摘要

History matching (HM) is an important process that considers dynamic data to reduce uncertainties of parameters. As an ill-posed inverse problem, different combinations of uncertainties can result in matched models and, as the real response is unknown, methodologies for HM must be capable of representing all possible answers in a certain search space, mitigating the risk of convergence to a local minimum that may not represent the real answer. This work presents a study of an ensemble-based method, derived from the Kalman Filter (KF), the Ensemble Smoother with Multiple Data Assimilation (ES-MDA), in conjunction with a localization technique applied to a benchmark model with a known response, seeking to evaluate the final variability of the models and potential exclusion of better models in a HM problem. We used three different approaches of the same model aiming to identify the main applications and limitations of the method: the first approach uses ES-MDA without localization and the other two use ES-MDA with localization under distinct approaches. Results showed that ES-MDA without localization generated an ensemble with excessive uncertainty reduction. The localization technique was able to deal with this issue. However, the different approaches with localization presented different answers, suggesting that careful analysis is required. In addition, key parameters, such as the number of models and iterations also influence the results.

  • 出版日期2018-10