To develop a control strategy for a Metal Inert Gas (M.I.G.) welding system it is necessary to classify several parameters in order to describe the process state. Neural networks have been identified as an appropriate processing technology because of the noisiness of weld data and the non-linearity of the relationships between many of the process parameters. This paper describes the application of neural networks to the classijication of metal transfer mode. We report on the analysis of the data, network selection, network development and evaluation of the final system.
History
School
Design
Published in
IEEE International Conference on Neural Networks Proceedings, Vols 1-6
IEEE International Conference on Neural Networks Proceedings, Vols 1-6
Pages
522 - ?
Citation
VINCENT, D., MCCARDLE, J. and STROUD, R., 1995. The classification of metal transfer mode using neural networks. Presented at the IEEE International Conference on Neural Networks Proceedings, Perth, Western Australia, 27 Nov.-1 Dec.
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