Integrated Well Placement and Completion Optimization using Heuristic Algorithms: A Case Study of an Iranian Carbonate Formation
Determination of optimum location for drilling a new well not only requires engineering judgments but also consumes excessive computational time. Additionally, availability of many physical constraints such as the well length, trajectory, and completion type and the numerous affecting parameters inc...
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doaj-d543cb363f7e41a8a54c0ada23ca81e72020-11-25T02:47:17ZengUniversity of TehranJournal of Chemical and Petroleum Engineering2423-673X2423-67212018-06-01521354710.22059/JCHPE.2018.245405.1211Integrated Well Placement and Completion Optimization using Heuristic Algorithms: A Case Study of an Iranian Carbonate FormationReza Khoshneshin0Saeid Sadeghnejad1Department of Petroleum Engineering, Faculty of Chemical Engineering, Tarbiat Modares University, Tehran, IranDepartment of Petroleum Engineering, Faculty of Chemical Engineering, Tarbiat Modares University, Tehran, IranDetermination of optimum location for drilling a new well not only requires engineering judgments but also consumes excessive computational time. Additionally, availability of many physical constraints such as the well length, trajectory, and completion type and the numerous affecting parameters including, well type, well numbers, well-control variables prompt that the optimization approaches become imperative;. The aim of this study is to figure out optimum well location and the best completion condition using coupled simulation optimization on an Iranian oil field located in southwest of Iran. The well placement scenarios are considered in two successive time intervals during of the field life, i.e., exploration and infill drilling phase. In the former scenario, the well-placement optimization is considered to locate the drilling site of a wildcat well, while the later scenario includes the optimum drilling location of a well is determined after 10-years primary production of nine production wells. In each scenario, two stochastic optimization algorithms namely particle swarm optimization, and artificial bee colony will be applied to evaluate the considered objective function. The net present value to drill production wells through the field life is considered as an objective function during our simulation-optimization approach. Our results show that the outcome of two population-based algorithms (i.e., particle swarm optimization and artificial bee colony) is marginally different from each other. The net present value of the infill drilling phase attains higher value using artificial bee colony algorithm.https://jchpe.ut.ac.ir/article_66102.htmlArtificial bee colonyCoupled simulation-optimizationInfill drillingNet present valueParticle swarm optimizationWell placement |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Reza Khoshneshin Saeid Sadeghnejad |
spellingShingle |
Reza Khoshneshin Saeid Sadeghnejad Integrated Well Placement and Completion Optimization using Heuristic Algorithms: A Case Study of an Iranian Carbonate Formation Journal of Chemical and Petroleum Engineering Artificial bee colony Coupled simulation-optimization Infill drilling Net present value Particle swarm optimization Well placement |
author_facet |
Reza Khoshneshin Saeid Sadeghnejad |
author_sort |
Reza Khoshneshin |
title |
Integrated Well Placement and Completion Optimization using Heuristic Algorithms: A Case Study of an Iranian Carbonate Formation |
title_short |
Integrated Well Placement and Completion Optimization using Heuristic Algorithms: A Case Study of an Iranian Carbonate Formation |
title_full |
Integrated Well Placement and Completion Optimization using Heuristic Algorithms: A Case Study of an Iranian Carbonate Formation |
title_fullStr |
Integrated Well Placement and Completion Optimization using Heuristic Algorithms: A Case Study of an Iranian Carbonate Formation |
title_full_unstemmed |
Integrated Well Placement and Completion Optimization using Heuristic Algorithms: A Case Study of an Iranian Carbonate Formation |
title_sort |
integrated well placement and completion optimization using heuristic algorithms: a case study of an iranian carbonate formation |
publisher |
University of Tehran |
series |
Journal of Chemical and Petroleum Engineering |
issn |
2423-673X 2423-6721 |
publishDate |
2018-06-01 |
description |
Determination of optimum location for drilling a new well not only requires engineering judgments but also consumes excessive computational time. Additionally, availability of many physical constraints such as the well length, trajectory, and completion type and the numerous affecting parameters including, well type, well numbers, well-control variables prompt that the optimization approaches become imperative;. The aim of this study is to figure out optimum well location and the best completion condition using coupled simulation optimization on an Iranian oil field located in southwest of Iran. The well placement scenarios are considered in two successive time intervals during of the field life, i.e., exploration and infill drilling phase. In the former scenario, the well-placement optimization is considered to locate the drilling site of a wildcat well, while the later scenario includes the optimum drilling location of a well is determined after 10-years primary production of nine production wells. In each scenario, two stochastic optimization algorithms namely particle swarm optimization, and artificial bee colony will be applied to evaluate the considered objective function. The net present value to drill production wells through the field life is considered as an objective function during our simulation-optimization approach. Our results show that the outcome of two population-based algorithms (i.e., particle swarm optimization and artificial bee colony) is marginally different from each other. The net present value of the infill drilling phase attains higher value using artificial bee colony algorithm. |
topic |
Artificial bee colony Coupled simulation-optimization Infill drilling Net present value Particle swarm optimization Well placement |
url |
https://jchpe.ut.ac.ir/article_66102.html |
work_keys_str_mv |
AT rezakhoshneshin integratedwellplacementandcompletionoptimizationusingheuristicalgorithmsacasestudyofaniraniancarbonateformation AT saeidsadeghnejad integratedwellplacementandcompletionoptimizationusingheuristicalgorithmsacasestudyofaniraniancarbonateformation |
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1724753629912498176 |