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Introduction

Time-lapse seismic monitoring is an important technology for enhancing hydrocarbon recovery (Lumley, 2001). At the heart of the method is comparison between repeated seismic images with an attempt to identify changes indicative of fluid movements in the reservoir.

In general, time-lapse image differences contain two distinct effects: shifts of image positions in time caused by changes in seismic velocities and amplitude differences caused by changes in seismic reflectivity. The data processing challenge is to isolate changes in the reservoir itself from changes in the surrounding areas. Cross-equalization is a popular technique for this task (Stucchi et al., 2005; Rickett and Lumley, 2001). A number of different cross-equalization techniques have been successfully applied in recent years to estimate and remove time shifts between time-lapse images (Aarre, 2006; Bertrand et al., 2005). An analogous task exists in medical imaging, where it is known as the image registration problem (Modersitzki, 2004).

In this paper, we propose to use the local similarity attribute (Fomel, 2007a) for automatic quantitative estimation and extraction of variable time shifts between time-lapse seismic images. A similar technique has been applied previously to multicomponent image registration (Fomel et al., 2005). As a direct quantitative measure of image similarity, local attributes are perfectly suited for measuring nonstationary time-lapse correlations. The extracted time shifts also provide a direct estimate of the seismic velocity changes in the reservoir. We demonstrate an application of the proposed method with synthetic and real data examples.


next up previous [pdf]

Next: Theory Up: Fomel & Jin: Time-lapse Previous: Fomel & Jin: Time-lapse

2013-07-26