Offset-free nonlinear Model Predictive Control with state-space process models

Offset-free model predictive control (MPC) algorithms for nonlinear state-space process models, with modeling errors and under asymptotically constant external disturbances, is the subject of the paper. The main result of the paper is the presentation of a novel technique based on constant state dis...

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Main Author: Tatjewski Piotr
Format: Article
Language:English
Published: Polish Academy of Sciences 2017-12-01
Series:Archives of Control Sciences
Subjects:
Online Access:http://www.degruyter.com/view/j/acsc.2017.27.issue-4/acsc-2017-0035/acsc-2017-0035.xml?format=INT
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spelling doaj-adc2e4e57d754014a52156f2c89eee8f2020-11-25T02:33:32ZengPolish Academy of SciencesArchives of Control Sciences2300-26112017-12-0127459561510.1515/acsc-2017-0035acsc-2017-0035Offset-free nonlinear Model Predictive Control with state-space process modelsTatjewski Piotr0Warsaw University of Technology, Nowowiejska 15/19, 00-665Warszawa, PolandOffset-free model predictive control (MPC) algorithms for nonlinear state-space process models, with modeling errors and under asymptotically constant external disturbances, is the subject of the paper. The main result of the paper is the presentation of a novel technique based on constant state disturbance prediction. It was introduced originally by the author for linear state-space models and is generalized to the nonlinear case in the paper. First the case with measured state is considered, in this case the technique allows to avoid disturbance estimation at all. For the cases with process outputs measured only and thus the necessity of state estimation, the technique allows the process state estimation only - as opposed to conventional approach of extended process-and-disturbance state estimation. This leads to simpler design with state observer/filter of lower order and, moreover, without the need of a decision of disturbance placement in the model (under certain restrictions), as in the conventional approach. A theoretical analysis of the proposed algorithm is provided, under applicability conditions which are weaker than in the conventional approach. The presented theory is illustrated by simulation results of nonlinear processes, showing competitiveness of the proposed algorithms.http://www.degruyter.com/view/j/acsc.2017.27.issue-4/acsc-2017-0035/acsc-2017-0035.xml?format=INTnonlinear controlpredictive controloffset-free controlstate-space modelstate estimation
collection DOAJ
language English
format Article
sources DOAJ
author Tatjewski Piotr
spellingShingle Tatjewski Piotr
Offset-free nonlinear Model Predictive Control with state-space process models
Archives of Control Sciences
nonlinear control
predictive control
offset-free control
state-space model
state estimation
author_facet Tatjewski Piotr
author_sort Tatjewski Piotr
title Offset-free nonlinear Model Predictive Control with state-space process models
title_short Offset-free nonlinear Model Predictive Control with state-space process models
title_full Offset-free nonlinear Model Predictive Control with state-space process models
title_fullStr Offset-free nonlinear Model Predictive Control with state-space process models
title_full_unstemmed Offset-free nonlinear Model Predictive Control with state-space process models
title_sort offset-free nonlinear model predictive control with state-space process models
publisher Polish Academy of Sciences
series Archives of Control Sciences
issn 2300-2611
publishDate 2017-12-01
description Offset-free model predictive control (MPC) algorithms for nonlinear state-space process models, with modeling errors and under asymptotically constant external disturbances, is the subject of the paper. The main result of the paper is the presentation of a novel technique based on constant state disturbance prediction. It was introduced originally by the author for linear state-space models and is generalized to the nonlinear case in the paper. First the case with measured state is considered, in this case the technique allows to avoid disturbance estimation at all. For the cases with process outputs measured only and thus the necessity of state estimation, the technique allows the process state estimation only - as opposed to conventional approach of extended process-and-disturbance state estimation. This leads to simpler design with state observer/filter of lower order and, moreover, without the need of a decision of disturbance placement in the model (under certain restrictions), as in the conventional approach. A theoretical analysis of the proposed algorithm is provided, under applicability conditions which are weaker than in the conventional approach. The presented theory is illustrated by simulation results of nonlinear processes, showing competitiveness of the proposed algorithms.
topic nonlinear control
predictive control
offset-free control
state-space model
state estimation
url http://www.degruyter.com/view/j/acsc.2017.27.issue-4/acsc-2017-0035/acsc-2017-0035.xml?format=INT
work_keys_str_mv AT tatjewskipiotr offsetfreenonlinearmodelpredictivecontrolwithstatespaceprocessmodels
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