LEARNING
Online monitoring of weld defects for short-circuit gas metal arc welding based on the self-organizing feature map neural networks
Di Li, Feng Ye
- Year
- 2000
- Citations
- 29
Abstract
A method for automatic detection of weld defects of short-circuit gas metal arc welding is presented. It is based on the extraction of arc signal features as well as classification of the obtained features using self-organizing feature map (SOM) neural networks in order to get the weld quality information, for example, to determine if there is a defect in the product. This is important for the online monitoring of weld quality especially in robotic welding and lays the foundation for further real-time control of weld quality.
Keywords
WeldingSelf-organizing mapArtificial neural networkFeature extractionArc weldingGas metal arc weldingFeature (linguistics)Robot weldingComputer scienceArtificial intelligence
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