Sparkplug failure detection using Z-freq and machine learning

Preprogrammed monitoring of engine failure due to spark plug misfire can be traced using a method called machine learning. Unluckily, a challenge to get a high-efficiency rate because of a massive volume of training data is required. During the study, these failure-generated were enhanced with a nov...

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Main Authors: Ngatiman, Nor Azazi, Nuawi, Mohd Zaki, Putra, Azma, Qamber, Isa S., Tole, Sutikno, Jopri, Mohd Hatta
Format: Article
Language:English
Published: Universitas Ahmad Dahlan 2021
Online Access:http://eprints.utem.edu.my/id/eprint/25847/2/22027-59268-1-PB.PDF
http://eprints.utem.edu.my/id/eprint/25847/
http://journal.uad.ac.id/index.php/TELKOMNIKA/article/view/22027/10963
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spelling my.utem.eprints.258472022-04-13T15:53:07Z http://eprints.utem.edu.my/id/eprint/25847/ Sparkplug failure detection using Z-freq and machine learning Ngatiman, Nor Azazi Nuawi, Mohd Zaki Putra, Azma Qamber, Isa S. Tole, Sutikno Jopri, Mohd Hatta Preprogrammed monitoring of engine failure due to spark plug misfire can be traced using a method called machine learning. Unluckily, a challenge to get a high-efficiency rate because of a massive volume of training data is required. During the study, these failure-generated were enhanced with a novel statistical signal-based analysis called Z-freq to improve the exploration. This study is an exploration of the time and frequency content attained from the engine after it goes under a specific situation. Throughout the trial, the misfire was formed by cutting the voltage supplied to simulate the actual outcome of the worn-out spark plug. The failure produced by fault signals from the spark plug misfire were collected using great sensitivity, space-saving and a robust piezo-based sensor named accelerometer. The achieved result and analysis indicated a significant pattern in the coefficient value and scattering of Z-freq data for spark plug misfire. Lastly, the simulation and experimental output were proved and endorsed in a series of performance metrics tests using accuracy, sensitivity, and specificity for prediction purposes. Finally, it confirmed that the proposed technique capably to make a diagnosis: fault detection, fault localization, and fault severity classification. Universitas Ahmad Dahlan 2021-12 Article PeerReviewed text en http://eprints.utem.edu.my/id/eprint/25847/2/22027-59268-1-PB.PDF Ngatiman, Nor Azazi and Nuawi, Mohd Zaki and Putra, Azma and Qamber, Isa S. and Tole, Sutikno and Jopri, Mohd Hatta (2021) Sparkplug failure detection using Z-freq and machine learning. TELKOMNIKA (Telecommunication Computing Electronics and Control), 19 (6). pp. 2020-2029. ISSN 1693-6930 http://journal.uad.ac.id/index.php/TELKOMNIKA/article/view/22027/10963 10.12928/TELKOMNIKA.v19i6.22027
institution Universiti Teknikal Malaysia Melaka
building UTEM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknikal Malaysia Melaka
content_source UTEM Institutional Repository
url_provider http://eprints.utem.edu.my/
language English
description Preprogrammed monitoring of engine failure due to spark plug misfire can be traced using a method called machine learning. Unluckily, a challenge to get a high-efficiency rate because of a massive volume of training data is required. During the study, these failure-generated were enhanced with a novel statistical signal-based analysis called Z-freq to improve the exploration. This study is an exploration of the time and frequency content attained from the engine after it goes under a specific situation. Throughout the trial, the misfire was formed by cutting the voltage supplied to simulate the actual outcome of the worn-out spark plug. The failure produced by fault signals from the spark plug misfire were collected using great sensitivity, space-saving and a robust piezo-based sensor named accelerometer. The achieved result and analysis indicated a significant pattern in the coefficient value and scattering of Z-freq data for spark plug misfire. Lastly, the simulation and experimental output were proved and endorsed in a series of performance metrics tests using accuracy, sensitivity, and specificity for prediction purposes. Finally, it confirmed that the proposed technique capably to make a diagnosis: fault detection, fault localization, and fault severity classification.
format Article
author Ngatiman, Nor Azazi
Nuawi, Mohd Zaki
Putra, Azma
Qamber, Isa S.
Tole, Sutikno
Jopri, Mohd Hatta
spellingShingle Ngatiman, Nor Azazi
Nuawi, Mohd Zaki
Putra, Azma
Qamber, Isa S.
Tole, Sutikno
Jopri, Mohd Hatta
Sparkplug failure detection using Z-freq and machine learning
author_facet Ngatiman, Nor Azazi
Nuawi, Mohd Zaki
Putra, Azma
Qamber, Isa S.
Tole, Sutikno
Jopri, Mohd Hatta
author_sort Ngatiman, Nor Azazi
title Sparkplug failure detection using Z-freq and machine learning
title_short Sparkplug failure detection using Z-freq and machine learning
title_full Sparkplug failure detection using Z-freq and machine learning
title_fullStr Sparkplug failure detection using Z-freq and machine learning
title_full_unstemmed Sparkplug failure detection using Z-freq and machine learning
title_sort sparkplug failure detection using z-freq and machine learning
publisher Universitas Ahmad Dahlan
publishDate 2021
url http://eprints.utem.edu.my/id/eprint/25847/2/22027-59268-1-PB.PDF
http://eprints.utem.edu.my/id/eprint/25847/
http://journal.uad.ac.id/index.php/TELKOMNIKA/article/view/22027/10963
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score 13.188404