Haiyan Zhang and Arthur B. Weglein

Slides:



Advertisements
Similar presentations
The Asymptotic Ray Theory
Advertisements

Ray theory and scattering theory Ray concept is simple: energy travels between sources and receivers only along a “pencil-thin” path (perpendicular to.
Head Waves, Diving Waves and Interface Waves at the Seafloor Ralph Stephen, WHOI ASA Fall Meeting, Minneapolis October 19, 2005 Ralph Stephen, WHOI ASA.
METO 621 Lesson 13. Separation of the radiation field into orders of scattering If the source function is known then we may integrate the radiative transfer.
Prof. David R. Jackson Dept. of ECE Fall 2013 Notes 17 ECE 6340 Intermediate EM Waves 1.
AGENDA Tuesday, April 30, :00 PM Welcome Reception – El Fortin Lawn Wednesday May 1, 2013 – San Gabriel Room 7:00 AM Continental Breakfast - outside.
Green’s theorem requires the wavefield P and its normal derivative P n on the measurement surface as the input. In marine exploration, an over/under cable.
PROCESSING FOR SUBSALT IMAGING: A NEW AND FIRST TWO WAY MIGRATION METHOD THAT AVOIDS ALL HIGH FREQUENCY ASYMPTOTIC ASSUMPTIONS AND IS EQUALLY EFFECTIVE.
Including headwaves in imaging and internal multiple attenuation theory Bogdan G. Nita Research Assistant Professor, Dept. of Physics University of Houston.
Annual Meeting and Technical Review
Transfer Functions Convenient representation of a linear, dynamic model. A transfer function (TF) relates one input and one output: The following terminology.
Fang Liu and Arthur Weglein Houston, Texas May 12th, 2006
AGENDA Wednesday, May 28, :30 AM Welcome, program goals, objectives and overall strategy: Tutorial on the inverse scattering series and Green’s theorem.
examining the problem and its resolution
WAVEFIELD PREDICTION OF WATER-LAYER-MULTIPLES
Inverse scattering terms for laterally-varying media
ELEC 401 MICROWAVE ELECTRONICS Lecture 3
Imaging conditions in depth migration algorithms
Discrimination between pressure and fluid saturation using direct non-linear inversion method: an application to time-lapse seismic data Haiyan Zhang,
Notes 17 ECE 6340 Intermediate EM Waves Fall 2016
Arthur B. Weglein M-OSRP, University of Houston Oct 22nd, 2015
Yanglei Zou* and Arthur B. Weglein
Xinglu Lin* and Arthur B. Weglein
A note: data requirements for inverse theory
Multi-dimensional depth imaging without an adequate velocity model
I. Tutorial: ISS imaging
ELEC 401 MICROWAVE ELECTRONICS Lecture 3
Kristopher Innanen†, †† and Arthur Weglein†† ††University of Houston,
Fang Liu, Arthur B. Weglein, Kristopher A. Innanen, Bogdan G. Nita
Deghosting of towed streamer and OBC data
M-OSRP 2006 Annual Meeting, June 6, 2007
Accommodating the source (and receiver) array in the ISS free-surface multiple elimination algorithm: impact on interfering or proximal primaries and multiples.
Issues in inverse scattering series primary processing: coupled tasks, lateral shifts, order, and band-limitation reconsidered Kristopher A. Innanen University.
Jingfeng Zhang, Fang Liu, Kris Innanen and Arthur B. Weglein
Paul Sava: WE seismic imaging
Lasse Amundsen, Arne Reitan, and Børge Arntsen
Accuracy of the internal multiple prediction when the angle constraints method is applied to the ISS internal multiple attenuation algorithm. Hichem Ayadi.
Good afternoon everyone. My name is Jinlong Yang
Review of the Green’s Theorem deghosting method
Kristopher Innanen** and Arthur Weglein* *University of Houston
M-OSRP Objectives To address and solve prioritized seismic E&P challenges (isolated task sub-series, intrinsic and circumstantial nonlinearity, and purposeful.
Kristopher Innanen and Arthur Weglein University of Houston
Source wavelet effects on the ISS internal multiple leading-order attenuation algorithm and its higher-order modification that accommodate issues that.
The FOCI method versus other wavefield extrapolation methods
Wavelet estimation from towed-streamer pressure measurement and its application to free surface multiple attenuation Zhiqiang Guo (UH, PGS) Arthur Weglein.
Green’s theorem preprocessing and multiple attenuation;
Initial analysis and comparison of the wave equation and asymptotic prediction of a receiver experiment at depth for one-way propagating waves Chao Ma*,
Inverse scattering internal multiple elimination
Does AVO Inversion Really Reveal Rock Properties?
M-OSRP 2006 Annual Meeting, June 5 ~ June 7, 2007
A first step towards the P wave only modeling plan
Haiyan Zhang and Arthur B. Weglein
Jing Wu* and Arthur B. Weglein
Direct horizontal image gathers without velocity or “ironing”
Some remarks on the leading order imaging series
Tutorial: ISS and ISS multiple removal
Adriana C. Ramírez and Arthur B. Weglein
Haiyan and Jingfeng Zhang proudly announce the birth of
Jingfeng Zhang and Arthur B. Weglein
Two comments about imaging closed forms
Adriana Citlali Ramírez
Data modeling using Cagniard-de Hoop method
Remarks on Green’s Theorem for seismic interferometry
“Exploring” spherical-wave reflection coefficients
Elastic Green's theorem preprocessing
Haiyan Zhang and Arthur B. Weglein
The general output of the leading-order attenuator
Bogdan G. Nita *University of Houston M-OSRP Annual Meeting
Presentation transcript:

