Home > Research > Publications & Outputs > Model Predictive Control Structures in Non-Mini...

Electronic data

  • 11003427.pdf

    Final published version, 5.88 MB, PDF document

    Available under license: CC BY-ND

View graph of relations

Model Predictive Control Structures in Non-Minimal State Space.

Research output: ThesisDoctoral Thesis

Unpublished

Standard

Model Predictive Control Structures in Non-Minimal State Space. / Exadaktylos, Vasileios.
Lancaster: Lancaster University, 2007. 204 p.

Research output: ThesisDoctoral Thesis

Harvard

Exadaktylos, V 2007, 'Model Predictive Control Structures in Non-Minimal State Space.', PhD, Lancaster University, Lancaster.

APA

Exadaktylos, V. (2007). Model Predictive Control Structures in Non-Minimal State Space. [Doctoral Thesis, Lancaster University]. Lancaster University.

Vancouver

Exadaktylos V. Model Predictive Control Structures in Non-Minimal State Space.. Lancaster: Lancaster University, 2007. 204 p.

Author

Exadaktylos, Vasileios. / Model Predictive Control Structures in Non-Minimal State Space.. Lancaster : Lancaster University, 2007. 204 p.

Bibtex

@phdthesis{9e11b1178acf42c583cd085407eb4f1c,
title = "Model Predictive Control Structures in Non-Minimal State Space.",
abstract = "This thesis is concerned with constraint handling for systems described by a Non-Minimal State Space (NMSS) form. Such NMSS models are formulated directly from the measured input and output signals of the controlled process, without resort to the design and implementation of an observer. The thesis largely focuses on the application of Model Predictive Control (MPC) methods, a very common technique for dealing with system constraints. It is motivated by earlier research into both NMSS and MPC systems, with features of both combined in this thesis to yield improved control. The main contribution lies in the development of new methods for constraint handling of NMSS/MPC systems that contrasts with the ad hoc approach previously used for NMSS design based on the Proportional-Integral-Plus (PIP) algorithm. Structural aspects of NMSS/MPC design are considered, that result from mathematical manipulation of the closed-loop block diagram or from the definition of the state space description. The properties of these structures are investigated to provide an insight on features of the proposed strategies. More specifically, a Reference Governor scheme is utilised as a supervisory controller to account for constraints. This can lead to constraint handling in cases where a controller is already available. Furthermore, the use of an internal model is considered in the case of the 'Forward Path' NMSS/MPC controller that is shown to have improved robustness properties in comparison to the conventional 'Feedback' structure. In contrast to existing internal model approaches, this technique utilises the NMSS structure of the state vector and estimates only the elements of the state vector that are related to past values of the output. In addition, an optimal tuning technique is presented for MPC controllers. This approach allows for multiple objectives to be specified, whilst satisfying any system constraints. It is also shown that a specific NMSS/MPC structure that is proposed in this thesis, namely the NMSS/MPC controller with an integral-of-error state, provides the designer with additional freedom when using this tuning method. New NMSS/MPC methods are presented for both linear and non-linear systems, with the latter case being described by State Dependent Parameter (SDP) models. The development and analysis of MPC/SDP control in this thesis represents the first constraint handling control system and associated stability results for this class of non-linear models. Simulation examples are used to illustrate the advantages and potential limitations of the various control structures in comparison to existing solutions.",
keywords = "MiAaPQ, Agricultural engineering., Electrical engineering.",
author = "Vasileios Exadaktylos",
note = "Thesis (Ph.D.)--Lancaster University (United Kingdom), 2007.",
year = "2007",
language = "English",
publisher = "Lancaster University",
school = "Lancaster University",

}

RIS

TY - BOOK

T1 - Model Predictive Control Structures in Non-Minimal State Space.

AU - Exadaktylos, Vasileios

N1 - Thesis (Ph.D.)--Lancaster University (United Kingdom), 2007.

