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Identifying Abnormal CFRP Holes Using Both Unsupervised and Supervised Learning Techniques on In-Process Force, Current, and Vibration Signals

This study aims to conduct abnormality detection by applying machine learning algorithms when drilling a carbon fiber reinforced plastic laminate. In-process signals including current, thrust force, and vibration were captured during the dry drilling experiments using a 6 mm physical vapor deposit d...

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Autores principales: Svinth, Christian N., Wallace, Scott, Stephenson, Daniel B., Kim, Dave, Shin, Kangwoo, Kim, Hyo-Young, Lee, Seok-Woo, Kim, Tae-Gon
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Korean Society for Precision Engineering 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9062864/
http://dx.doi.org/10.1007/s12541-022-00641-2
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author Svinth, Christian N.
Wallace, Scott
Stephenson, Daniel B.
Kim, Dave
Shin, Kangwoo
Kim, Hyo-Young
Lee, Seok-Woo
Kim, Tae-Gon
author_facet Svinth, Christian N.
Wallace, Scott
Stephenson, Daniel B.
Kim, Dave
Shin, Kangwoo
Kim, Hyo-Young
Lee, Seok-Woo
Kim, Tae-Gon
author_sort Svinth, Christian N.
collection PubMed
description This study aims to conduct abnormality detection by applying machine learning algorithms when drilling a carbon fiber reinforced plastic laminate. In-process signals including current, thrust force, and vibration were captured during the dry drilling experiments using a 6 mm physical vapor deposit diamond-coated drill at the consistent spindle speed of 6500 RPM and 0.05 mm/rev. Across measurements from out-of-process variables, including hole diameter, roundness, surface roughness, entry/exit delamination, and entry/exit uncut fiber area, in-process measurements were most able to find outliers with respect to diameter. Both Principal Component Analysis, an unsupervised dimensionality reduction technique, and Linear Discriminant Analysis, a supervised dimensionality reduction technique, could separate oversize or undersize holes from average-sized holes when using fast Fourier transformation data of in-process vibration. Predictive performance with k-Nearest Neighbors shows that our machine learning pipeline can predict oversized vs. non-oversized holes with over 85% accuracy in this dataset. Peak prediction performance is obtained when in-process measurement data is viewed from the frequency domain, and predictions are weighted based on the relative distances of the nearest neighbors.
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spelling pubmed-90628642022-05-03 Identifying Abnormal CFRP Holes Using Both Unsupervised and Supervised Learning Techniques on In-Process Force, Current, and Vibration Signals Svinth, Christian N. Wallace, Scott Stephenson, Daniel B. Kim, Dave Shin, Kangwoo Kim, Hyo-Young Lee, Seok-Woo Kim, Tae-Gon Int. J. Precis. Eng. Manuf. Regular Paper This study aims to conduct abnormality detection by applying machine learning algorithms when drilling a carbon fiber reinforced plastic laminate. In-process signals including current, thrust force, and vibration were captured during the dry drilling experiments using a 6 mm physical vapor deposit diamond-coated drill at the consistent spindle speed of 6500 RPM and 0.05 mm/rev. Across measurements from out-of-process variables, including hole diameter, roundness, surface roughness, entry/exit delamination, and entry/exit uncut fiber area, in-process measurements were most able to find outliers with respect to diameter. Both Principal Component Analysis, an unsupervised dimensionality reduction technique, and Linear Discriminant Analysis, a supervised dimensionality reduction technique, could separate oversize or undersize holes from average-sized holes when using fast Fourier transformation data of in-process vibration. Predictive performance with k-Nearest Neighbors shows that our machine learning pipeline can predict oversized vs. non-oversized holes with over 85% accuracy in this dataset. Peak prediction performance is obtained when in-process measurement data is viewed from the frequency domain, and predictions are weighted based on the relative distances of the nearest neighbors. Korean Society for Precision Engineering 2022-05-03 2022 /pmc/articles/PMC9062864/ http://dx.doi.org/10.1007/s12541-022-00641-2 Text en © The Author(s), under exclusive licence to Korean Society for Precision Engineering 2022, corrected publication 2022Springer Nature or its licensor holds exclusive rights to this article under a publishing agreement with the author(s) or other rightsholder(s); author self-archiving of the accepted manuscript version of this article is solely governed by the terms of such publishing agreement and applicable law. This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Regular Paper
Svinth, Christian N.
Wallace, Scott
Stephenson, Daniel B.
Kim, Dave
Shin, Kangwoo
Kim, Hyo-Young
Lee, Seok-Woo
Kim, Tae-Gon
Identifying Abnormal CFRP Holes Using Both Unsupervised and Supervised Learning Techniques on In-Process Force, Current, and Vibration Signals
title Identifying Abnormal CFRP Holes Using Both Unsupervised and Supervised Learning Techniques on In-Process Force, Current, and Vibration Signals
title_full Identifying Abnormal CFRP Holes Using Both Unsupervised and Supervised Learning Techniques on In-Process Force, Current, and Vibration Signals
title_fullStr Identifying Abnormal CFRP Holes Using Both Unsupervised and Supervised Learning Techniques on In-Process Force, Current, and Vibration Signals
title_full_unstemmed Identifying Abnormal CFRP Holes Using Both Unsupervised and Supervised Learning Techniques on In-Process Force, Current, and Vibration Signals
title_short Identifying Abnormal CFRP Holes Using Both Unsupervised and Supervised Learning Techniques on In-Process Force, Current, and Vibration Signals
title_sort identifying abnormal cfrp holes using both unsupervised and supervised learning techniques on in-process force, current, and vibration signals
topic Regular Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9062864/
http://dx.doi.org/10.1007/s12541-022-00641-2
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