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Currently, the major weakness of this approach is its sensitivity to parameter
choice. The separation fitting goals (6) apply the inverse
of a non-stationary PEF. If that PEF isn't stable, the separation of
the multiples and primaries is not possible. To get a stable filter
we can increase
in our filter estimation (9).
Unfortunately, increasing
decreases the quality of our prediction.
By changing the size of our micro-patches, we can usually get a stable
filter while obtaining a good prediction. At this
stage we haven't figured an algorithm that can automatically
change micro-patch size to obtain the desired combination, a stable
non-stationary PEF that can satisfactorily predict the data.
Next: CONCLUSIONS
Up: Clapp & Brown: Multiple
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Stanford Exploration Project
4/27/2000