Entire-Process Simulation of Friction Stir Welding — Part 2: Implementation of Neural Networks

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Abstract

To further understand the structure-parameter-property relationships of friction stir welded aluminum alloy joints, a nested neural network was proposed to map the macro- and microstructural response. The uncoupled effect of each primitive parameter on the joint performance was depicted. Reducing heat input and keeping an adequate load-bearing area of the welding nugget zone were proven to be the sufficient and necessary conditions to obtain high load-bearing performance. The entire-process simulation strategy showed great potential for prediction and optimization of the macro- and microstructural response of complex and large components.

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Xie, Y., Meng, X., & Huang, Y. (2022). Entire-Process Simulation of Friction Stir Welding — Part 2: Implementation of Neural Networks. Welding Journal, 101(6), 172S-177S. https://doi.org/10.29391/2022.101.013

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