Study on electric pulse-assisted plastic deformation behavior of 5182-O aluminum alloy
Hongchun Shang,
Songchen Wang,
Yanshan Lou
Abstract:Plastic model-based neural networks are emerging phenomenological models with excellent calibration accuracy and interpretability of parameters, and they do not significantly increase the finite element calculation time of neural network models with a simple structure optimized by the algorithm. Because aluminum and magnesium have low ductility at room temperature, complex components made from these alloys need to be forged at high temperatures. In comparison with traditional thermoforming, advanced current-as… Show more
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