Abstract
Full waveform inversion (FWI) creates high resolution models of the
Earth’s subsurface structures from seismic waveform data. Due to the
non-linearity and non-uniqueness of FWI problems, finding globally
best-fitting model solutions is not necessarily desirable since they fit
noise as well as signal in the data. Bayesian FWI calculates a so-called
posterior probability distribution function, which describes all
possible model solutions and their uncertainties. In this paper, we
solve Bayesian FWI using variational inference and propose a new
methodology called physically structured variational inference, in which
a physics-based structure is imposed on the variational distribution. In
a simple example motivated by prior information from past FWI solutions,
we include parameter correlations between pairs of spatial locations
within a dominant wavelength of each other, and set other correlations
to zero. This makes the method far more efficient in terms of both
memory requirements and computation, at the cost of some loss of
generality in the solution found. We demonstrate the proposed method
with a 2D acoustic FWI scenario, and compare the results with those
obtained using other methods. This verifies that the method can produce
accurate statistical information about the posterior distribution with
hugely improved efficiency (in our FWI example, 1 order of magnitude in
computation). We further demonstrate that despite the possible reduction
in generality of the solution, the posterior uncertainties can be used
to solve post-inversion interrogation problems connected to estimating
volumes of subsurface reservoirs and of stored CO2, with minimal bias,
creating a highly efficient FWI-based decision-making workflow.