Author/Authors :
Moradi، Moslem نويسنده Simulation and Data Processing Laboratory, Mining Engineering Department, University of Tehran, Iran Moradi, Moslem , Asghari، Omid نويسنده Assistant Professor, School ofMining, College of Engineering, University of Tehran, Iran Asghari, Omid , Norouzi، Gholamhossein نويسنده School of Mining Engineering, University College of Engineering , , Riahi، Mohammad Ali نويسنده Institute of Geophysics, University of Tehran, Iran Riahi, Mohammad Ali , Sokooti، Reza نويسنده NIOC Exploration Directorate, Iran Sokooti, Reza
Abstract :
Here in, an application of a new seismic inversion algorithm in one of Iran’s oilfields is described.
Stochastic (geostatistical) seismic inversion, as a complementary method to deterministic inversion, is
perceived as contribution combination of geostatistics and seismic inversion algorithm. This method
integrates information from different data sources with different scales, as prior information in
Bayesian statistics. Data integration leads to a probability density function (named as a posteriori
probability) that can yield a model of subsurface. The Markov Chain Monte Carlo (MCMC) method is
used to sample the posterior probability distribution, and the subsurface model characteristics can be
extracted by analyzing a set of the samples. In this study, the theory of stochastic seismic inversion in
a Bayesian framework was described and applied to infer P-impedance and porosity models. The
comparison between the stochastic seismic inversion and the deterministic model based seismic
inversion indicates that the stochastic seismic inversion can provide more detailed information of
subsurface character. Since multiple realizations are extracted by this method, an estimation of pore
volume and uncertainty in the estimation were analyzed.