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http://dx.doi.org/10.5781/JWJ.2017.35.2.7

An Experiment Study for S/N Ratio of Bead Geometry for Guaranteeing the Welding Quality in Bellows Weld Joint  

Lee, Jong-Pyo (Department of Machanical Engineering, Mokpo University)
Kim, Ill-Soo (Department of Machanical Engineering, Mokpo University)
Park, Min-Ho (Department of Machanical Engineering, Mokpo University)
Jin, Byeong-Ju (Department of Machanical Engineering, Mokpo University)
Kim, In-Ju (Green Manufacturing Process R&D Center, Korea Institute of Industrial Technology)
Kim, Ji-Sun (Green Manufacturing Process R&D Center, Korea Institute of Industrial Technology)
Publication Information
Journal of Welding and Joining / v.35, no.2, 2017 , pp. 43-51 More about this Journal
Abstract
The automatic welding systems, have received much attention in recent years, because they are highly suitable not only to increase the quality and productivity, but also to decrease manufacturing time and cost for a given product. Automatic welding work in semiconductor or space industry to be carried out in pipe line and butt joint mostly and plasma arc welding(PAW) is actively applied. To get the desired quality welds in automated welding system is challenging, a mathematical model is needed that has complete control over the relevant process parameters in order to obtain the required mechanical properties. However, In various industries the welding process mathematical model is not fully formulated for the process parameter and on the welding conditions, therefore only partial variables can be predicted. Therefore, this paper investigates the interaction between the welding parameters and mechanical properties for predicting the weld bead geometry by analyzing the S/N ratio.
Keywords
Plasma welding; Full factorial design; S/N ratio; Optimization; Vacuum bellows; Tension test;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
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