A review on optimization algorithms and surrogate models for reservoir automatic history matching
Reservoir history matching represents a crucial stage in the reservoir development process
and purposes to match model predictions with various observed field data, including …
and purposes to match model predictions with various observed field data, including …
Deep Bayesian surrogate models with adaptive online sampling for ensemble-based data assimilation
Deep learning-based surrogate models have been a promising way of dealing with the
computational effort of data assimilation. Although the surrogate can reduce the …
computational effort of data assimilation. Although the surrogate can reduce the …
[HTML][HTML] History matching of petroleum reservoirs using deep neural networks
This paper proposes a novel approach based on deep learning to improve oil reservoirs'
history matching problem. Deep autoencoders are widely used to solve the oil industry …
history matching problem. Deep autoencoders are widely used to solve the oil industry …
Improving pseudo-optimal Kalman-gain localization using the random shuffle method
In present days, Iterative ensemble smoothers (IES) are among the main methods to perform
ensemble-based history matching in petroleum reservoirs. Generally, some localization …
ensemble-based history matching in petroleum reservoirs. Generally, some localization …
Subspace ensemble randomized maximum likelihood with local analysis for time-lapse-seismic-data assimilation
Time-lapse-seismic-data assimilation has been drawing the reservoir-engineering
community's attention over the past few years. One of the advantages of including this kind …
community's attention over the past few years. One of the advantages of including this kind …
Ensemble size investigation in adaptive ES-MDA reservoir history matching
In this work, we study the ensemble size influence on an adaptive ensemble-based
methodology for history matching of petroleum reservoirs. The assimilation scheme used is …
methodology for history matching of petroleum reservoirs. The assimilation scheme used is …
EVALUATING THE IMPACT OF PETROPHYSICAL IMAGES PARAMETERIZATION IN DATA ASSIMILATION FOR UNCERTAINTY REDUCTION
RV Soares, HN Formentin, C Maschio… - Brazilian Journal of …, 2019 - portalabpg.org.br
Parameterization is a crucial step during uncertainty reduction of reservoir properties using
dynamic data. It establishes the search space based on prior knowledge of the model and …
dynamic data. It establishes the search space based on prior knowledge of the model and …
[ZITATION][C] HISTORY MATCHING ON REAL CASE STUDY USING ENSEMBLE SMOOTHER WITH MULTIPLE DATA ASSIMILATION
E de Rossi Borin - 2022