Peri-Net-Pro: The neural processes with quantified uncertainty for crack patterns

23 May 2020 Moonseop Kim Guang Lin

This paper uses the peridynamic theory, which is well-suited to crack studies, to predict the crack patterns in a moving disk and classify them according to the modes and finally perform regression analysis. In that way, the crack patterns are obtained according to each mode by Molecular Dynamic (MD) simulation using the peridynamics... (read more)

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