Unbalance failure recognition using recurrent neural network

Many machine learning models have been created in recent years, which focus on recognising bearings and gearboxes with less attention on detecting unbalance issues. Unbalance is a fundamental issue that frequently occurs in deteriorating machinery, which requires checking prior to significant faults...

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Main Authors: M. M., Ruslan, M. F., Hassan
Format: Article
Language:English
Published: Penerbit Universiti Malaysia Pahang 2022
Subjects:
Online Access:http://umpir.ump.edu.my/id/eprint/34604/1/Unbalance%20failure%20recognition%20using%20recurrent%20neural%20network.pdf
http://umpir.ump.edu.my/id/eprint/34604/
https://doi.org/10.15282/ijame.19.2.2022.04.0746
https://doi.org/10.15282/ijame.19.2.2022.04.0746
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spelling my.ump.umpir.346042022-07-05T02:20:24Z http://umpir.ump.edu.my/id/eprint/34604/ Unbalance failure recognition using recurrent neural network M. M., Ruslan M. F., Hassan TJ Mechanical engineering and machinery TK Electrical engineering. Electronics Nuclear engineering Many machine learning models have been created in recent years, which focus on recognising bearings and gearboxes with less attention on detecting unbalance issues. Unbalance is a fundamental issue that frequently occurs in deteriorating machinery, which requires checking prior to significant faults such as bearing and gearbox failures. Unbalance will propagate unless correction happens, causing damage to neighbouring components, such as bearings and mechanical seals. Because recurrent neural networks are well-known for their performance with sequential data, in this study, RNN is proposed to be developed using only two statistical moments known as the crest factor and kurtosis, with the goal of producing an RNN capable of producing better unbalanced fault predictions than existing machine learning models. The results reveal that RNN prediction efficacies are dependent on how the input data is prepared, with separate datasets of unbalanced data producing more accurate predictions than bulk datasets and combined datasets. This study shows that if the dataset is prepared in a specific way, RNN has a stronger prediction capability, and a future study will explore a new parameter to be fused along with present statistical moments to increase RNN’s prediction capability. Penerbit Universiti Malaysia Pahang 2022-06 Article PeerReviewed pdf en cc_by_4 http://umpir.ump.edu.my/id/eprint/34604/1/Unbalance%20failure%20recognition%20using%20recurrent%20neural%20network.pdf M. M., Ruslan and M. F., Hassan (2022) Unbalance failure recognition using recurrent neural network. International Journal of Automotive and Mechanical Engineering (IJAME), 19 (2). pp. 9668-9680. ISSN 2180-1606 https://doi.org/10.15282/ijame.19.2.2022.04.0746 https://doi.org/10.15282/ijame.19.2.2022.04.0746
institution Universiti Malaysia Pahang
building UMP Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaysia Pahang
content_source UMP Institutional Repository
url_provider http://umpir.ump.edu.my/
language English
topic TJ Mechanical engineering and machinery
TK Electrical engineering. Electronics Nuclear engineering
spellingShingle TJ Mechanical engineering and machinery
TK Electrical engineering. Electronics Nuclear engineering
M. M., Ruslan
M. F., Hassan
Unbalance failure recognition using recurrent neural network
description Many machine learning models have been created in recent years, which focus on recognising bearings and gearboxes with less attention on detecting unbalance issues. Unbalance is a fundamental issue that frequently occurs in deteriorating machinery, which requires checking prior to significant faults such as bearing and gearbox failures. Unbalance will propagate unless correction happens, causing damage to neighbouring components, such as bearings and mechanical seals. Because recurrent neural networks are well-known for their performance with sequential data, in this study, RNN is proposed to be developed using only two statistical moments known as the crest factor and kurtosis, with the goal of producing an RNN capable of producing better unbalanced fault predictions than existing machine learning models. The results reveal that RNN prediction efficacies are dependent on how the input data is prepared, with separate datasets of unbalanced data producing more accurate predictions than bulk datasets and combined datasets. This study shows that if the dataset is prepared in a specific way, RNN has a stronger prediction capability, and a future study will explore a new parameter to be fused along with present statistical moments to increase RNN’s prediction capability.
format Article
author M. M., Ruslan
M. F., Hassan
author_facet M. M., Ruslan
M. F., Hassan
author_sort M. M., Ruslan
title Unbalance failure recognition using recurrent neural network
title_short Unbalance failure recognition using recurrent neural network
title_full Unbalance failure recognition using recurrent neural network
title_fullStr Unbalance failure recognition using recurrent neural network
title_full_unstemmed Unbalance failure recognition using recurrent neural network
title_sort unbalance failure recognition using recurrent neural network
publisher Penerbit Universiti Malaysia Pahang
publishDate 2022
url http://umpir.ump.edu.my/id/eprint/34604/1/Unbalance%20failure%20recognition%20using%20recurrent%20neural%20network.pdf
http://umpir.ump.edu.my/id/eprint/34604/
https://doi.org/10.15282/ijame.19.2.2022.04.0746
https://doi.org/10.15282/ijame.19.2.2022.04.0746
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score 13.211869