Machine learning reveals strain-rate-dependent predictability of discrete dislocation plasticity
Marcin Mińkowski,
David Kurunczi-Papp,
Lasse Laurson
Abstract:Predicting the behaviour of complex systems is one of the main goals of science. An important example is plastic deformation of micron-scale crystals, a process mediated by collective dynamics of dislocations, manifested as broadly distributed strain bursts and significant sample-to-sample variations in the response to applied loading. Here, by combining large-scale discrete dislocation dynamics simulations and machine learning, we study the problem of predicting the fluctuating stress-strain curves of individ… Show more
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