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2023 | OriginalPaper | Chapter

13. The Effect of Welding Parameters of Flux Core Arc Welding by Utilizing Robotic Welding

Authors : Intan Ramli, Mohd Faizal Abdul Razak, Mohd Zaifulrizal Zainol, Shaiful Bakri Ismail

Published in: Materials and Technologies for Future Advancement

Publisher: Springer Nature Switzerland

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Abstract

Circular welding is a technique that is widely used in fabrication. The result of welding is depending on the welding parameter setting and there is less study on the effect of welding parameters when the weaving technique is applied. In this study, a robotic arm with application of flux core arc welding (FCAW) is applied with nine different parameters settings. Microstructure testing and Vickers testing were applied to determine the effect of the welding parameter on the bead geometry hardness after the welding process to the material.

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Metadata
Title
The Effect of Welding Parameters of Flux Core Arc Welding by Utilizing Robotic Welding
Authors
Intan Ramli
Mohd Faizal Abdul Razak
Mohd Zaifulrizal Zainol
Shaiful Bakri Ismail
Copyright Year
2023
DOI
https://doi.org/10.1007/978-3-031-38993-1_13

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