System identification of steam distillation essential oil extraction system / Mohd Hezri Fazalul Rahiman

This thesis presents new and novel linear and nonlinear system identification for a steam distillation essential oil extraction system. The system identification is initialized with a step test to estimate the system dynamics before continuing with PRBS perturbations. Four PRBS tests have been prese...

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Main Author: Fazalul Rahiman, Fazalul Rahiman
Format: Thesis
Language:English
Published: 2009
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Online Access:https://ir.uitm.edu.my/id/eprint/41297/1/41297.pdf
https://ir.uitm.edu.my/id/eprint/41297/
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Institution: Universiti Teknologi Mara
Language: English
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spelling my.uitm.ir.412972023-01-20T02:43:19Z https://ir.uitm.edu.my/id/eprint/41297/ System identification of steam distillation essential oil extraction system / Mohd Hezri Fazalul Rahiman Fazalul Rahiman, Fazalul Rahiman Physical and theoretical chemistry Extraction This thesis presents new and novel linear and nonlinear system identification for a steam distillation essential oil extraction system. The system identification is initialized with a step test to estimate the system dynamics before continuing with PRBS perturbations. Four PRBS tests have been presented in this thesis, where the first three were collected under different PRBS settings and the fourth was collected without low-pass filter. The collected data were then pre-processed and analyzed to evaluate their power spectral densities, correlation functions, distributions and sampling intervals. In the linear system identification approach, the ARX and ARMAX model structures have been used to model the system dynamic. The selection of model order for both structures was made based on information criterions such as NSSE, AIC, FPE and MDL. The selected ARX and ARMAX structures were estimated and validated. The performances of both models were then further assessed by noise variation tests and OSA evaluation tests. Results have shown that both models are good enough to model the system dynamic with the best fit of no less than 90%. In general, the ARX model with AIC selected model order is the most preferable as compared to the rest. Subsequently, in the nonlinear system identification, the NNARX model structure was used to model the system dynamic. Several optimizations on the neural network training have been performed and several regularizations of the training have been considered. Similar investigations have been carried out in nonlinear identification as done in its linear counterpart. Based on comparison between all above models, the NNARX that coupled with suitable regularisations have outperformed the linear models. Even though the linear models are sufficient for this system, the nonlinear model can represent the system better. The selected final model is the NNARX model structure with MDL model order selection criterion. The model was trained with LMA under lxlO"4 weight decay regularisation, 5 hyperbolic-tangent hidden neurons and one linear output neuron. 2009 Thesis NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/41297/1/41297.pdf System identification of steam distillation essential oil extraction system / Mohd Hezri Fazalul Rahiman. (2009) PhD thesis, thesis, Universiti Teknologi MARA (UiTM).
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Physical and theoretical chemistry
Extraction
spellingShingle Physical and theoretical chemistry
Extraction
Fazalul Rahiman, Fazalul Rahiman
System identification of steam distillation essential oil extraction system / Mohd Hezri Fazalul Rahiman
description This thesis presents new and novel linear and nonlinear system identification for a steam distillation essential oil extraction system. The system identification is initialized with a step test to estimate the system dynamics before continuing with PRBS perturbations. Four PRBS tests have been presented in this thesis, where the first three were collected under different PRBS settings and the fourth was collected without low-pass filter. The collected data were then pre-processed and analyzed to evaluate their power spectral densities, correlation functions, distributions and sampling intervals. In the linear system identification approach, the ARX and ARMAX model structures have been used to model the system dynamic. The selection of model order for both structures was made based on information criterions such as NSSE, AIC, FPE and MDL. The selected ARX and ARMAX structures were estimated and validated. The performances of both models were then further assessed by noise variation tests and OSA evaluation tests. Results have shown that both models are good enough to model the system dynamic with the best fit of no less than 90%. In general, the ARX model with AIC selected model order is the most preferable as compared to the rest. Subsequently, in the nonlinear system identification, the NNARX model structure was used to model the system dynamic. Several optimizations on the neural network training have been performed and several regularizations of the training have been considered. Similar investigations have been carried out in nonlinear identification as done in its linear counterpart. Based on comparison between all above models, the NNARX that coupled with suitable regularisations have outperformed the linear models. Even though the linear models are sufficient for this system, the nonlinear model can represent the system better. The selected final model is the NNARX model structure with MDL model order selection criterion. The model was trained with LMA under lxlO"4 weight decay regularisation, 5 hyperbolic-tangent hidden neurons and one linear output neuron.
format Thesis
author Fazalul Rahiman, Fazalul Rahiman
author_facet Fazalul Rahiman, Fazalul Rahiman
author_sort Fazalul Rahiman, Fazalul Rahiman
title System identification of steam distillation essential oil extraction system / Mohd Hezri Fazalul Rahiman
title_short System identification of steam distillation essential oil extraction system / Mohd Hezri Fazalul Rahiman
title_full System identification of steam distillation essential oil extraction system / Mohd Hezri Fazalul Rahiman
title_fullStr System identification of steam distillation essential oil extraction system / Mohd Hezri Fazalul Rahiman
title_full_unstemmed System identification of steam distillation essential oil extraction system / Mohd Hezri Fazalul Rahiman
title_sort system identification of steam distillation essential oil extraction system / mohd hezri fazalul rahiman
publishDate 2009
url https://ir.uitm.edu.my/id/eprint/41297/1/41297.pdf
https://ir.uitm.edu.my/id/eprint/41297/
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