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딥러닝(Deep Learning)을 이용한 GMA 용접에서 이면비드 생성 유무 판단 알고리즘에 관한 연구A Study on the Algorithm for Determining Back Bead Generation in GMA Welding Using Deep Learning

Other Titles
A Study on the Algorithm for Determining Back Bead Generation in GMA Welding Using Deep Learning
Authors
김민석신승민김동현이세헌
Issue Date
Apr-2018
Publisher
대한용접접합학회
Keywords
Gas metal arc welding; Back bead; Machine learning; Deep learning; Deep neural network Artificial neural network; Time series data
Citation
대한용접접합학회지, v.36, no.2, pp.74 - 81
Indexed
KCI
Journal Title
대한용접접합학회지
Volume
36
Number
2
Start Page
74
End Page
81
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/2711
DOI
10.5781/JWJ.2018.36.2.11
ISSN
2466-2232
Abstract
In arc welding, the generation of back bead is considered as one of the main factors that determine the mechanical characteristics of the welded structure. The existence or shape of the beads can be observed by destructive inspection, which cuts the cross section, or non-destructive inspection, which uses visual or ultrasonic waves. In recent manufacturing processes, the demands of high quality and factory automation are continuously presented, and the importance of research on a more efficient real time diagnosis system that can reduce the time and cost for the detection of structural defects of welds is becoming higher. In this study, an algorithm is developed to determine the back bead generation in real time by using current and voltage signals measured in real time by applying deep learning which is one of artificial intelligence techniques. The result proposes a system to determine whether back bead is generated or not, using deep neural network, a type of deep learning.
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서울 공과대학 > 서울 기계공학부 > 1. Journal Articles

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