2017_EJRNL_PP_HUIYING_REN_1.pdf
Terbatas  
» Gedung UPT Perpustakaan
Terbatas  
» Gedung UPT Perpustakaan
In this study we developed an efficient Bayesian inversion framework for interpreting marine seismic Amplitude
Versus Angle and Controlled-Source Electromagnetic data for marine reservoir characterization. The framework
uses a multi-chain Markov-chain Monte Carlo sampler, which is a hybrid of DiffeRential Evolution Adaptive Metropolis and Adaptive Metropolis samplers. The inversion framework is tested by estimating reservoir-fluid saturations and porosity based on marine seismic and Controlled-Source Electromagnetic data. The multi-chain
Markov-chain Monte Carlo is scalable in terms of the number of chains, and is useful for computationally demanding Bayesian model calibration in scientific and engineering problems. As a demonstration, the approach
is used to efficiently and accurately estimate the porosity and saturations in a representative layered synthetic
reservoir. The results indicate that the seismic Amplitude Versus Angle and Controlled-Source Electromagnetic
joint inversion provides better estimation of reservoir saturations than the seismic Amplitude Versus Angle
only inversion, especially for the parameters in deep layers. The performance of the inversion approach for various levels of noise in observational data was evaluated — reasonable estimates can be obtained with noise levels
up to 25%. Sampling efficiency due to the use of multiple chains was also checked and was found to have almost
linear scalability
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