Haiyan Zhang and Arthur B. Weglein Target identification using the inverse scattering series: data requirements for the direct inversion of large-contrast, inhomogeneous elastic media Haiyan Zhang and Arthur B. Weglein M-OSRP Annual Meeting, University of Houston March 31 – April 1, 2004

Outline Motivation and objectives Strategy Assumptions Briefly review of previous year’s highlight Initial results about three parameter 2D elastic inversion Data requirements Computation and interpretation issues Conclusions Plan and acknowledgments

Motivation and objectives Inversion for earth properties plays an important role in seismic exploration. Conventional inversion typically uses linear inversion of data, D. Objective: to provide a direct method for accurate and reliable target identification especially with large contrast, large angle target geometry.

Strategy Inversion of seismic data can be viewed as a series of tasks: We isolate the inverse subseries responsible for non-linear amplitude inversion of data. Inversion of seismic data can be viewed as a series of tasks: Removal of free-surface multiples; Removal of internal multiples; Location of reflectors in space; Target identification (parameter estimation).

Assumptions All multiples have been removed from the input data (only primary reflections). The targets have already been located in correct position. The information of the reference medium is given.

Previous year’s highlight Last year, we started with 1D acoustic multiparameter earth model (e.g. bulk modulus and density or velocity and density). Begin with the 3D differential equations: (1) (2)

Previous year’s highlight Then (3) Where

Previous year’s highlight (4) We define the data D as the measured values of the scattered wave field. Then, on the measurement surface, we have (5) Expand V as a series in orders of D (6)

Previous year’s highlight Substituting Eq. (6) into Eq. (5), and setting terms of equal order in the data equal, we get the equations that determine V1 ,V2 … from D and G0.

Previous year’s highlight For 1D acoustic earth model (7) (8) Solution for first order (linear) (9)

Previous year’s highlight For one interface, 1D acoustic earth model (10) (11) “Linear migration-inversion” (12) (13)

(14) (15) Solution for second order (first term beyond linear) (16)

Previous year’s highlight 1. The first 2 parameter direct non-linear inversion of 1D acoustic medium for a 2D experiment is obtained.

Previous year’s highlight 2. Tasks for the imaging-only and inversion-only within the series are isolated.

