolation approximating the inner integrals puts ray-paths conditions and imposes relationships between wavenumbers integration over frequency is taking all time components and hence the total traveltime to zero

24 Outline Analytic examples Motivation Spherical and plane waves
Depth migration algorithms and imaging conditions Analytic examples Conclusions

25 Analytic example: Stolt migration
data includes reflection and headwave for large offsets prime indicates time derivative of the data

26 Analytic example: Stolt migration
Downward extrapolation Imaging Change of variable and integrate

27 Analytic example: Kirchhoff migration
Stationary Phase Approx. Reflection Headwave

28 Analytic example: Kirchhoff migration
Events are approximated by ray-paths diagrams

29 Analytic example: Kirchhoff migration
t=0 imaging headwave is imaged at the wrong depth

30 Outline Conclusions Motivation Spherical and plane waves
Depth migration algorithms and imaging conditions Analytic examples Conclusions

31 Conclusions Summation over frequencies with the data in wavenumber-frequency domain is a imaging condition Summation over frequencies with the data in space-frequency domain is a imaging condition The two types of algorithms lead to different results even for simple 1.5D media.

32 Acknowledgements Art Weglein for stimulating discussions
Sam Kaplan for careful reading of the paper M-OSRP sponsors for the support


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