Optimization of Reservoir Waterflooding
Waterflooding is a common type of oil recovery techniques where water is pumped into the reservoir for increased productivity. Reservoir states change with time, as such, different injection and production settings will be required to lead the process to optimal operation which is actually a dynamic...
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ndltd-CRANFIELD1-oai-dspace.lib.cranfield.ac.uk-1826-92632015-06-19T03:35:57ZOptimization of Reservoir WaterfloodingGrema, Alhaji ShehuOptimal controlReceding horizon controlSelf-optimizing controlgeological uncertaintycontrolled variableOpen-loop solutionfeedback controlreservoir waterfloodingWaterflooding is a common type of oil recovery techniques where water is pumped into the reservoir for increased productivity. Reservoir states change with time, as such, different injection and production settings will be required to lead the process to optimal operation which is actually a dynamic optimization problem. This could be solved through optimal control techniques which traditionally can only provide an open-loop solution. However, this solution is not appropriate for reservoir production due to numerous uncertain properties involved. Models that are updated through the current industrial practice of ‘history matching’ may fail to predict reality correctly and therefore, solutions based on history-matched models may be suboptimal or non-optimal at all. Due to its ability in counteracting the effects uncertainties, direct feedback control has been proposed recently for optimal waterflooding operations. In this work, two feedback approaches were developed for waterflooding process optimization. The first approach is based on the principle of receding horizon control (RHC) while the second is a new dynamic optimization method developed from the technique of self-optimizing control (SOC). For the SOC methodology, appropriate controlled variables (CVs) as combinations of measurement histories and manipulated variables are first derived through regression based on simulation data obtained from a nominal model. Then the optimal feedback control law was represented as a linear function of measurement histories from the CVs obtained. Based on simulation studies, the RHC approach was found to be very sensitive to uncertainties when the nominal model differed significantly from the conceived real reservoir. The SOC methodology on the other hand, was shown to achieve an operational profit with only 2% worse than the true optimal control, but 30% better than the open-loop optimal control under the same uncertainties. The simplicity of the developed SOC approach coupled with its robustness to handle uncertainties proved its potentials to real industrial applications.Cranfield UniversityCao, Yi2015-06-18T09:51:00Z2015-06-18T09:51:00Z2014-10Thesis or dissertationDoctoralPhDhttp://dspace.lib.cranfield.ac.uk/handle/1826/9263en© Cranfield University 2014. All rights reserved. No part of this publication may be reproduced without the written permission of the copyright owner. |
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language |
en |
sources |
NDLTD |
topic |
Optimal control Receding horizon control Self-optimizing control geological uncertainty controlled variable Open-loop solution feedback control reservoir waterflooding |
spellingShingle |
Optimal control Receding horizon control Self-optimizing control geological uncertainty controlled variable Open-loop solution feedback control reservoir waterflooding Grema, Alhaji Shehu Optimization of Reservoir Waterflooding |
description |
Waterflooding is a common type of oil recovery techniques where water is
pumped into the reservoir for increased productivity. Reservoir states change
with time, as such, different injection and production settings will be required to
lead the process to optimal operation which is actually a dynamic optimization
problem. This could be solved through optimal control techniques which
traditionally can only provide an open-loop solution. However, this solution is
not appropriate for reservoir production due to numerous uncertain properties
involved. Models that are updated through the current industrial practice of
‘history matching’ may fail to predict reality correctly and therefore, solutions
based on history-matched models may be suboptimal or non-optimal at all.
Due to its ability in counteracting the effects uncertainties, direct feedback
control has been proposed recently for optimal waterflooding operations. In this
work, two feedback approaches were developed for waterflooding process
optimization. The first approach is based on the principle of receding horizon
control (RHC) while the second is a new dynamic optimization method
developed from the technique of self-optimizing control (SOC). For the SOC
methodology, appropriate controlled variables (CVs) as combinations of
measurement histories and manipulated variables are first derived through
regression based on simulation data obtained from a nominal model. Then the
optimal feedback control law was represented as a linear function of
measurement histories from the CVs obtained.
Based on simulation studies, the RHC approach was found to be very sensitive
to uncertainties when the nominal model differed significantly from the
conceived real reservoir. The SOC methodology on the other hand, was shown
to achieve an operational profit with only 2% worse than the true optimal
control, but 30% better than the open-loop optimal control under the same
uncertainties. The simplicity of the developed SOC approach coupled with its
robustness to handle uncertainties proved its potentials to real industrial
applications. |
author2 |
Cao, Yi |
author_facet |
Cao, Yi Grema, Alhaji Shehu |
author |
Grema, Alhaji Shehu |
author_sort |
Grema, Alhaji Shehu |
title |
Optimization of Reservoir Waterflooding |
title_short |
Optimization of Reservoir Waterflooding |
title_full |
Optimization of Reservoir Waterflooding |
title_fullStr |
Optimization of Reservoir Waterflooding |
title_full_unstemmed |
Optimization of Reservoir Waterflooding |
title_sort |
optimization of reservoir waterflooding |
publisher |
Cranfield University |
publishDate |
2015 |
url |
http://dspace.lib.cranfield.ac.uk/handle/1826/9263 |
work_keys_str_mv |
AT gremaalhajishehu optimizationofreservoirwaterflooding |
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1716805717511372800 |