Previous year’s highlight 3. Purposeful perturbation. When c0=c1

Previous year’s highlight 3. Purposeful perturbation.

2D elastic inversion This year’s objective: References: Direct non-linear inversion of 1D isotropic and inhomogeneous three parameter elastic medium for a 2D experiment is pursued. References: Weglein and Stolt (1992) : introduced an elastic L-S equation and provided a specific linear inverse formalism for parameter estimation. Matson (1997): pioneered the development and application of methods for attenuating ocean bottom and on-shore multi component data.

2D elastic inversion In displacement space In PS space Elastic wave equation; perturbation; L-S equation In PS space Inversion in PS space

2D elastic inversion In displacement space In actual medium: In reference medium: Perturbation: L-S equation: Linear inversion: First term beyond linear: . Notes: Operators without hats in the following talk are in the displacement space, those with hats are in PS space.

2D elastic inversion In displacement space (A.B. Weglein and R.H. Stolt, 1992.) (17) (18)

2D elastic inversion In displacement space (19) Then, for 1D earth, we have, (20)

2D elastic inversion In PS space For convenience, we change the basis from to to allow to be diagonal, Also Where

2D elastic inversion In PS space The operator will transform in the new basis via a transformation Where And

2D elastic inversion In PS space In the reference medium, both and are diagonal.

2D elastic inversion In PS space In actual medium: In reference medium: Perturbation: L-S equation: Linear inversion: First term beyond linear: .

On the measurement surface, we have 2D elastic inversion In PS space On the measurement surface, we have Then,

2D elastic inversion In PS space For homogeneous media, no perturbation, then, there are only direct P and S waves. And they are separated. For inhomogeneous media, P and S waves will be coupled together.

If only P wave is incident, If only S wave is incident, 2D elastic inversion In PS space If only P wave is incident, If only S wave is incident,

2D elastic inversion: linear In PS space (21) (22) (23) (24)

2D elastic inversion: linear In PS space Where (25)

2D elastic inversion: linear In PS space Then, in domain, we get Where

2D elastic inversion: non-linear In PS space (26)

2D elastic inversion: non-linear In PS space Since, e.g., is closely related to , direct non-linear inversion requires all components of Data. Details of this calculation indicate that while computable this parameter choice is not favorable for interpretation and subsequent task separation.

2D elastic inversion: non-linear In PS space The issue of how inverse series can be interpreted in terms of tasks is not new, not confined to tasks associated with primaries, and not an issue that begins with the elastic equation. We illustrate this by taking another look at the acoustic problem.

Interpretation in inversion What parameters to use? Material parameters Free parameters

Interpretation in inversion If a and b are chosen as the two material parameters, (27)

Interpretation in inversion If and are chosen as the two material parameters, (28)

Interpretation in inversion Where in domain, i.e., before the Fourier transform over , is

Interpretation in inversion The parameters that we have chosen for the elastic non-linear inversion are the generalizations of the for the acoustic case, computable but not amenable to easy interpretation and subsequent task separation. We are examining the framework to allow an interpretable elastic generalization.

Interpretation in inversion Whatever the choice and convenience of parameters and free variable the requirement for to perform direct non-linear inversion for the simplest 1D elastic interface is inescapable.

Interpretation in inversion Provides a framework for that level of ambition and allows time to strategize to allow the inverse series to provide the R’s free of T’s required for this non-linear direct inversion at depth.

Conclusion This talk provides a conceptual platform and analysis of issues involved in data requirements, computation and interpretation of the non-linear direct elastic inverse problem. A detailed examination of how different choices of acoustic parameters and free parameters have a marked difference on the ability of task separated interpretation. This analysis provides a guide and lesson for ongoing efforts at parameter inversion and structural location specific sub series for the elastic world.

Plan To choose parameters for the elastic non-linear inversion problem, that are most agreeable to physical interpretation in terms of imaging and inversion tasks.

Acknowledgments The M-OSRP sponsors are thanked for supporting this research. We are grateful to Robert Keys and Douglas Foster for useful comments and suggestions.