Identification of solidification cracking using multiple sensors and deep learning in laser overlap welded Al 6000 alloy

Author:

Shin Jeonghun12ORCID,Kang Sanghoon1ORCID,Kim Cheolhee1ORCID,Hong Sukjoon2ORCID,Kang Minjung1ORCID

Affiliation:

1. Advanced Joining and Additive Manufacturing R&D Department, Korea Institute of Industrial Technology 1 , Incheon 21999, Korea

2. Department of Mechanical Engineering, BK21 FOUR ERICA-ACE Center, Hanyang University 2 , Ansan 15588, Korea

Abstract

Solidification cracking, one of the most critical weld defects in laser welding of Al 6000 alloys, occurs at the final stage of solidification owing to shrinkage of the weld metal and deteriorates the joint strength and integrity. The filler metal can control the chemical composition of the weld metal, which mitigates solidification cracking. However, the chemical composition is difficult to control in autogenous laser welding. Temporal and spatial laser beam modulations have been introduced to control solidification cracking in autogenous laser welding because weld morphology is one of the factors that influences the initiation and propagation of solidification cracking. Solidification cracks generate thermal discontinuities and visual flaws on the bead surface. In this study, a high-speed infrared camera and a coaxial charge-coupled device camera with an auxiliary illumination laser (808 nm) were employed to identify solidification cracking during laser welding. Deep learning models, developed using two sensor images of a solidified bead, provided location-wise crack formation information. The multisensor-based convolutional neural network models achieved an impressive accuracy of 99.31% in predicting the crack locations. Thus, applying deep learning models expands the capability of predicting solidification cracking, including previously undetectable internal cracks.

Funder

Ministry of Trade, Industry and Energy

Publisher

Laser Institute of America

Subject

Instrumentation,Biomedical Engineering,Atomic and Molecular Physics, and Optics,Electronic, Optical and Magnetic Materials

Reference34 articles.

1. The latest trends in aluminum alloy sheets for automotive body panels;Kobelco Technol. Rev.,2008

2. Technical trends in aluminum alloy sheets for automotive body panels;Kobelco Technol. Rev.,2020

3. Developments of Audi space frame technology for automotive body aluminum construction;Appl. Mech. Mater.,2020

4. Advanced lightweight materials for automobiles: A review;Mater. Des.,2022

5. Hot-shortness of the aluminium-silicon alloys of commercial purity;J. Inst. Met.,1946

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