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    A modified differential evolution optimization algorithm with random localization for generation of best-guess properties in history matching

    , Article Energy Sources, Part A: Recovery, Utilization and Environmental Effects ; Volume 33, Issue 9 , Feb , 2011 , Pages 845-858 ; 15567036 (ISSN) Rahmati, H ; Nouri, A ; Pishvaie, M. R ; Bozorgmehri, R ; Sharif University of Technology
    2011
    Abstract
    Computer aided history matching techniques are increasingly playing a role in reservoir characterization. This article describes the implementation of a differential evolution optimization algorithm to carry out reservoir characterization by conditioning the reservoir simulation model to production data (history matching). We enhanced the differential evolution algorithm and developed the modified differential evolution optimization method with random localization. The proposed technique is simple-structured, robust, and computationally efficient. We also investigated the convergence characteristics of the algorithm in some synthetic oil reservoirs. In addition, the proposed method is... 

    Development of an adaptive surrogate model for production optimization

    , Article Journal of Petroleum Science and Engineering ; Volume 133 , September , 2015 , Pages 677-688 ; 09204105 (ISSN) Golzari, A ; Haghighat Sefat, M ; Jamshidi, S ; Sharif University of Technology
    Elsevier  2015
    Abstract
    Recently production optimization has gained increasing interest in the petroleum industry. The most computationally expensive part of the production optimization process is the evaluation of the objective function performed by a numerical reservoir simulator. Employing surrogate models (a.k.a. proxy models) as a substitute for the reservoir simulator is proposed for alleviating this high computational cost.In this study, a novel approach for constructing adaptive surrogate models with application in production optimization problem is proposed. A dynamic Artificial Neural Networks (ANNs) is employed as the approximation function while the training is performed using an adaptive sampling...