Title: Vision-based neuro-fuzzy control of weld penetration in gas tungsten arc welding of thin sheets
Authors: Chuan Song Wu, J.Q. Gao
Addresses: Institute of Materials Joining, Shandong University, Jinan 250061, China. ' Institute of Materials Joining, Shandong University, Jinan 250061, China
Abstract: This paper develops a vision-based neuro-fuzzy system to control the weld joint penetration in Gas Tungsten Arc Welding (GTAW) of thin sheets. To this end, a camera equipped with a specially designed composite light-filter is used to observe the weld pool from the topside of the workpiece so that comparatively distinct images of the weld pool are obtained. As the Backside weld Width (BW) reflects the degree of the weld joint penetration, a model describing the relationship between the weld pool surface geometrical parameters (which can be extracted from the weld pool images) and the backside weld width is constructed. A neuro-fuzzy controller and a learning algorithm are developed to address dynamic and non-linear characteristics of the welding process. The controller can learn fuzzy rules and adjust the fuzzy rules with the variation of welding conditions automatically. Simulation and control tests demonstrated the effectiveness of the developed control system.
Keywords: neuro-fuzzy control; vision sensors; modelling; weld penetration; gas tungsten arc welding; GTAW; thin sheets; neural networks; fuzzy control; fuzzy logic; weld pool; simulation.
DOI: 10.1504/IJMIC.2006.010090
International Journal of Modelling, Identification and Control, 2006 Vol.1 No.2, pp.126 - 132
Published online: 16 Jun 2006 *
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