Kershaw et al., 2024 - Google Patents
Advanced process characterization and machine learning-based correlations between interdiffusion layer and expulsion in spot weldingKershaw et al., 2024
View PDF- Document ID
- 14623426867190336957
- Author
- Kershaw J
- Ghassemi-Armaki H
- Carlson B
- Wang P
- Publication year
- Publication venue
- Journal of Manufacturing Processes
External Links
Snippet
Over the past decades, substantial endeavors have been dedicated to unraveling the intricacies inherent to Resistance Spot Welding (RSW). However, a comprehensive and consensual understanding of the RSW process physics is still lacking, including the exact …
- 238000003466 welding 0 title abstract description 89
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