Arc-welding spectroscopic monitoring based on feature selection and neural networks

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Abstract

A new spectral processing technique designed for application in the on-line detection and classification of arc-welding defects is presented in this paper. A non-invasive fiber sensor embedded within a TIG torch collects the plasma radiation originated during the welding process. The spectral information is then processed in two consecutive stages. A compression algorithm is first applied to the data, allowing real-time analysis. The selected spectral bands are then used to feed a classification algorithm, which will be demonstrated to provide an efficient weld defect detection and classification. The results obtained with the proposed technique are compared to a similar processing scheme presented in previous works, giving rise to an improvement in the performance of the monitoring system. © 2008 by the authors; license Molecular Diversity Preservation International.

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Garcia-Allende, P. B., Mirapeix, J., Conde, O. M., Cobo, A., & Lopez-Higuera, J. M. (2008). Arc-welding spectroscopic monitoring based on feature selection and neural networks. Sensors, 8(10), 6496–6506. https://doi.org/10.3390/s8106496

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