RBF-NN-based model for prediction of weld bead geometry in Shielded Metal Arc Welding (SMAW)

Welding processes are considered as an essential component in most of industrial manufacturing and for structural applications. Among the most widely used welding processes is the shielded metal arc welding (SMAW) due to its versatility and simplicity. In fact, the welding process is predominant pro...

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Main Authors: Ahmed, A.N., Noor, C.W.M., Allawi, M.F., El-Shafie, A.
Format: Article
Language:English
Published: 2018
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spelling my.uniten.dspace-106662018-11-14T01:02:30Z RBF-NN-based model for prediction of weld bead geometry in Shielded Metal Arc Welding (SMAW) Ahmed, A.N. Noor, C.W.M. Allawi, M.F. El-Shafie, A. Welding processes are considered as an essential component in most of industrial manufacturing and for structural applications. Among the most widely used welding processes is the shielded metal arc welding (SMAW) due to its versatility and simplicity. In fact, the welding process is predominant procedure in the maintenance and repair industry, construction of steel structures and also industrial fabrication. The most important physical characteristics of the weldment are the bead geometry which includes bead height and width and the penetration. Different methods and approaches have been developed to achieve the acceptable values of bead geometry parameters. This study presents artificial intelligence techniques (AIT): For example, radial basis function neural network (RBF-NN) and multilayer perceptron neural network (MLP-NN) models were developed to predict the weld bead geometry. A number of 33 plates of mild steel specimens that have undergone SMAW process are analyzed for their weld bead geometry. The input parameters of the SMAW consist of welding current (A), arc length (mm), welding speed (mm/min), diameter of electrode (mm) and welding gap (mm). The outputs of the AIT models include property parameters, namely penetration, bead width and reinforcement. The results showed outstanding level of accuracy utilizing RBF-NN in simulating the weld geometry and very satisfactorily to predict all parameters in comparison with the MLP-NN model. © 2016, The Natural Computing Applications Forum. 2018-11-07T08:19:22Z 2018-11-07T08:19:22Z 2018 Article 10.1007/s00521-016-2496-0 en
institution Universiti Tenaga Nasional
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language English
description Welding processes are considered as an essential component in most of industrial manufacturing and for structural applications. Among the most widely used welding processes is the shielded metal arc welding (SMAW) due to its versatility and simplicity. In fact, the welding process is predominant procedure in the maintenance and repair industry, construction of steel structures and also industrial fabrication. The most important physical characteristics of the weldment are the bead geometry which includes bead height and width and the penetration. Different methods and approaches have been developed to achieve the acceptable values of bead geometry parameters. This study presents artificial intelligence techniques (AIT): For example, radial basis function neural network (RBF-NN) and multilayer perceptron neural network (MLP-NN) models were developed to predict the weld bead geometry. A number of 33 plates of mild steel specimens that have undergone SMAW process are analyzed for their weld bead geometry. The input parameters of the SMAW consist of welding current (A), arc length (mm), welding speed (mm/min), diameter of electrode (mm) and welding gap (mm). The outputs of the AIT models include property parameters, namely penetration, bead width and reinforcement. The results showed outstanding level of accuracy utilizing RBF-NN in simulating the weld geometry and very satisfactorily to predict all parameters in comparison with the MLP-NN model. © 2016, The Natural Computing Applications Forum.
format Article
author Ahmed, A.N.
Noor, C.W.M.
Allawi, M.F.
El-Shafie, A.
spellingShingle Ahmed, A.N.
Noor, C.W.M.
Allawi, M.F.
El-Shafie, A.
RBF-NN-based model for prediction of weld bead geometry in Shielded Metal Arc Welding (SMAW)
author_facet Ahmed, A.N.
Noor, C.W.M.
Allawi, M.F.
El-Shafie, A.
author_sort Ahmed, A.N.
title RBF-NN-based model for prediction of weld bead geometry in Shielded Metal Arc Welding (SMAW)
title_short RBF-NN-based model for prediction of weld bead geometry in Shielded Metal Arc Welding (SMAW)
title_full RBF-NN-based model for prediction of weld bead geometry in Shielded Metal Arc Welding (SMAW)
title_fullStr RBF-NN-based model for prediction of weld bead geometry in Shielded Metal Arc Welding (SMAW)
title_full_unstemmed RBF-NN-based model for prediction of weld bead geometry in Shielded Metal Arc Welding (SMAW)
title_sort rbf-nn-based model for prediction of weld bead geometry in shielded metal arc welding (smaw)
publishDate 2018
_version_ 1644495018831904768
score 13.160551