Development of Machine Learning Models to Predict the Weld Defect Using Resistance Spot Welding Experimental Data
Santhosh Mathi,
Pedro Bamberg,
Alexander Schiebahn
et al.
Abstract:Advanced materials and automated processes in manufacturing pose a challenge in terms of adaptability. Introduction of 3rd-generation advanced high strength (3rd-gen AHSS) steels aimed for weight reduction in the automotive without compromising its strength and efficient fuel consumption. Nevertheless, welding 3rd-gen AHSS using resistance spot welding (RSW) is often affected by liquid metal embrittlement (LME) or other quality matters. Identifying the process window to control and produce defect-free welds, r… Show more
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