Prediction of Bead Geometry Using a Two-Stage SVM–ANN Algorithm for Automated Tungsten Inert Gas (TIG) Welds

Prediction of weld bead geometry is critical for any welding process, since several mechanical properties of the weldment depend on this. Researchers have used artificial neural networks (ANNs) to predict the bead geometry based on the input parameters for a welding process; however, the number of h...

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Main Authors: Rohit Kshirsagar, Steve Jones, Jonathan Lawrence, Jim Tabor
Format: Article
Language:English
Published: MDPI AG 2019-05-01
Series:Journal of Manufacturing and Materials Processing
Subjects:
Online Access:https://www.mdpi.com/2504-4494/3/2/39
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spelling doaj-1287827c76544fc1a628c1b85cda1e742020-11-25T00:52:59ZengMDPI AGJournal of Manufacturing and Materials Processing2504-44942019-05-01323910.3390/jmmp3020039jmmp3020039Prediction of Bead Geometry Using a Two-Stage SVM–ANN Algorithm for Automated Tungsten Inert Gas (TIG) WeldsRohit Kshirsagar0Steve Jones1Jonathan Lawrence2Jim Tabor3Institute for Advanced Manufacturing and Engineering, Coventry University, Coventry CV6 5LZ, UKNuclear Advanced Manufacturing Research Centre, University of Sheffield, Rotherham S60 5WG, UKInstitute for Advanced Manufacturing and Engineering, Coventry University, Coventry CV6 5LZ, UKsigma Maths and Stats Support Centre, Coventry University, Coventry CV1 5FB, UKPrediction of weld bead geometry is critical for any welding process, since several mechanical properties of the weldment depend on this. Researchers have used artificial neural networks (ANNs) to predict the bead geometry based on the input parameters for a welding process; however, the number of hidden layers used in these ANNs are limited to one due to the small amount of data usually available through experiments. This results in a reduction in the accuracy of prediction. Such ANNs are also incapable of capturing sudden changes in the input−output trends; for example, where a wide range of heat inputs results in flat crown (zero crown height), but any further reduction in the current sharply increases the crown height. In this study, it was found that above mentioned issues can be resolved on using a two-stage algorithm consisting of support vector machine (SVM) and an ANN. The two-stage SVM−ANN algorithm significantly improved the accuracy of prediction and could be used as a replacement for the multiple hidden layer ANN, without requiring additional data for training. The improvement in prediction was evident near regions of sudden changes in the input−output correlation and can lead to a better prediction of mechanical properties.https://www.mdpi.com/2504-4494/3/2/39bead geometry predictionsupport vector machinesartificial neural networksdata classification
collection DOAJ
language English
format Article
sources DOAJ
author Rohit Kshirsagar
Steve Jones
Jonathan Lawrence
Jim Tabor
spellingShingle Rohit Kshirsagar
Steve Jones
Jonathan Lawrence
Jim Tabor
Prediction of Bead Geometry Using a Two-Stage SVM–ANN Algorithm for Automated Tungsten Inert Gas (TIG) Welds
Journal of Manufacturing and Materials Processing
bead geometry prediction
support vector machines
artificial neural networks
data classification
author_facet Rohit Kshirsagar
Steve Jones
Jonathan Lawrence
Jim Tabor
author_sort Rohit Kshirsagar
title Prediction of Bead Geometry Using a Two-Stage SVM–ANN Algorithm for Automated Tungsten Inert Gas (TIG) Welds
title_short Prediction of Bead Geometry Using a Two-Stage SVM–ANN Algorithm for Automated Tungsten Inert Gas (TIG) Welds
title_full Prediction of Bead Geometry Using a Two-Stage SVM–ANN Algorithm for Automated Tungsten Inert Gas (TIG) Welds
title_fullStr Prediction of Bead Geometry Using a Two-Stage SVM–ANN Algorithm for Automated Tungsten Inert Gas (TIG) Welds
title_full_unstemmed Prediction of Bead Geometry Using a Two-Stage SVM–ANN Algorithm for Automated Tungsten Inert Gas (TIG) Welds
title_sort prediction of bead geometry using a two-stage svm–ann algorithm for automated tungsten inert gas (tig) welds
publisher MDPI AG
series Journal of Manufacturing and Materials Processing
issn 2504-4494
publishDate 2019-05-01
description Prediction of weld bead geometry is critical for any welding process, since several mechanical properties of the weldment depend on this. Researchers have used artificial neural networks (ANNs) to predict the bead geometry based on the input parameters for a welding process; however, the number of hidden layers used in these ANNs are limited to one due to the small amount of data usually available through experiments. This results in a reduction in the accuracy of prediction. Such ANNs are also incapable of capturing sudden changes in the input−output trends; for example, where a wide range of heat inputs results in flat crown (zero crown height), but any further reduction in the current sharply increases the crown height. In this study, it was found that above mentioned issues can be resolved on using a two-stage algorithm consisting of support vector machine (SVM) and an ANN. The two-stage SVM−ANN algorithm significantly improved the accuracy of prediction and could be used as a replacement for the multiple hidden layer ANN, without requiring additional data for training. The improvement in prediction was evident near regions of sudden changes in the input−output correlation and can lead to a better prediction of mechanical properties.
topic bead geometry prediction
support vector machines
artificial neural networks
data classification
url https://www.mdpi.com/2504-4494/3/2/39
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