Joint Bayesian inversion based on rock-physics prior modeling for the estimation of spatially correlated reservoir properties

Author:

de Figueiredo Leandro Passos1ORCID,Grana Dario2ORCID,Bordignon Fernando Luis3ORCID,Santos Marcio4,Roisenberg Mauro5,Rodrigues Bruno B.6

Affiliation:

1. Federal University of Santa Catarina, Physics Department, Florianópolis, Brazil and LTrace Geophysical Solutions, Florianópolis, Brazil..

2. University of Wyoming, Department of Geology and Geophysics, Laramie, Wyoming, USA..

3. Federal University of Santa Catarina, Informatic and Statistics Department, Florianópolis, Brazil and LTrace Geophysical Solutions, Florianópolis, Brazil..

4. Federal University of Santa Catarina, Physics Department, Florianópolis, Brazil..

5. Federal University of Santa Catarina, Informatic and Statistics Department, Florianópolis, Brazil..

6. Petrobras Research Center, Rio de Janeiro, Brazil..

Abstract

The joint inversion of seismic data for elastic and petrophysical properties is an inverse problem with a nonunique solution. There are several factors that impact the accuracy of the results, such as the statistical rock-physics relations and observation errors. We have developed a general methodology to incorporate a linearized rock-physics model in a multivariate multimodal prior distribution for Bayesian seismic linearized inversion. The prior distribution is used to define a mixture model for elastic and petrophysical properties and introduce physics-based correlations between the properties. Using the rock-physics prior model and a convolutional seismic forward model in the Bayesian inversion framework, we obtain an analytical expression of the spatially independent conditional distributions to be used as a proposal distribution in a Gibbs sampling algorithm. We then combine the sampling algorithm with geostatistical simulation methods to compute the spatially correlated posterior distribution of the model parameters. We apply our method to a real angle-stack seismic data set to generate multiple geostatistical realizations of facies, P-velocity, S-velocity, density, porosity, and water saturation. The method is validated through a blind well test and a comparison with the standard Bayesian linearized inversion.

Publisher

Society of Exploration Geophysicists

Subject

Geochemistry and Petrology,Geophysics

Reference62 articles.

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