Eddy current modelling using multi-layer perceptron neural networks for detecting surface cracks

A new method for computing fracture mechanics parameters using computational Eddy Current Modelling by Multi-layer Perceptron Neural Networks for detecting surface cracks. The method is based upon an inverse problem using an Arti?cial Neural Network (ANN) that simulates mapping between Eddy current...

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Main Authors: S. Harzallah, R. Rebhi, M. Chabaat, A. Rabehi
Format: Article
Language:English
Published: Gruppo Italiano Frattura 2018-07-01
Series:Frattura ed Integrità Strutturale
Subjects:
Online Access:http://www.gruppofrattura.it/pdf/rivista/numero45/numero_45_art_12.pdf
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spelling doaj-8a01d37e3718484c887f8117498572082020-11-24T22:31:23ZengGruppo Italiano FratturaFrattura ed Integrità Strutturale1971-89932018-07-01124514715510.3221/IGF-ESIS.45.1210.3221/IGF-ESIS.45.12Eddy current modelling using multi-layer perceptron neural networks for detecting surface cracksS. HarzallahR. RebhiM. ChabaatA. RabehiA new method for computing fracture mechanics parameters using computational Eddy Current Modelling by Multi-layer Perceptron Neural Networks for detecting surface cracks. The method is based upon an inverse problem using an Arti?cial Neural Network (ANN) that simulates mapping between Eddy current signals and crack pro?les. Simultaneous use of ANN by MLP can be very helpful for the localization and the shape classification of defects. On the other side, it can be described as the task of reconstructing the cracks and damage in the plate profile of an頠 inspected� specimen� in� order� to� estimate� its� material properties. This is accomplished by inverting eddy current probe impedance measurements that are recorded as a function of probe position, excitation frequency or both. In eddy current nondestructive evaluation, this is widely recognized as a complex theoretical problem whose solution is likely to have a significant impact on the detection of cracks in materialshttp://www.gruppofrattura.it/pdf/rivista/numero45/numero_45_art_12.pdf3D-FEM-ECArtificial Neural NetworkInverse ProblemsCracksMulti-layer Perceptron
collection DOAJ
language English
format Article
sources DOAJ
author S. Harzallah
R. Rebhi
M. Chabaat
A. Rabehi
spellingShingle S. Harzallah
R. Rebhi
M. Chabaat
A. Rabehi
Eddy current modelling using multi-layer perceptron neural networks for detecting surface cracks
Frattura ed Integrità Strutturale
3D-FEM-EC
Artificial Neural Network
Inverse Problems
Cracks
Multi-layer Perceptron
author_facet S. Harzallah
R. Rebhi
M. Chabaat
A. Rabehi
author_sort S. Harzallah
title Eddy current modelling using multi-layer perceptron neural networks for detecting surface cracks
title_short Eddy current modelling using multi-layer perceptron neural networks for detecting surface cracks
title_full Eddy current modelling using multi-layer perceptron neural networks for detecting surface cracks
title_fullStr Eddy current modelling using multi-layer perceptron neural networks for detecting surface cracks
title_full_unstemmed Eddy current modelling using multi-layer perceptron neural networks for detecting surface cracks
title_sort eddy current modelling using multi-layer perceptron neural networks for detecting surface cracks
publisher Gruppo Italiano Frattura
series Frattura ed Integrità Strutturale
issn 1971-8993
publishDate 2018-07-01
description A new method for computing fracture mechanics parameters using computational Eddy Current Modelling by Multi-layer Perceptron Neural Networks for detecting surface cracks. The method is based upon an inverse problem using an Arti?cial Neural Network (ANN) that simulates mapping between Eddy current signals and crack pro?les. Simultaneous use of ANN by MLP can be very helpful for the localization and the shape classification of defects. On the other side, it can be described as the task of reconstructing the cracks and damage in the plate profile of an頠 inspected� specimen� in� order� to� estimate� its� material properties. This is accomplished by inverting eddy current probe impedance measurements that are recorded as a function of probe position, excitation frequency or both. In eddy current nondestructive evaluation, this is widely recognized as a complex theoretical problem whose solution is likely to have a significant impact on the detection of cracks in materials
topic 3D-FEM-EC
Artificial Neural Network
Inverse Problems
Cracks
Multi-layer Perceptron
url http://www.gruppofrattura.it/pdf/rivista/numero45/numero_45_art_12.pdf
work_keys_str_mv AT sharzallah eddycurrentmodellingusingmultilayerperceptronneuralnetworksfordetectingsurfacecracks
AT rrebhi eddycurrentmodellingusingmultilayerperceptronneuralnetworksfordetectingsurfacecracks
AT mchabaat eddycurrentmodellingusingmultilayerperceptronneuralnetworksfordetectingsurfacecracks
AT arabehi eddycurrentmodellingusingmultilayerperceptronneuralnetworksfordetectingsurfacecracks
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