State and parameter estimation based on a nonlinear filter applied to an industrial process control of ethanol production

Most advanced computer-aided control applications rely on good dynamics process models. The performance of the control system depends on the accuracy of the model used. Typically, such models are developed by conducting off-line identification experiments on the process. These experiments for identi...

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Main Authors: Meleiro L.A.C., Maciel Filho R.
Format: Article
Language:English
Published: Brazilian Society of Chemical Engineering 2000-01-01
Series:Brazilian Journal of Chemical Engineering
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0104-66322000000400063
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spelling doaj-2f850e05c983421aad81de0f0b189ed42020-11-24T23:06:33ZengBrazilian Society of Chemical EngineeringBrazilian Journal of Chemical Engineering0104-66321678-43832000-01-01174-79911002State and parameter estimation based on a nonlinear filter applied to an industrial process control of ethanol productionMeleiro L.A.C.Maciel Filho R.Most advanced computer-aided control applications rely on good dynamics process models. The performance of the control system depends on the accuracy of the model used. Typically, such models are developed by conducting off-line identification experiments on the process. These experiments for identification often result in input-output data with small output signal-to-noise ratio, and using these data results in inaccurate model parameter estimates [1]. In this work, a multivariable adaptive self-tuning controller (STC) was developed for a biotechnological process application. Due to the difficulties involving the measurements or the excessive amount of variables normally found in industrial process, it is proposed to develop "soft-sensors" which are based fundamentally on artificial neural networks (ANN). A second approach proposed was set in hybrid models, results of the association of deterministic models (which incorporates the available prior knowledge about the process being modeled) with artificial neural networks. In this case, kinetic parameters - which are very hard to be accurately determined in real time industrial plants operation - were obtained using ANN predictions. These methods are especially suitable for the identification of time-varying and nonlinear models. This advanced control strategy was applied to a fermentation process to produce ethyl alcohol (ethanol) in industrial scale. The reaction rate considered for substratum consumption, cells and ethanol productions are validated with industrial data for typical operating conditions. The results obtained show that the proposed procedure in this work has a great potential for application.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0104-66322000000400063Adaptive controlArtificial Neural NetworksHybrid ModelsFermentation processes
collection DOAJ
language English
format Article
sources DOAJ
author Meleiro L.A.C.
Maciel Filho R.
spellingShingle Meleiro L.A.C.
Maciel Filho R.
State and parameter estimation based on a nonlinear filter applied to an industrial process control of ethanol production
Brazilian Journal of Chemical Engineering
Adaptive control
Artificial Neural Networks
Hybrid Models
Fermentation processes
author_facet Meleiro L.A.C.
Maciel Filho R.
author_sort Meleiro L.A.C.
title State and parameter estimation based on a nonlinear filter applied to an industrial process control of ethanol production
title_short State and parameter estimation based on a nonlinear filter applied to an industrial process control of ethanol production
title_full State and parameter estimation based on a nonlinear filter applied to an industrial process control of ethanol production
title_fullStr State and parameter estimation based on a nonlinear filter applied to an industrial process control of ethanol production
title_full_unstemmed State and parameter estimation based on a nonlinear filter applied to an industrial process control of ethanol production
title_sort state and parameter estimation based on a nonlinear filter applied to an industrial process control of ethanol production
publisher Brazilian Society of Chemical Engineering
series Brazilian Journal of Chemical Engineering
issn 0104-6632
1678-4383
publishDate 2000-01-01
description Most advanced computer-aided control applications rely on good dynamics process models. The performance of the control system depends on the accuracy of the model used. Typically, such models are developed by conducting off-line identification experiments on the process. These experiments for identification often result in input-output data with small output signal-to-noise ratio, and using these data results in inaccurate model parameter estimates [1]. In this work, a multivariable adaptive self-tuning controller (STC) was developed for a biotechnological process application. Due to the difficulties involving the measurements or the excessive amount of variables normally found in industrial process, it is proposed to develop "soft-sensors" which are based fundamentally on artificial neural networks (ANN). A second approach proposed was set in hybrid models, results of the association of deterministic models (which incorporates the available prior knowledge about the process being modeled) with artificial neural networks. In this case, kinetic parameters - which are very hard to be accurately determined in real time industrial plants operation - were obtained using ANN predictions. These methods are especially suitable for the identification of time-varying and nonlinear models. This advanced control strategy was applied to a fermentation process to produce ethyl alcohol (ethanol) in industrial scale. The reaction rate considered for substratum consumption, cells and ethanol productions are validated with industrial data for typical operating conditions. The results obtained show that the proposed procedure in this work has a great potential for application.
topic Adaptive control
Artificial Neural Networks
Hybrid Models
Fermentation processes
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0104-66322000000400063
work_keys_str_mv AT meleirolac stateandparameterestimationbasedonanonlinearfilterappliedtoanindustrialprocesscontrolofethanolproduction
AT macielfilhor stateandparameterestimationbasedonanonlinearfilterappliedtoanindustrialprocesscontrolofethanolproduction
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