MIMO Frequency Sampling Filters for Modelling of MIMO System Applications

In the modelling of a system based on a system identification approach, data acquisition is the first procedure that must be carried out. The data acquisition process from a real system typically yields large amounts of data. This may lead to unacceptable computational time during the identification...

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Main Authors: Muhammad Hilmi R.A. Aziz, Rosmiwati Mohd-Mokhtar
Format: Article
Language:English
Published: ITB Journal Publisher 2013-04-01
Series:Journal of Engineering and Technological Sciences
Subjects:
Online Access:http://journals.itb.ac.id/index.php/jets/article/view/623/344
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spelling doaj-df158fb9e0c34434ba8ba66acd13dc6b2020-11-25T03:37:37ZengITB Journal PublisherJournal of Engineering and Technological Sciences2337-57792338-55022013-04-01451739610.5614/j.eng.technol.sci.2013.45.1.6MIMO Frequency Sampling Filters for Modelling of MIMO System ApplicationsMuhammad Hilmi R.A. Aziz0Rosmiwati Mohd-Mokhtar1School of Electrical & Electronic Engineering, Universiti Sains Malaysia, Engineering Campus, Nibong Tebal, Pulau Pinang, MalaysiaSchool of Electrical & Electronic Engineering, Universiti Sains Malaysia, Engineering Campus, Nibong Tebal, Pulau Pinang, MalaysiaIn the modelling of a system based on a system identification approach, data acquisition is the first procedure that must be carried out. The data acquisition process from a real system typically yields large amounts of data. This may lead to unacceptable computational time during the identification process. Raw data may also suffer severe noise disturbance, especially in the high frequency region. In addition, bias estimation will occur if one only considers direct identification from a closed-loop system. To overcome this problem, in this paper a multivariable frequency sampling filter approach is introduced. Multi-input-multi-output (MIMO) raw data are analyzed in order to obtain only relevant and meaningful parameters that describe the empirical model of the analyzed data. By performing this procedure, compressed, cleaned and unbiased data are produced. The efficacy of the MIMO frequency sampling filters was demonstrated by compressing two sets of data: pH neutralization process data and steam generator plant data. The results show that the amount of raw data was successfully compressed and that the output was ready for identification purposes with less computational time, i.e. they could be further used to develop a model of the system, to conduct time and frequency response analysis, and also for developing a new control system design. http://journals.itb.ac.id/index.php/jets/article/view/623/344Data compressionfrequency sampling filtersmultivariable processnon-parametric modelsystem identification
collection DOAJ
language English
format Article
sources DOAJ
author Muhammad Hilmi R.A. Aziz
Rosmiwati Mohd-Mokhtar
spellingShingle Muhammad Hilmi R.A. Aziz
Rosmiwati Mohd-Mokhtar
MIMO Frequency Sampling Filters for Modelling of MIMO System Applications
Journal of Engineering and Technological Sciences
Data compression
frequency sampling filters
multivariable process
non-parametric model
system identification
author_facet Muhammad Hilmi R.A. Aziz
Rosmiwati Mohd-Mokhtar
author_sort Muhammad Hilmi R.A. Aziz
title MIMO Frequency Sampling Filters for Modelling of MIMO System Applications
title_short MIMO Frequency Sampling Filters for Modelling of MIMO System Applications
title_full MIMO Frequency Sampling Filters for Modelling of MIMO System Applications
title_fullStr MIMO Frequency Sampling Filters for Modelling of MIMO System Applications
title_full_unstemmed MIMO Frequency Sampling Filters for Modelling of MIMO System Applications
title_sort mimo frequency sampling filters for modelling of mimo system applications
publisher ITB Journal Publisher
series Journal of Engineering and Technological Sciences
issn 2337-5779
2338-5502
publishDate 2013-04-01
description In the modelling of a system based on a system identification approach, data acquisition is the first procedure that must be carried out. The data acquisition process from a real system typically yields large amounts of data. This may lead to unacceptable computational time during the identification process. Raw data may also suffer severe noise disturbance, especially in the high frequency region. In addition, bias estimation will occur if one only considers direct identification from a closed-loop system. To overcome this problem, in this paper a multivariable frequency sampling filter approach is introduced. Multi-input-multi-output (MIMO) raw data are analyzed in order to obtain only relevant and meaningful parameters that describe the empirical model of the analyzed data. By performing this procedure, compressed, cleaned and unbiased data are produced. The efficacy of the MIMO frequency sampling filters was demonstrated by compressing two sets of data: pH neutralization process data and steam generator plant data. The results show that the amount of raw data was successfully compressed and that the output was ready for identification purposes with less computational time, i.e. they could be further used to develop a model of the system, to conduct time and frequency response analysis, and also for developing a new control system design.
topic Data compression
frequency sampling filters
multivariable process
non-parametric model
system identification
url http://journals.itb.ac.id/index.php/jets/article/view/623/344
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