Nonlinear Estimation for Model Based Fault Diagnosis of Nonlinear Chemical Systems

Nonlinear estimation techniques play an important role for process monitoring since some states and most of the parameters cannot be directly measured. There are many techniques available for nonlinear state and parameter estimation, i.e., extended Kalman filter (EKF), unscented Kalman filter (UKF),...

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Main Author: Qu, Chunyan
Other Authors: Hahn, Juergen
Format: Others
Language:en_US
Published: 2011
Subjects:
Online Access:http://hdl.handle.net/1969.1/ETD-TAMU-2009-12-7225
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spelling ndltd-tamu.edu-oai-repository.tamu.edu-1969.1-ETD-TAMU-2009-12-72252013-01-08T10:41:40ZNonlinear Estimation for Model Based Fault Diagnosis of Nonlinear Chemical SystemsQu, ChunyanNonlinear EstimationUnscented Kalman filterMoving Horizon EstimationNonlinear estimation techniques play an important role for process monitoring since some states and most of the parameters cannot be directly measured. There are many techniques available for nonlinear state and parameter estimation, i.e., extended Kalman filter (EKF), unscented Kalman filter (UKF), particle filtering (PF) and moving horizon estimation (MHE) etc. However, many issues related to the available techniques are to be solved. This dissertation discusses three important techniques in nonlinear estimation, which are the application of unscented Kalman filters, improvement of moving horizon estimation via computation of the arrival cost and different implementations of extended Kalman filters. First the use of several estimation algorithms such as linearized Kalman filter (LKF), extended Kalman filter (EKF), unscented Kalman filter (UKF) and moving horizon estimation (MHE) are investigated for nonlinear systems with special emphasis on UKF as it is a relatively new technique. Detailed case studies show that UKF has advantages over EKF for highly nonlinear unconstrained estimation problems while MHE performs better for systems with constraints. Moving horizon estimation alleviates the computational burden of solving a full information estimation problem by considering a finite horizon of the measurement data; however, it is non-trivial to determine the arrival cost. A commonly used approach for computing the arrival cost is to use a first order Taylor series approximation of the nonlinear model and then apply an extended Kalman filter. The second contribution of this dissertation is that an approach to compute the arrival cost for moving horizon estimation based on an unscented Kalman filter is proposed. It is found that such a moving horizon estimator performs better in some cases than if one based on an extended Kalman filter. It is a promising alternative for approximating the arrival cost for MHE. Many comparative studies, often based upon simulation results, between extended Kalman filters (EKF) and other estimation methodologies such as moving horizon estimation, unscented Kalman filter, or particle filtering have been published over the last few years. However, the results returned by the extended Kalman filter are affected by the algorithm used for its implementation and some implementations of EKF may lead to inaccurate results. In order to address this point, this dissertation investigates several different algorithms for implementing extended Kalman filters. Advantages and drawbacks of different EKF implementations are discussed in detail and illustrated in some comparative simulation studies. Continuously predicting covariance matrix for EKF results in an accurate implementation. Evaluating covariance matrix at discrete times can also be applied. Good performance can be expected if covariance matrix is obtained from integrating the continuous-time equation or if the sensitivity equation is used for computing the Jacobian matrix.Hahn, Juergen2011-02-22T22:23:26Z2011-02-22T23:43:48Z2011-02-22T22:23:26Z2011-02-22T23:43:48Z2009-122011-02-22December 2009BookThesisElectronic Dissertationtextapplication/pdfhttp://hdl.handle.net/1969.1/ETD-TAMU-2009-12-7225en_US
collection NDLTD
language en_US
format Others
sources NDLTD
topic Nonlinear Estimation
Unscented Kalman filter
Moving Horizon Estimation
spellingShingle Nonlinear Estimation
Unscented Kalman filter
Moving Horizon Estimation
Qu, Chunyan
Nonlinear Estimation for Model Based Fault Diagnosis of Nonlinear Chemical Systems
description Nonlinear estimation techniques play an important role for process monitoring since some states and most of the parameters cannot be directly measured. There are many techniques available for nonlinear state and parameter estimation, i.e., extended Kalman filter (EKF), unscented Kalman filter (UKF), particle filtering (PF) and moving horizon estimation (MHE) etc. However, many issues related to the available techniques are to be solved. This dissertation discusses three important techniques in nonlinear estimation, which are the application of unscented Kalman filters, improvement of moving horizon estimation via computation of the arrival cost and different implementations of extended Kalman filters. First the use of several estimation algorithms such as linearized Kalman filter (LKF), extended Kalman filter (EKF), unscented Kalman filter (UKF) and moving horizon estimation (MHE) are investigated for nonlinear systems with special emphasis on UKF as it is a relatively new technique. Detailed case studies show that UKF has advantages over EKF for highly nonlinear unconstrained estimation problems while MHE performs better for systems with constraints. Moving horizon estimation alleviates the computational burden of solving a full information estimation problem by considering a finite horizon of the measurement data; however, it is non-trivial to determine the arrival cost. A commonly used approach for computing the arrival cost is to use a first order Taylor series approximation of the nonlinear model and then apply an extended Kalman filter. The second contribution of this dissertation is that an approach to compute the arrival cost for moving horizon estimation based on an unscented Kalman filter is proposed. It is found that such a moving horizon estimator performs better in some cases than if one based on an extended Kalman filter. It is a promising alternative for approximating the arrival cost for MHE. Many comparative studies, often based upon simulation results, between extended Kalman filters (EKF) and other estimation methodologies such as moving horizon estimation, unscented Kalman filter, or particle filtering have been published over the last few years. However, the results returned by the extended Kalman filter are affected by the algorithm used for its implementation and some implementations of EKF may lead to inaccurate results. In order to address this point, this dissertation investigates several different algorithms for implementing extended Kalman filters. Advantages and drawbacks of different EKF implementations are discussed in detail and illustrated in some comparative simulation studies. Continuously predicting covariance matrix for EKF results in an accurate implementation. Evaluating covariance matrix at discrete times can also be applied. Good performance can be expected if covariance matrix is obtained from integrating the continuous-time equation or if the sensitivity equation is used for computing the Jacobian matrix.
author2 Hahn, Juergen
author_facet Hahn, Juergen
Qu, Chunyan
author Qu, Chunyan
author_sort Qu, Chunyan
title Nonlinear Estimation for Model Based Fault Diagnosis of Nonlinear Chemical Systems
title_short Nonlinear Estimation for Model Based Fault Diagnosis of Nonlinear Chemical Systems
title_full Nonlinear Estimation for Model Based Fault Diagnosis of Nonlinear Chemical Systems
title_fullStr Nonlinear Estimation for Model Based Fault Diagnosis of Nonlinear Chemical Systems
title_full_unstemmed Nonlinear Estimation for Model Based Fault Diagnosis of Nonlinear Chemical Systems
title_sort nonlinear estimation for model based fault diagnosis of nonlinear chemical systems
publishDate 2011
url http://hdl.handle.net/1969.1/ETD-TAMU-2009-12-7225
work_keys_str_mv AT quchunyan nonlinearestimationformodelbasedfaultdiagnosisofnonlinearchemicalsystems
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