Recursive black-box identification of nonlinear state-space ODE models

Nonlinear system identification methods is a topic that has been gaining interest over the last years. One reason is the many application areas in controller design and system development. However, the problem of modeling nonlinear systems is complex and finding a general method that can be used for...

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Main Author: Brus, Linda
Format: Others
Language:English
Published: Uppsala universitet, Avdelningen för systemteknik 2006
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:uu:diva-86350
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spelling ndltd-UPSALLA1-oai-DiVA.org-uu-863502018-08-18T05:36:19ZRecursive black-box identification of nonlinear state-space ODE modelsengBrus, LindaUppsala universitet, Avdelningen för systemteknikUppsala universitet, Reglerteknik2006Control EngineeringReglerteknikNonlinear system identification methods is a topic that has been gaining interest over the last years. One reason is the many application areas in controller design and system development. However, the problem of modeling nonlinear systems is complex and finding a general method that can be used for many different applications is difficult. This thesis treats recursive identification methods for identification of systems that can be described by nonlinear ordinary differential equations. The general model structure enables application to a wide range of processes. It is also suitable for usage in combination with many nonlinear controller design methods. The first two papers of the thesis illustrates how a recursive prediction error method (RPEM) can be used for identification of an anaerobic digestion process and a solar heating system. In the former case the model complexity is significantly reduced compared to a semi-physical model of the system, without loosing much in model performance. In the latter case it is shown that it is possible to reach convergence even for a small data set, and that the resulting model is of comparable quality as a previously published grey-box model of the same system. The third paper consists of a convergence analysis of the studied RPEM. The analysis exploits averaging analysis using an associated ordinary differential equation, and formulates conditions for convergence to a minimum of the criterion function. Convergence to a true parameter set is also illustrated by an example. The fourth, and last, paper of this thesis addresses the problem of finding suitable initial parameters e.g. for the RPEM. With a potentially non-convex criterion function the choice of initial parameters becomes decisive for whether the algorithm converges to the global optimum, or a local one. The suggested initialization algorithm is a Kalman filter based method. Experiments using a simulated example show that the Kalman based method can, under beneficial circumstances, be used for initialization of the RPEM. The result is further supported by successful identification experiments of a laboratory scale cascaded tanks process, where the Kalman based method was used for initialization. Licentiate thesis, comprehensive summaryinfo:eu-repo/semantics/masterThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:uu:diva-86350IT licentiate theses / Uppsala University, Department of Information Technology, 1404-5117 ; 2006-001application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Others
sources NDLTD
topic Control Engineering
Reglerteknik
spellingShingle Control Engineering
Reglerteknik
Brus, Linda
Recursive black-box identification of nonlinear state-space ODE models
description Nonlinear system identification methods is a topic that has been gaining interest over the last years. One reason is the many application areas in controller design and system development. However, the problem of modeling nonlinear systems is complex and finding a general method that can be used for many different applications is difficult. This thesis treats recursive identification methods for identification of systems that can be described by nonlinear ordinary differential equations. The general model structure enables application to a wide range of processes. It is also suitable for usage in combination with many nonlinear controller design methods. The first two papers of the thesis illustrates how a recursive prediction error method (RPEM) can be used for identification of an anaerobic digestion process and a solar heating system. In the former case the model complexity is significantly reduced compared to a semi-physical model of the system, without loosing much in model performance. In the latter case it is shown that it is possible to reach convergence even for a small data set, and that the resulting model is of comparable quality as a previously published grey-box model of the same system. The third paper consists of a convergence analysis of the studied RPEM. The analysis exploits averaging analysis using an associated ordinary differential equation, and formulates conditions for convergence to a minimum of the criterion function. Convergence to a true parameter set is also illustrated by an example. The fourth, and last, paper of this thesis addresses the problem of finding suitable initial parameters e.g. for the RPEM. With a potentially non-convex criterion function the choice of initial parameters becomes decisive for whether the algorithm converges to the global optimum, or a local one. The suggested initialization algorithm is a Kalman filter based method. Experiments using a simulated example show that the Kalman based method can, under beneficial circumstances, be used for initialization of the RPEM. The result is further supported by successful identification experiments of a laboratory scale cascaded tanks process, where the Kalman based method was used for initialization.
author Brus, Linda
author_facet Brus, Linda
author_sort Brus, Linda
title Recursive black-box identification of nonlinear state-space ODE models
title_short Recursive black-box identification of nonlinear state-space ODE models
title_full Recursive black-box identification of nonlinear state-space ODE models
title_fullStr Recursive black-box identification of nonlinear state-space ODE models
title_full_unstemmed Recursive black-box identification of nonlinear state-space ODE models
title_sort recursive black-box identification of nonlinear state-space ode models
publisher Uppsala universitet, Avdelningen för systemteknik
publishDate 2006
url http://urn.kb.se/resolve?urn=urn:nbn:se:uu:diva-86350
work_keys_str_mv AT bruslinda recursiveblackboxidentificationofnonlinearstatespaceodemodels
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