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Data modeling using Cagniard-de Hoop method

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Presentation on theme: "Data modeling using Cagniard-de Hoop method"— Presentation transcript:

1 Data modeling using Cagniard-de Hoop method
Jingfeng Zhang and Arthur B. Weglein M-OSRP annual meeting University of Houston May 10th –12th, 2006

2 Outline Background and Motivation Theory: Numerical tests Conclusions
Data generation using Cagniard-de Hoop method Numerical tests Conclusions

3 Background and Motivation
Data modeling is important for: Evaluation of new algorithms Forward model matching methods Conventional data processing techniques: Arrival time; Amplitude

4 Background and Motivation
(Recently) developed new algorithms: Deghosting ISS free surface multiple removal method ISS internal multiple attenuation and elimination Imaging without the velocity Nonlinear inversion

5 Background and Motivation
Reasons to choose Cagniard-de Hoop method for deghosting: 1.5D medium data will suffice for initial tests “Perfect” data: regular integrand on a finite integral range Quality control each processing step: deghosting performed in two steps

6 Background and Motivation
Primary and S-G Primary and S-G Receiver deghosting + Source deghosting Primary R-G and S-R-G

7 Theory The 2D acoustic constant density wave equation:
The corresponding Green’s function equation: Relationship:

8 Theory Fourier Transform over and (layered medium): where
Just need to solving 1D wave equation and matching boundaries for layered medium.

9 Theory Even for the direct wave in homogeneous medium:

10 Caniard-de Hoop Fourier Transform over and Laplace transform over :

11 Strategy: Manipulate the integral
( ) Aki & Richards (2nd Edition)

12 Theory Direct wave: Primary: Pre-critical Pos-critical

13 Theory (1) Evaluation of the integration (direct wave):

14 Theory (2) Sign of :

15 Numerical Tests

16 Numerical Tests

17 Numerical Tests Correct data

18 Incorrect data

19 Deghosting result using correct data

20 Deghosting result using incorrect data

21 Deghosting results Red Solid: Exact results; Blue Dash: Calculated results

22 FSMR results Red Solid: Before FSMR; Blue Dash: After FSMR

23 Conclusions and Acknowledgments
Very high quality of data can be generated using Cagniard-de Hoop method. It is demonstrated that using the generated data deghosting and FSMR algorithms produce very good results. We appreciate the help from Adrian de Hoop. The support of M-OSRP sponsors is much appreciated.


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