Evolutionary Algorithm to Support Field Architecture Scenario Screening Automation and Optimization Using Decentralized Subsea Processing Modules

Manual generation of test cases and scenario screening processes, during field architecture concept development, may produce a limited number of solutions that do not necessarily lead to an optimal concept selection. For more complex subsea field architectures, which might include processing modules...

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Main Authors: Mariana J. C. Díaz Arias, Allyne M. dos Santos, Edmary Altamiranda
Format: Article
Language:English
Published: MDPI AG 2021-01-01
Series:Processes
Subjects:
Online Access:https://www.mdpi.com/2227-9717/9/1/184
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spelling doaj-94dbe0a0237a4c69a0b0d8e9f19cb17b2021-01-20T00:06:24ZengMDPI AGProcesses2227-97172021-01-01918418410.3390/pr9010184Evolutionary Algorithm to Support Field Architecture Scenario Screening Automation and Optimization Using Decentralized Subsea Processing ModulesMariana J. C. Díaz Arias0Allyne M. dos Santos1Edmary Altamiranda2Department of Geoscience and Petroleum, Norwegian University of Science and Technology, 7031 Trondheim, NorwayDepartment of Chemical Engineering, Norwegian University of Science and Technology, 7491 Trondheim, NorwayAker BP ASA, 4020 Stavanger, NorwayManual generation of test cases and scenario screening processes, during field architecture concept development, may produce a limited number of solutions that do not necessarily lead to an optimal concept selection. For more complex subsea field architectures, which might include processing modules for enhancing pressure and thermal management for the production network, the number of configuration cases and scenarios to evaluate can be extremely large and time and resource-consuming to handle through conventional manual design processes. This paper explores the use of evolutionary algorithms (EA) to automate case generation, scenario screening, and optimization of decentralized subsea processing modules during field development. An evaluation of various genetic operators and evolution strategies was performed to compare their performance and suitability to the application. Based on the evaluation results, an EA using structural uniform crossover and a gradient plus boundary mutation as the main variation operators was developed. The methodology combines EA and an integrated modeling approach to automate and optimize the concept selection and field architecture design when considering decentralized subsea processing modules.https://www.mdpi.com/2227-9717/9/1/184evolutionary algorithmsdecentralized subsea processingfield architecture concepts
collection DOAJ
language English
format Article
sources DOAJ
author Mariana J. C. Díaz Arias
Allyne M. dos Santos
Edmary Altamiranda
spellingShingle Mariana J. C. Díaz Arias
Allyne M. dos Santos
Edmary Altamiranda
Evolutionary Algorithm to Support Field Architecture Scenario Screening Automation and Optimization Using Decentralized Subsea Processing Modules
Processes
evolutionary algorithms
decentralized subsea processing
field architecture concepts
author_facet Mariana J. C. Díaz Arias
Allyne M. dos Santos
Edmary Altamiranda
author_sort Mariana J. C. Díaz Arias
title Evolutionary Algorithm to Support Field Architecture Scenario Screening Automation and Optimization Using Decentralized Subsea Processing Modules
title_short Evolutionary Algorithm to Support Field Architecture Scenario Screening Automation and Optimization Using Decentralized Subsea Processing Modules
title_full Evolutionary Algorithm to Support Field Architecture Scenario Screening Automation and Optimization Using Decentralized Subsea Processing Modules
title_fullStr Evolutionary Algorithm to Support Field Architecture Scenario Screening Automation and Optimization Using Decentralized Subsea Processing Modules
title_full_unstemmed Evolutionary Algorithm to Support Field Architecture Scenario Screening Automation and Optimization Using Decentralized Subsea Processing Modules
title_sort evolutionary algorithm to support field architecture scenario screening automation and optimization using decentralized subsea processing modules
publisher MDPI AG
series Processes
issn 2227-9717
publishDate 2021-01-01
description Manual generation of test cases and scenario screening processes, during field architecture concept development, may produce a limited number of solutions that do not necessarily lead to an optimal concept selection. For more complex subsea field architectures, which might include processing modules for enhancing pressure and thermal management for the production network, the number of configuration cases and scenarios to evaluate can be extremely large and time and resource-consuming to handle through conventional manual design processes. This paper explores the use of evolutionary algorithms (EA) to automate case generation, scenario screening, and optimization of decentralized subsea processing modules during field development. An evaluation of various genetic operators and evolution strategies was performed to compare their performance and suitability to the application. Based on the evaluation results, an EA using structural uniform crossover and a gradient plus boundary mutation as the main variation operators was developed. The methodology combines EA and an integrated modeling approach to automate and optimize the concept selection and field architecture design when considering decentralized subsea processing modules.
topic evolutionary algorithms
decentralized subsea processing
field architecture concepts
url https://www.mdpi.com/2227-9717/9/1/184
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