Approximation methodologies for explicit model predictive control of complex systems

This thesis concerns the development of complexity reduction methodologies for the application of multi-parametric/explicit model predictive (mp-MPC) control to complex high fidelity models. The main advantage of mp-MPC is the offline relocation of the optimization task and the associated computatio...

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Main Author: Lambert, Romain
Other Authors: Pistikopoulos, Stratos
Published: Imperial College London 2014
Subjects:
660
Online Access:http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.602298
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spelling ndltd-bl.uk-oai-ethos.bl.uk-6022982016-08-04T03:44:51ZApproximation methodologies for explicit model predictive control of complex systemsLambert, RomainPistikopoulos, Stratos2014This thesis concerns the development of complexity reduction methodologies for the application of multi-parametric/explicit model predictive (mp-MPC) control to complex high fidelity models. The main advantage of mp-MPC is the offline relocation of the optimization task and the associated computational expense through the use of multi-parametric programming. This allows for the application of MPC to fast sampling systems or systems for which it is not possible to perform online optimization due to cycle time requirements. The application of mp-MPC to complex nonlinear systems is of critical importance and is the subject of the thesis. The first part is concerned with the adaptation and development of model order reduction (MOR) techniques for application in combination to mp-MPC algorithms. This first part includes the mp-MPC oriented use of existing MOR techniques as well as the development of new ones. The use of MOR for multi-parametric moving horizon estimation is also investigated. The second part of the thesis introduces a framework for the ‘equation free’ surrogate-model based design of explicit controllers as a possible alternative to multi-parametric based methods. The methodology relies upon the use of advanced data-classification approaches and surrogate modelling techniques, and is illustrated with different numerical examples.660Imperial College Londonhttp://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.602298http://hdl.handle.net/10044/1/13943Electronic Thesis or Dissertation
collection NDLTD
sources NDLTD
topic 660
spellingShingle 660
Lambert, Romain
Approximation methodologies for explicit model predictive control of complex systems
description This thesis concerns the development of complexity reduction methodologies for the application of multi-parametric/explicit model predictive (mp-MPC) control to complex high fidelity models. The main advantage of mp-MPC is the offline relocation of the optimization task and the associated computational expense through the use of multi-parametric programming. This allows for the application of MPC to fast sampling systems or systems for which it is not possible to perform online optimization due to cycle time requirements. The application of mp-MPC to complex nonlinear systems is of critical importance and is the subject of the thesis. The first part is concerned with the adaptation and development of model order reduction (MOR) techniques for application in combination to mp-MPC algorithms. This first part includes the mp-MPC oriented use of existing MOR techniques as well as the development of new ones. The use of MOR for multi-parametric moving horizon estimation is also investigated. The second part of the thesis introduces a framework for the ‘equation free’ surrogate-model based design of explicit controllers as a possible alternative to multi-parametric based methods. The methodology relies upon the use of advanced data-classification approaches and surrogate modelling techniques, and is illustrated with different numerical examples.
author2 Pistikopoulos, Stratos
author_facet Pistikopoulos, Stratos
Lambert, Romain
author Lambert, Romain
author_sort Lambert, Romain
title Approximation methodologies for explicit model predictive control of complex systems
title_short Approximation methodologies for explicit model predictive control of complex systems
title_full Approximation methodologies for explicit model predictive control of complex systems
title_fullStr Approximation methodologies for explicit model predictive control of complex systems
title_full_unstemmed Approximation methodologies for explicit model predictive control of complex systems
title_sort approximation methodologies for explicit model predictive control of complex systems
publisher Imperial College London
publishDate 2014
url http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.602298
work_keys_str_mv AT lambertromain approximationmethodologiesforexplicitmodelpredictivecontrolofcomplexsystems
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