Abstract
Multidimensional deconvolution constitutes an essential operation in a variety of geophysical scenarios at different scales ranging from reservoir to crustal, as it appears in applications such as surface multiple elimination, target-oriented redatuming, and interferometric body-wave retrieval just to name a few. Depending on the use case, active, microseismic, or teleseismic signals are used to reconstruct the broadband response that would have been recorded between two observation points as if one were a virtual source. Reconstructing such a response relies on the the solution of an ill-conditioned linear inverse problem sensitive to noise and artifacts due to incomplete acquisition, limited sources, and band-limited data. Typically, this inversion is performed in the Fourier domain where the inverse problem is solved per frequency via direct or iterative solvers. While this inversion is in theory meant to remove spurious events from cross-correlation gathers and to correct amplitudes, difficulties arise in the estimation of optimal regularization parameters, which are worsened by the fact they must be estimated at each frequency independently. Here we show the benefits of formulating the problem in the time domain and introduce a number of physical constraints that naturally drive the inversion towards a reduced set of stable, meaningful solutions. By exploiting reciprocity, time causality, and frequency-wavenumber locality a set of preconditioners are included at minimal additional cost as a way to alleviate the dependency on an optimal damping parameter to stabilize the inversion. With an interferometric redatuming example, we demonstrate how our time domain implementation successfully reconstructs the overburden-free reflection response beneath a complex salt body from noise-contaminated up- and down-going transmission responses at the target level.
Highlights
Seismic recordings carry useful information describing the interaction of waves propagating in an otherwise unknown physical medium
For solutions in the space-time domain, we propose a set of efficient preconditioners designed to conform to the implicit physics of wave phenomena, namely, reciprocity, causality, and locality/compactness in the frequency-wavenumber domain
We show that multi-dimensional deconvolution (MDD) can be accomplished in a manner that is both reliable and stable— in the presence of noise in both the data and forward operator—by means of physics-based constraints implemented as pre-conditioners in the time domain
Summary
Seismic recordings carry useful information describing the interaction of waves propagating in an otherwise unknown physical medium. The recorded wavefields are associated with a particular wave state that can be uniquely identified by defining wave nature, media parameters, source extension, and boundary conditions. Multiple physical, economical, or environmental aspects constraint the circumstances in which seismic exploration is conducted. To overcome such limitations, based on survey measurements, data-driven techniques are typically used to recreate more ideal settings, known as virtual surveys. Most of the efforts in many pre-processing workflows consist of identifying and separating certain family of events present in the recorded seismic gathers.
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