Classification, identification, and quantitative study of defects in aluminum plates using pulsed alternating current field measurement combined with principal component analysis

IntroductionThis study investigates an approach for defect characterization in non-ferromagnetic materials by combining Pulsed Alternating Current Field Measurement (PACFM) with Principal Component Analysis (PCA). The research demonstrates how this integrated method can effectively classify and quan...

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Main Authors: Qingxiao Kong, Shuwei Pan, Lilong Lin, Xinfeng Li
Format: Article
Language:English
Published: Frontiers Media S.A. 2025-04-01
Series:Frontiers in Materials
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Online Access:https://www.frontiersin.org/articles/10.3389/fmats.2025.1569055/full
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author Qingxiao Kong
Shuwei Pan
Lilong Lin
Xinfeng Li
author_facet Qingxiao Kong
Shuwei Pan
Lilong Lin
Xinfeng Li
author_sort Qingxiao Kong
collection DOAJ
description IntroductionThis study investigates an approach for defect characterization in non-ferromagnetic materials by combining Pulsed Alternating Current Field Measurement (PACFM) with Principal Component Analysis (PCA). The research demonstrates how this integrated method can effectively classify and quantify both surface and subsurface defects through signal processing of PACFM data.MethodsThe PACFM technique was utilized to acquire defect response signals from non-ferromagnetic specimens. Subsequently, PCA was implemented to decompose the multidimensional PACFM datasets into principal components, with each component preserving the most diagnostically significant information. In this analytical framework, the classification of defects was determined by the sign of the mapped value w2 in the PCA eigenvector direction, while the magnitude of w2 exhibited a correlation with subsurface defect burial depths.ResultsThe integrated PACFM-PCA approach successfully discriminated between surface and subsurface defects. The polarity of the principal component w2 served as a reliable feature for defect classification, with positive values consistently corresponding to subsurface defects and negative values indicating surface defects. Furthermore, a robust quadratic relationship correlation was established between the eigenspace coordinates of subsurface defect signals and their respective burial depths, enabling accurate quantitative assessment of burial depth.DiscussionThe integration of PACFM with PCA provides a robust framework for defect analysis in non-ferromagnetic materials. This synergistic approach demonstrates significant capability in extracting and quantifying defect signatures from complex response signals, highlighting its considerable potential for non-destructive testing (NDT) applications. Future work could explore its adaptability to more intricate defect geometries.
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spelling doaj-art-d127dbf7de484db0ab5355594529a7f72025-08-20T02:28:02ZengFrontiers Media S.A.Frontiers in Materials2296-80162025-04-011210.3389/fmats.2025.15690551569055Classification, identification, and quantitative study of defects in aluminum plates using pulsed alternating current field measurement combined with principal component analysisQingxiao KongShuwei PanLilong LinXinfeng LiIntroductionThis study investigates an approach for defect characterization in non-ferromagnetic materials by combining Pulsed Alternating Current Field Measurement (PACFM) with Principal Component Analysis (PCA). The research demonstrates how this integrated method can effectively classify and quantify both surface and subsurface defects through signal processing of PACFM data.MethodsThe PACFM technique was utilized to acquire defect response signals from non-ferromagnetic specimens. Subsequently, PCA was implemented to decompose the multidimensional PACFM datasets into principal components, with each component preserving the most diagnostically significant information. In this analytical framework, the classification of defects was determined by the sign of the mapped value w2 in the PCA eigenvector direction, while the magnitude of w2 exhibited a correlation with subsurface defect burial depths.ResultsThe integrated PACFM-PCA approach successfully discriminated between surface and subsurface defects. The polarity of the principal component w2 served as a reliable feature for defect classification, with positive values consistently corresponding to subsurface defects and negative values indicating surface defects. Furthermore, a robust quadratic relationship correlation was established between the eigenspace coordinates of subsurface defect signals and their respective burial depths, enabling accurate quantitative assessment of burial depth.DiscussionThe integration of PACFM with PCA provides a robust framework for defect analysis in non-ferromagnetic materials. This synergistic approach demonstrates significant capability in extracting and quantifying defect signatures from complex response signals, highlighting its considerable potential for non-destructive testing (NDT) applications. Future work could explore its adaptability to more intricate defect geometries.https://www.frontiersin.org/articles/10.3389/fmats.2025.1569055/fullalternating current field measurementpulsed alternating current field measurementprincipal component analysissurface defectssubsurface defectsnon-ferromagnetic materials
spellingShingle Qingxiao Kong
Shuwei Pan
Lilong Lin
Xinfeng Li
Classification, identification, and quantitative study of defects in aluminum plates using pulsed alternating current field measurement combined with principal component analysis
Frontiers in Materials
alternating current field measurement
pulsed alternating current field measurement
principal component analysis
surface defects
subsurface defects
non-ferromagnetic materials
title Classification, identification, and quantitative study of defects in aluminum plates using pulsed alternating current field measurement combined with principal component analysis
title_full Classification, identification, and quantitative study of defects in aluminum plates using pulsed alternating current field measurement combined with principal component analysis
title_fullStr Classification, identification, and quantitative study of defects in aluminum plates using pulsed alternating current field measurement combined with principal component analysis
title_full_unstemmed Classification, identification, and quantitative study of defects in aluminum plates using pulsed alternating current field measurement combined with principal component analysis
title_short Classification, identification, and quantitative study of defects in aluminum plates using pulsed alternating current field measurement combined with principal component analysis
title_sort classification identification and quantitative study of defects in aluminum plates using pulsed alternating current field measurement combined with principal component analysis
topic alternating current field measurement
pulsed alternating current field measurement
principal component analysis
surface defects
subsurface defects
non-ferromagnetic materials
url https://www.frontiersin.org/articles/10.3389/fmats.2025.1569055/full
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