Sarkar et al., 2021 - Google Patents

Machine learning method to predict and analyse transient temperature in submerged arc welding

Sarkar et al., 2021

Document ID
12835096452311774217
Author
Sarkar S
Das A
Paul S
Mali K
Ghosh A
Sarkar R
Kumar A
Publication year
Publication venue
Measurement

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Heat distribution in the submerged arc welding (SAW) process has a significant impact on the quality of welds. In this paper, a machine learning method is proposed to predict and analyze temperature in the SAW process. Thermal video data is obtained from an infrared …
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