Improved time-lapse data repeatability with randomized sampling and distributed compressive sensing
Title | Improved time-lapse data repeatability with randomized sampling and distributed compressive sensing |
Publication Type | Conference |
Year of Publication | 2017 |
Authors | Felix Oghenekohwo, Felix J. Herrmann |
Conference Name | EAGE Annual Conference Proceedings |
Month | 06 |
Keywords | calibration, Compressive Sensing, EAGE, noise, repeatability, time lapse |
Abstract | Recently, new ideas on randomized sampling for time-lapse seismic acquisition have been proposed to address some of the challenges of replicating time-lapse surveys. These ideas, which stem from distributed compressed sensing (DCS) led to the birth of a joint recovery model (JRM) for processing time-lapse data (noise-free) acquired from non-replicated acquisition geometries. However, when the earth does not change–-i.e. no time-lapse—the recovered vintages from two non-replicated surveys should show high repeatability measured in terms of normalized RMS, which is a standard metric for quantifying time-lapse data repeatability. Under this assumption of no time-lapse change, we demonstrate improved repeatability (with JRM) of the recovered data from non-replicated random samplings, first with noisy data and secondly in situations where there are calibration errors i.e. where the acquisition parameters such as source/receiver coordinates are not precise. |
Notes | (EAGE, Paris) |
URL | https://slim.gatech.edu/Publications/Public/Conferences/EAGE/2017/oghenekohwo2017EAGEitl/oghenekohwo2017EAGEitl.html |
DOI | 10.3997/2214-4609.201701389 |
Presentation | |
Citation Key | oghenekohwo2017EAGEitl |