Article ID Journal Published Year Pages File Type
4740331 Journal of Applied Geophysics 2013 9 Pages PDF
Abstract

•Couple cokriging algorithm into Bayesian framework•The coupled method can infer permeability from geophysical log data.•The method works even without the actual measurements of permeability.

This study uses borehole geophysical log data of sonic velocity and electrical resistivity to estimate permeability in sandstones in the northern Galilee Basin, Queensland. The prior estimates of permeability are calculated according to the deterministic log–log linear empirical correlations between electrical resistivity and measured permeability. Both negative and positive relationships are influenced by the clay content. The prior estimates of permeability are updated in a Bayesian framework for three boreholes using both the cokriging (CK) method and a normal linear regression (NLR) approach to infer the likelihood function. The results show that the mean permeability estimated from the CK-based Bayesian method is in better agreement with the measured permeability when a fairly apparent linear relationship exists between the logarithm of permeability and sonic velocity. In contrast, the NLR-based Bayesian approach gives better estimates of permeability for boreholes where no linear relationship exists between logarithm permeability and sonic velocity.

Related Topics
Physical Sciences and Engineering Earth and Planetary Sciences Geophysics
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