Grey Wolf Optimization For Intelligent Parametric Modeling Of Gradient Flexible Plate Structure

This paper presents the dynamic modeling of the gradient flexible plate system using System Identification method based on autoregressive with exogenous input model structure and estimated by Grey Wolf Optimization. The experimental rig of the gradient flexible plate was integrated with the data acq...

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Published in:Journal of Applied Science and Engineering
Main Author: Hassan M.H.; Jamali A.; Lidyana R.; Suffian M.S.Z.M.; Hadi M.S.; Mat Darus I.Z.
Format: Article
Language:English
Published: Tamkang University 2023
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85145971296&doi=10.6180%2fjase.202309_26%289%29.0001&partnerID=40&md5=69a5a3524455452d4973cdccd1015d88
id 2-s2.0-85145971296
spelling 2-s2.0-85145971296
Hassan M.H.; Jamali A.; Lidyana R.; Suffian M.S.Z.M.; Hadi M.S.; Mat Darus I.Z.
Grey Wolf Optimization For Intelligent Parametric Modeling Of Gradient Flexible Plate Structure
2023
Journal of Applied Science and Engineering
26
9
10.6180/jase.202309_26(9).0001
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85145971296&doi=10.6180%2fjase.202309_26%289%29.0001&partnerID=40&md5=69a5a3524455452d4973cdccd1015d88
This paper presents the dynamic modeling of the gradient flexible plate system using System Identification method based on autoregressive with exogenous input model structure and estimated by Grey Wolf Optimization. The experimental rig of the gradient flexible plate was integrated with the data acquisition and instrumentation to obtain input-output vibration data. The performances of developed models were validated through one step ahead prediction, mean squared error, and correlation tests. The model was verified using the pole-zero diagram to confirm its stability for the controller development. Results indicated that the optimum model to represent the dynamic system of gradient flexible plate was achieved by model order 4 with the mean squared error of 8.0496×10-6. The correlation results proved that the model was unbiased, and falls within the 95% confidence level. Likewise, the model was found to be stable as all the poles of transfer function were within the unit circle. Therefore, the identified model can be confidently used for the controller development to suppress undesirable vibration in the gradient flexible plate structure. © Tamkang University. All rights reserved.
Tamkang University
27089967
English
Article

author Hassan M.H.; Jamali A.; Lidyana R.; Suffian M.S.Z.M.; Hadi M.S.; Mat Darus I.Z.
spellingShingle Hassan M.H.; Jamali A.; Lidyana R.; Suffian M.S.Z.M.; Hadi M.S.; Mat Darus I.Z.
Grey Wolf Optimization For Intelligent Parametric Modeling Of Gradient Flexible Plate Structure
author_facet Hassan M.H.; Jamali A.; Lidyana R.; Suffian M.S.Z.M.; Hadi M.S.; Mat Darus I.Z.
author_sort Hassan M.H.; Jamali A.; Lidyana R.; Suffian M.S.Z.M.; Hadi M.S.; Mat Darus I.Z.
title Grey Wolf Optimization For Intelligent Parametric Modeling Of Gradient Flexible Plate Structure
title_short Grey Wolf Optimization For Intelligent Parametric Modeling Of Gradient Flexible Plate Structure
title_full Grey Wolf Optimization For Intelligent Parametric Modeling Of Gradient Flexible Plate Structure
title_fullStr Grey Wolf Optimization For Intelligent Parametric Modeling Of Gradient Flexible Plate Structure
title_full_unstemmed Grey Wolf Optimization For Intelligent Parametric Modeling Of Gradient Flexible Plate Structure
title_sort Grey Wolf Optimization For Intelligent Parametric Modeling Of Gradient Flexible Plate Structure
publishDate 2023
container_title Journal of Applied Science and Engineering
container_volume 26
container_issue 9
doi_str_mv 10.6180/jase.202309_26(9).0001
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85145971296&doi=10.6180%2fjase.202309_26%289%29.0001&partnerID=40&md5=69a5a3524455452d4973cdccd1015d88
description This paper presents the dynamic modeling of the gradient flexible plate system using System Identification method based on autoregressive with exogenous input model structure and estimated by Grey Wolf Optimization. The experimental rig of the gradient flexible plate was integrated with the data acquisition and instrumentation to obtain input-output vibration data. The performances of developed models were validated through one step ahead prediction, mean squared error, and correlation tests. The model was verified using the pole-zero diagram to confirm its stability for the controller development. Results indicated that the optimum model to represent the dynamic system of gradient flexible plate was achieved by model order 4 with the mean squared error of 8.0496×10-6. The correlation results proved that the model was unbiased, and falls within the 95% confidence level. Likewise, the model was found to be stable as all the poles of transfer function were within the unit circle. Therefore, the identified model can be confidently used for the controller development to suppress undesirable vibration in the gradient flexible plate structure. © Tamkang University. All rights reserved.
publisher Tamkang University
issn 27089967
language English
format Article
accesstype
record_format scopus
collection Scopus
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