| dc.description.abstract | The current work introduces an automatized process coupled with geological modeling to reduce uncertainty in
reservoir properties. The method assimilates dynamic data of wells interactively, and applies the deviations to
constrain uncertainties. The methodology deals with scalar (e.g. rock compressibility) and spatial (e.g. porosity)
attributes at same time, employing specialized uncertainty reduction procedures. The procedure reduces the
uncertainty of scalar attributes through Iterative Discrete Latin HyperCube method (IDLHC). To reduce un certainties of spatial attributes, we worked on an extension of a regionalized co-simulation (co-DSS) method. The
main contributions regard the proposition of update, at same time, both kinds of uncertainties (spatial and
scalar); the definition of sequential rules, that simplify the process execution and avoiding subjectivities on the
coupling of the geological modeling on data assimilation, as well as the automation of the process. The procedure
was validated under a siliciclastic black-oil benchmark field (UNISIM-I-M), established based on Namorado Field,
Campos Basin, Brazil. The procedure reduced the range of uncertainty of the scalar attributes, centralizing final
PDFs with the values presented in the reference model, without collapse to a particular level, as well as preserved
the geological consistency throughout data assimilation, obtaining porosity responses in agreement with the
reference porosity distribution. The potential of the procedure is supported by the consistent production forecast
observed in the outcomes. | pt_BR |