--> Implications of Seismic Attribute Computations From Depth-Migrated Data
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Implications of Previous HitSeismicNext Hit Previous HitAttributeNext Hit Computations From Depth-Migrated Data

Abstract

Abstract

Prestack depth migration (PSDM) is a highly popular imaging process because it enhances Previous HitseismicNext Hit images of structurally complex subsurface, by handling both vertical and lateral velocity variations. Thus, in principle, Previous HitseismicNext Hit attributes extracted from depth-migrated data are more reliable than those from time-migrated data. However, there are significant conceptual differences in the way Previous HitseismicNext Hit attributes are calculated from depth-migrated data. For instance, vertical sampling is no longer in milliseconds but in meters. Previous HitAttributeNext Hit calculations are no longer in frequency (cycles/s) but in wavenumber (cycles/m). Using constant windows to compute such attributes is no longer valid due to the wavelet stretching produced by the rapid velocity changes accounted for during PSDM. A common solution to circumvent these issues is to convert depth-migrated data to time and only then compute Previous HitseismicNext Hit attributes, which is valid if Previous HitseismicNext Hit attributes are used for qualitative interpretation but not for quantitative interpretation. In this work, we discuss the computational implications of extracting Previous HitseismicNext Hit attributes from depth-migrated data and to what extent the interpreter can rely on Previous HitseismicNext Hit attributes calculated directly from PSDM data. To illustrate the implications for Previous HitattributeTop extraction we present examples of time- and depth migrated synthetic and field data. Not surprisingly, frequency-based attributes are the most affected ones and corrections for steeply dipping interfaces need to be implemented. We believe geoscientists can benefit from this discussion given the increasing availability of depth-migrated data.