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Consistency of the Data and the Crosstalk Problem

Figure [*] shows the result of applying the adjoint of equation ([*]) to a synthetic CMP gather which was constructed by an elastic modeling scheme. Imagine for a moment that the CMP gather consists only of primaries and first- and second-order water-bottom multiples. The ``NMO for Primaries'' panel would contain flattened primaries (signal) and downward-curving first- and second-order multiples (noise). Likewise, the ``NMO for multiple 1'' and ``NMO for multiple 2'' panels contain flattened signal and curving noise. Why do I call these components ``signal'' and ``noise''? If each of the three panels contained all signal and no noise, then we could 1) perfectly reconstruct the data from the model by applying equation ([*]), and 2) be in the enviable position of having a perfect estimate of the primaries.

 
schem.hask
schem.hask
Figure 3
From left to right: Raw synthetic CMP gather; Conventional NMO applied to data; NMO for first-order water-bottom multiple; NMO for second-order water-bottom multiples.


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Unfortunately, the curved events - so-called ``crosstalk'' - in all three model panels spoil this idealized situation (). Because the crosstalk events map back to actual events in the data, they are difficult to suppress in a least-squares minimization of the data residual [equation ([*])]. () shows that crosstalk relates directly to non-invertibility of the Hessian (33#33), and that data-space or model-space regularization may partially overcome the difficulty. In the following section, I introduce a novel form of model-space regularization which promotes discrimination of signal from crosstalk.


next up previous print clean
Next: Regularization of the Least-Squares Up: methodology Previous: Least-squares imaging of multiples
Stanford Exploration Project
6/7/2002