Geostatistical Rock Physics AVA Inversion
Leonardo Azevedo, Dario Grana, Catarina Amaro

TL;DR
This paper introduces an iterative geostatistical seismic inversion method that directly links seismic data, well logs, and rock physics models to accurately infer petrophysical properties like porosity and fluid saturation, improving uncertainty propagation.
Contribution
It presents a novel integrated approach combining rock physics models with stochastic inversion and global optimization for direct petrophysical property estimation from seismic data.
Findings
Successful application to North Sea reservoir data
Improved accuracy over traditional AVA inversion
Effective uncertainty propagation in petrophysical modeling
Abstract
Reservoir models are numerical representations of the subsurface petrophysical properties such as porosity, volume of minerals and fluid saturations. These are often derived from elastic models inferred from seismic inversion in a two-step approach: first, seismic reflection data are inverted for the elastic properties of interest (such as density, P-wave and S-wave velocities); these are then used as constraining properties to model the subsurface petrophysical variables. The sequential approach does not ensure a proper propagation of uncertainty throughout the entire geo-modelling workflow as it does not describe a direct link between the observed seismic data and the resulting petrophysical models. Rock physics models link the two domains. We propose to integrate seismic and rock physics modelling into an iterative geostatistical seismic inversion methodology. The proposed method…
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