Supervised and non-supervised AE data classification of nanomodified CFRP during DCB tests

The aim of the paper is to use acoustic emissions to study the effect of electrospun nylon 6,6 Nanofibrous mat on carbon-epoxy composites during Double Cantilever beam (DCB) tests. In order to recognize the effect of the nanofibres and to detect different damage mechanisms, k-means clustering of aco...

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Main Authors: Fallahi N., Nardoni G., Heidary Hossein, Palazzetti R., Yan X.T., Zucchelli A.
Format: Article
Language:English
Published: University of Belgrade - Faculty of Mechanical Engineering, Belgrade 2016-01-01
Series:FME Transactions
Subjects:
Online Access:https://scindeks-clanci.ceon.rs/data/pdf/1451-2092/2016/1451-20921604415F.pdf
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spelling doaj-b05cf8bd45794de882967fe518f8edce2020-11-25T02:57:30ZengUniversity of Belgrade - Faculty of Mechanical Engineering, BelgradeFME Transactions1451-20922406-128X2016-01-014444154211451-20921604415FSupervised and non-supervised AE data classification of nanomodified CFRP during DCB testsFallahi N.0Nardoni G.1Heidary Hossein2Palazzetti R.3Yan X.T.4Zucchelli A.5I & T Nardoni Institute, Brescia, ItalyI & T Nardoni Institute, Brescia, ItalyTafresh University of Technology, Tafresh, IranUniversity of Strathclyde, DMEM department, Glasgow, UKUniversity of Strathclyde, Glasgow, UKUniversity of Bologna, Bologna, ItalyThe aim of the paper is to use acoustic emissions to study the effect of electrospun nylon 6,6 Nanofibrous mat on carbon-epoxy composites during Double Cantilever beam (DCB) tests. In order to recognize the effect of the nanofibres and to detect different damage mechanisms, k-means clustering of acoustic emission signals applied to rise time, count, energy, duration and amplitude of the events is used. Supervised neural network (NN) is then applied to verify clustered signals. Results showed that clustered acoustic emission signals are a reliable tool to detect different damage mechanisms; neural network showed the method has a 99% of accuracy.https://scindeks-clanci.ceon.rs/data/pdf/1451-2092/2016/1451-20921604415F.pdfacoustic emissionscarbon-epoxy compositeselectrospinningk-meansartificial neural network
collection DOAJ
language English
format Article
sources DOAJ
author Fallahi N.
Nardoni G.
Heidary Hossein
Palazzetti R.
Yan X.T.
Zucchelli A.
spellingShingle Fallahi N.
Nardoni G.
Heidary Hossein
Palazzetti R.
Yan X.T.
Zucchelli A.
Supervised and non-supervised AE data classification of nanomodified CFRP during DCB tests
FME Transactions
acoustic emissions
carbon-epoxy composites
electrospinning
k-means
artificial neural network
author_facet Fallahi N.
Nardoni G.
Heidary Hossein
Palazzetti R.
Yan X.T.
Zucchelli A.
author_sort Fallahi N.
title Supervised and non-supervised AE data classification of nanomodified CFRP during DCB tests
title_short Supervised and non-supervised AE data classification of nanomodified CFRP during DCB tests
title_full Supervised and non-supervised AE data classification of nanomodified CFRP during DCB tests
title_fullStr Supervised and non-supervised AE data classification of nanomodified CFRP during DCB tests
title_full_unstemmed Supervised and non-supervised AE data classification of nanomodified CFRP during DCB tests
title_sort supervised and non-supervised ae data classification of nanomodified cfrp during dcb tests
publisher University of Belgrade - Faculty of Mechanical Engineering, Belgrade
series FME Transactions
issn 1451-2092
2406-128X
publishDate 2016-01-01
description The aim of the paper is to use acoustic emissions to study the effect of electrospun nylon 6,6 Nanofibrous mat on carbon-epoxy composites during Double Cantilever beam (DCB) tests. In order to recognize the effect of the nanofibres and to detect different damage mechanisms, k-means clustering of acoustic emission signals applied to rise time, count, energy, duration and amplitude of the events is used. Supervised neural network (NN) is then applied to verify clustered signals. Results showed that clustered acoustic emission signals are a reliable tool to detect different damage mechanisms; neural network showed the method has a 99% of accuracy.
topic acoustic emissions
carbon-epoxy composites
electrospinning
k-means
artificial neural network
url https://scindeks-clanci.ceon.rs/data/pdf/1451-2092/2016/1451-20921604415F.pdf
work_keys_str_mv AT fallahin supervisedandnonsupervisedaedataclassificationofnanomodifiedcfrpduringdcbtests
AT nardonig supervisedandnonsupervisedaedataclassificationofnanomodifiedcfrpduringdcbtests
AT heidaryhossein supervisedandnonsupervisedaedataclassificationofnanomodifiedcfrpduringdcbtests
AT palazzettir supervisedandnonsupervisedaedataclassificationofnanomodifiedcfrpduringdcbtests
AT yanxt supervisedandnonsupervisedaedataclassificationofnanomodifiedcfrpduringdcbtests
AT zucchellia supervisedandnonsupervisedaedataclassificationofnanomodifiedcfrpduringdcbtests
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