Roundness and positioning deviation prediction in single point incremental forming using deep learning approaches
This article proposes a deep learning technique for the prevision of the geometric accuracy in single point incremental forming. Moreover, predicting geometric accuracy is one of the most crucial measures of part quality. Accordingly, roundness and positioning deviation are two indicators for measur...
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doaj-bd1b8f5f6d0d496b8efd095d3ee326482020-11-25T03:40:42ZengSAGE PublishingAdvances in Mechanical Engineering1687-81402019-07-011110.1177/1687814019864465Roundness and positioning deviation prediction in single point incremental forming using deep learning approachesSofien Akrichi0Amira Abbassi1Sabeur Abid2Noureddine Ben yahia3Laboratory of Mechanical, Production, and Energy ENSIT, University of Tunis, Tunis, TunisiaLaboratory of Mechanical, Production, and Energy ENSIT, University of Tunis, Tunis, TunisiaLaboratory of Signal, Image Processing and Energy Control, ENSIT, University of Tunis, Tunis, TunisiaLaboratory of Mechanical, Production, and Energy ENSIT, University of Tunis, Tunis, TunisiaThis article proposes a deep learning technique for the prevision of the geometric accuracy in single point incremental forming. Moreover, predicting geometric accuracy is one of the most crucial measures of part quality. Accordingly, roundness and positioning deviation are two indicators for measuring geometric accuracy and presenting two output variables. Two types of artificial intelligence learning approaches, that is, shallow learning and deep learning, are investigated and compared for forecasting geometrical accuracy in the single point incremental forming process. Therefore, the back-propagation neural network with one hidden layer is selected as the representative for shallow learning and deep belief network and stack autoencoder are chosen as the representatives for deep learning. Accurate prediction is closely related to the feature learning of single point incremental forming process parameters. The following six parameters were considered as input variables: sheet thickness, tool path direction, step depth, speed rate, feed rate, and wall angle. The results of these studies indicate that deep learning could be a powerful tool in the current search for geometric accuracy prediction in single point incremental forming. Otherwise, the deep learning approach shows the best performance prediction with shallow learning. In addition, the deep belief network model achieves superior performance accuracy for the prediction of roundness and position deviation in comparison with the stack autoencoder approach.https://doi.org/10.1177/1687814019864465 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Sofien Akrichi Amira Abbassi Sabeur Abid Noureddine Ben yahia |
spellingShingle |
Sofien Akrichi Amira Abbassi Sabeur Abid Noureddine Ben yahia Roundness and positioning deviation prediction in single point incremental forming using deep learning approaches Advances in Mechanical Engineering |
author_facet |
Sofien Akrichi Amira Abbassi Sabeur Abid Noureddine Ben yahia |
author_sort |
Sofien Akrichi |
title |
Roundness and positioning deviation prediction in single point incremental forming using deep learning approaches |
title_short |
Roundness and positioning deviation prediction in single point incremental forming using deep learning approaches |
title_full |
Roundness and positioning deviation prediction in single point incremental forming using deep learning approaches |
title_fullStr |
Roundness and positioning deviation prediction in single point incremental forming using deep learning approaches |
title_full_unstemmed |
Roundness and positioning deviation prediction in single point incremental forming using deep learning approaches |
title_sort |
roundness and positioning deviation prediction in single point incremental forming using deep learning approaches |
publisher |
SAGE Publishing |
series |
Advances in Mechanical Engineering |
issn |
1687-8140 |
publishDate |
2019-07-01 |
description |
This article proposes a deep learning technique for the prevision of the geometric accuracy in single point incremental forming. Moreover, predicting geometric accuracy is one of the most crucial measures of part quality. Accordingly, roundness and positioning deviation are two indicators for measuring geometric accuracy and presenting two output variables. Two types of artificial intelligence learning approaches, that is, shallow learning and deep learning, are investigated and compared for forecasting geometrical accuracy in the single point incremental forming process. Therefore, the back-propagation neural network with one hidden layer is selected as the representative for shallow learning and deep belief network and stack autoencoder are chosen as the representatives for deep learning. Accurate prediction is closely related to the feature learning of single point incremental forming process parameters. The following six parameters were considered as input variables: sheet thickness, tool path direction, step depth, speed rate, feed rate, and wall angle. The results of these studies indicate that deep learning could be a powerful tool in the current search for geometric accuracy prediction in single point incremental forming. Otherwise, the deep learning approach shows the best performance prediction with shallow learning. In addition, the deep belief network model achieves superior performance accuracy for the prediction of roundness and position deviation in comparison with the stack autoencoder approach. |
url |
https://doi.org/10.1177/1687814019864465 |
work_keys_str_mv |
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