Well Placement Optimization Using Differential Evolution Algorithm
Determining the optimal location of wells with the aid of an automated search algorithm is a significant and difficult step in the reservoir development process. It is a computationally intensive task due to the large number of simulation runs required. Therefore,the key issue to such automatic opti...
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Iranian Institute of Research and Development in Chemical Industries (IRDCI)-ACECR
2015-06-01
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doaj-0509438aeb544e9281cde6572f7c3cfc2020-11-25T03:38:21ZengIranian Institute of Research and Development in Chemical Industries (IRDCI)-ACECRIranian Journal of Chemistry & Chemical Engineering 1021-99861021-99862015-06-0134210911614105Well Placement Optimization Using Differential Evolution AlgorithmSaied Afshari0Babak Aminshahidy1Mahmoud Reza Pishvaie2Chemical and Petroleum Engineering Department, Sharif University of Technology, Tehran, I.R. IRANFaculty of Petroleum Engineering, Amirkabir University of Technology, Tehran, I.R. IRANDepartment of Chemical and Petroleum Engineering, Sharif University of Technology, Tehran, I.R. IRANDetermining the optimal location of wells with the aid of an automated search algorithm is a significant and difficult step in the reservoir development process. It is a computationally intensive task due to the large number of simulation runs required. Therefore,the key issue to such automatic optimization is development of algorithms that can find acceptable solutions with a minimum number of function evaluations. In this study, the Differential Evolution (DE) algorithm is applied for the determination of optimal well locations. DE is a stochastic optimization algorithm that uses a population of solutions which evolve through generations to reach the global optimum. To investigate the performance of this algorithm, three example cases are considered which vary in dimension and complexity of the reservoir model. For each case, both DE algorithm and the widely used Genetic Algorithm (GA) are applied to maximize a Modified Net Present Value (MNPV) as the objective function. It is shown that DE outperforms GA in all cases considered, though the relative advantage of the DE vary from case to case. These results are very promising and demonstrate the applicability of DE for this challenging problem.http://www.ijcce.ac.ir/article_14105_d6972f3bf08c056b11d3ce61ec3501d4.pdfwell placementoptimizationdifferential evolution algorithmgenetic algorithm |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Saied Afshari Babak Aminshahidy Mahmoud Reza Pishvaie |
spellingShingle |
Saied Afshari Babak Aminshahidy Mahmoud Reza Pishvaie Well Placement Optimization Using Differential Evolution Algorithm Iranian Journal of Chemistry & Chemical Engineering well placement optimization differential evolution algorithm genetic algorithm |
author_facet |
Saied Afshari Babak Aminshahidy Mahmoud Reza Pishvaie |
author_sort |
Saied Afshari |
title |
Well Placement Optimization Using Differential Evolution Algorithm |
title_short |
Well Placement Optimization Using Differential Evolution Algorithm |
title_full |
Well Placement Optimization Using Differential Evolution Algorithm |
title_fullStr |
Well Placement Optimization Using Differential Evolution Algorithm |
title_full_unstemmed |
Well Placement Optimization Using Differential Evolution Algorithm |
title_sort |
well placement optimization using differential evolution algorithm |
publisher |
Iranian Institute of Research and Development in Chemical Industries (IRDCI)-ACECR |
series |
Iranian Journal of Chemistry & Chemical Engineering |
issn |
1021-9986 1021-9986 |
publishDate |
2015-06-01 |
description |
Determining the optimal location of wells with the aid of an automated search algorithm is a significant and difficult step in the reservoir development process. It is a computationally intensive task due to the large number of simulation runs required. Therefore,the key issue to such automatic optimization is development of algorithms that can find acceptable solutions with a minimum number of function evaluations. In this study, the Differential Evolution (DE) algorithm is applied for the determination of optimal well locations. DE is a stochastic optimization algorithm that uses a population of solutions which evolve through generations to reach the global optimum. To investigate the performance of this algorithm, three example cases are considered which vary in dimension and complexity of the reservoir model. For each case, both DE algorithm and the widely used Genetic Algorithm (GA) are applied to maximize a Modified Net Present Value (MNPV) as the objective function. It is shown that DE outperforms GA in all cases considered, though the relative advantage of the DE vary from case to case. These results are very promising and demonstrate the applicability of DE for this challenging problem. |
topic |
well placement optimization differential evolution algorithm genetic algorithm |
url |
http://www.ijcce.ac.ir/article_14105_d6972f3bf08c056b11d3ce61ec3501d4.pdf |
work_keys_str_mv |
AT saiedafshari wellplacementoptimizationusingdifferentialevolutionalgorithm AT babakaminshahidy wellplacementoptimizationusingdifferentialevolutionalgorithm AT mahmoudrezapishvaie wellplacementoptimizationusingdifferentialevolutionalgorithm |
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