PY - 2007

Y1 - 2007

N2 - This thesis is concerned with constraint handling for systems described by a Non-Minimal State Space (NMSS) form. Such NMSS models are formulated directly from the measured input and output signals of the controlled process, without resort to the design and implementation of an observer. The thesis largely focuses on the application of Model Predictive Control (MPC) methods, a very common technique for dealing with system constraints. It is motivated by earlier research into both NMSS and MPC systems, with features of both combined in this thesis to yield improved control. The main contribution lies in the development of new methods for constraint handling of NMSS/MPC systems that contrasts with the ad hoc approach previously used for NMSS design based on the Proportional-Integral-Plus (PIP) algorithm. Structural aspects of NMSS/MPC design are considered, that result from mathematical manipulation of the closed-loop block diagram or from the definition of the state space description. The properties of these structures are investigated to provide an insight on features of the proposed strategies. More specifically, a Reference Governor scheme is utilised as a supervisory controller to account for constraints. This can lead to constraint handling in cases where a controller is already available. Furthermore, the use of an internal model is considered in the case of the 'Forward Path' NMSS/MPC controller that is shown to have improved robustness properties in comparison to the conventional 'Feedback' structure. In contrast to existing internal model approaches, this technique utilises the NMSS structure of the state vector and estimates only the elements of the state vector that are related to past values of the output. In addition, an optimal tuning technique is presented for MPC controllers. This approach allows for multiple objectives to be specified, whilst satisfying any system constraints. It is also shown that a specific NMSS/MPC structure that is proposed in this thesis, namely the NMSS/MPC controller with an integral-of-error state, provides the designer with additional freedom when using this tuning method. New NMSS/MPC methods are presented for both linear and non-linear systems, with the latter case being described by State Dependent Parameter (SDP) models. The development and analysis of MPC/SDP control in this thesis represents the first constraint handling control system and associated stability results for this class of non-linear models. Simulation examples are used to illustrate the advantages and potential limitations of the various control structures in comparison to existing solutions.

AB - This thesis is concerned with constraint handling for systems described by a Non-Minimal State Space (NMSS) form. Such NMSS models are formulated directly from the measured input and output signals of the controlled process, without resort to the design and implementation of an observer. The thesis largely focuses on the application of Model Predictive Control (MPC) methods, a very common technique for dealing with system constraints. It is motivated by earlier research into both NMSS and MPC systems, with features of both combined in this thesis to yield improved control. The main contribution lies in the development of new methods for constraint handling of NMSS/MPC systems that contrasts with the ad hoc approach previously used for NMSS design based on the Proportional-Integral-Plus (PIP) algorithm. Structural aspects of NMSS/MPC design are considered, that result from mathematical manipulation of the closed-loop block diagram or from the definition of the state space description. The properties of these structures are investigated to provide an insight on features of the proposed strategies. More specifically, a Reference Governor scheme is utilised as a supervisory controller to account for constraints. This can lead to constraint handling in cases where a controller is already available. Furthermore, the use of an internal model is considered in the case of the 'Forward Path' NMSS/MPC controller that is shown to have improved robustness properties in comparison to the conventional 'Feedback' structure. In contrast to existing internal model approaches, this technique utilises the NMSS structure of the state vector and estimates only the elements of the state vector that are related to past values of the output. In addition, an optimal tuning technique is presented for MPC controllers. This approach allows for multiple objectives to be specified, whilst satisfying any system constraints. It is also shown that a specific NMSS/MPC structure that is proposed in this thesis, namely the NMSS/MPC controller with an integral-of-error state, provides the designer with additional freedom when using this tuning method. New NMSS/MPC methods are presented for both linear and non-linear systems, with the latter case being described by State Dependent Parameter (SDP) models. The development and analysis of MPC/SDP control in this thesis represents the first constraint handling control system and associated stability results for this class of non-linear models. Simulation examples are used to illustrate the advantages and potential limitations of the various control structures in comparison to existing solutions.

KW - MiAaPQ

KW - Agricultural engineering.

KW - Electrical engineering.

M3 - Doctoral Thesis

PB - Lancaster University

CY - Lancaster

ER -