Estimation of weld bead geometry of gas metal arc welding process using artificial neural network

A single weld bead geometry has significant effects on the mechanical properties of the bead, layer thickness, quality of surface bead and dimensional accuracy of the metallic parts of the welding. This research presents the application of an artificial intelligence approach using artificial neural...

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Main Authors: Idris, Mohamad Nizam, Zaharuddin, Mohd. Faridh Ahmad, Shin, Seungmin, Rhee, Sehun
Format: Article
Published: Penerbit UTM Press 2018
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Online Access:http://eprints.utm.my/id/eprint/82118/
https://jurnalmekanikal.utm.my/index.php/jurnalmekanikal/article/view/330
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spelling my.utm.821182019-10-30T03:50:55Z http://eprints.utm.my/id/eprint/82118/ Estimation of weld bead geometry of gas metal arc welding process using artificial neural network Idris, Mohamad Nizam Zaharuddin, Mohd. Faridh Ahmad Shin, Seungmin Rhee, Sehun TJ Mechanical engineering and machinery A single weld bead geometry has significant effects on the mechanical properties of the bead, layer thickness, quality of surface bead and dimensional accuracy of the metallic parts of the welding. This research presents the application of an artificial intelligence approach using artificial neural network (ANN) and conventional multiple regression analysis for predicting the weld bead geometry in gas metal arc welding (GMAW) in which galvanized steel was the material used for the experiment. The developed models for the study were based on the experimental data. The welding voltage, welding current, welding speed and wire feed rate have been considered as the input parameters and the bead width (W) and height (H) are the output parameters in developing the models. In order to demonstrate which method performs better in terms of higher accuracy and prediction, three performance measures related to the coefficient of determination (R2), root mean square error (RMSE) and mean absolute percentage error (MAPE) were applied to the models and later compared. The results from the analysis show that the ANN models are more accurate compared to multiple regression approach in predicting the weld bead geometry due to its great capacity in approximating the non-linear process of the system. Penerbit UTM Press 2018-12 Article PeerReviewed Idris, Mohamad Nizam and Zaharuddin, Mohd. Faridh Ahmad and Shin, Seungmin and Rhee, Sehun (2018) Estimation of weld bead geometry of gas metal arc welding process using artificial neural network. Jurnal Mekanikal, 41 (2). pp. 23-30. ISSN 2289-3873 https://jurnalmekanikal.utm.my/index.php/jurnalmekanikal/article/view/330
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic TJ Mechanical engineering and machinery
spellingShingle TJ Mechanical engineering and machinery
Idris, Mohamad Nizam
Zaharuddin, Mohd. Faridh Ahmad
Shin, Seungmin
Rhee, Sehun
Estimation of weld bead geometry of gas metal arc welding process using artificial neural network
description A single weld bead geometry has significant effects on the mechanical properties of the bead, layer thickness, quality of surface bead and dimensional accuracy of the metallic parts of the welding. This research presents the application of an artificial intelligence approach using artificial neural network (ANN) and conventional multiple regression analysis for predicting the weld bead geometry in gas metal arc welding (GMAW) in which galvanized steel was the material used for the experiment. The developed models for the study were based on the experimental data. The welding voltage, welding current, welding speed and wire feed rate have been considered as the input parameters and the bead width (W) and height (H) are the output parameters in developing the models. In order to demonstrate which method performs better in terms of higher accuracy and prediction, three performance measures related to the coefficient of determination (R2), root mean square error (RMSE) and mean absolute percentage error (MAPE) were applied to the models and later compared. The results from the analysis show that the ANN models are more accurate compared to multiple regression approach in predicting the weld bead geometry due to its great capacity in approximating the non-linear process of the system.
format Article
author Idris, Mohamad Nizam
Zaharuddin, Mohd. Faridh Ahmad
Shin, Seungmin
Rhee, Sehun
author_facet Idris, Mohamad Nizam
Zaharuddin, Mohd. Faridh Ahmad
Shin, Seungmin
Rhee, Sehun
author_sort Idris, Mohamad Nizam
title Estimation of weld bead geometry of gas metal arc welding process using artificial neural network
title_short Estimation of weld bead geometry of gas metal arc welding process using artificial neural network
title_full Estimation of weld bead geometry of gas metal arc welding process using artificial neural network
title_fullStr Estimation of weld bead geometry of gas metal arc welding process using artificial neural network
title_full_unstemmed Estimation of weld bead geometry of gas metal arc welding process using artificial neural network
title_sort estimation of weld bead geometry of gas metal arc welding process using artificial neural network
publisher Penerbit UTM Press
publishDate 2018
url http://eprints.utm.my/id/eprint/82118/
https://jurnalmekanikal.utm.my/index.php/jurnalmekanikal/article/view/330
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score 13.159267