Discontinuity detection in the shield metal arc welding process.
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2017
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Resumo
This work proposes a new methodology for the detection of discontinuities in the weld
bead applied in Shielded Metal ArcWelding (SMAW) processes. The detection system is based on
two sensors—a microphone and piezoelectric—that acquire acoustic emissions generated during the
welding. The feature vectors extracted from the sensor dataset are used to construct classifier models.
The approaches based on Artificial Neural Network (ANN) and Support Vector Machine (SVM)
classifiers are able to identify with a high accuracy the three proposed weld bead classes: desirable
weld bead, shrinkage cavity and burn through discontinuities. Experimental results illustrate the
system’s high accuracy, greater than 90% for each class. A novel Hierarchical Support Vector Machine
(HSVM) structure is proposed to make feasible the use of this system in industrial environments.
This approach presented 96.6% overall accuracy. Given the simplicity of the equipment involved,
this system can be applied in the metal transformation industries.
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Support vector machine, Artificial neural network, Shielded metal arc welding
Citação
COCOTA JÚNIOR, J. A. N. et al. Discontinuity detection in the shield metal arc welding process. Sensors, v. 17, p. 1082, 2017. Disponível em: <http://www.mdpi.com/1424-8220/17/5/1082>. Acesso em: 29 set. 2017.