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Probing the transition from dislocation jamming to pinning by machine learning

机译:通过机器学习探讨了从脱位干扰到钉扎的过渡

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Collective motion of dislocations is governed by the obstacles they encounter. In pure crystals, dislocations form complex structures as they become jammed by their anisotropic shear stress fields. On the other hand, introducing disorder to the crystal causes dislocations to pin to these impeding elements and, thus, leads to a competition between dislocation-dislocation and dislocation-disorder interactions. Previous studies have shown that, depending on the dominating interaction, the mechanical response and the way the crystal yields change.Here we employ three-dimensional discrete dislocation dynamics simulations with varying density of fully coherent precipitates to study this phase transition ? from jamming to pinning ? using unsupervised machine learning. By constructing descriptors characterizing the evolving dislocation configurations during constant loading, a confusion algorithm is shown to be able to distinguish the systems into two separate phases. These phases agree well with the observed changes in the relaxation rate during the loading. Our results also give insights on the structure of the dislocation networks in the two phases.
机译:错位的集体运动受他们遇到的障碍的管辖。在纯晶体中,脱位形成复杂结构,因为它们被各向异性剪切应力场堵塞。另一方面,向晶体引入疾病导致销钉引脚到这些阻碍元件,从而导致位错脱位和错位障碍相互作用之间的竞争。以前的研究表明,取决于主导的相互作用,机械响应和晶体产量变化的方式。我们采用三维离散位错动力学模拟,不同密度的完全相干沉淀物的沉淀物才能研究这种相转变?从干扰钉住?使用无监督的机器学习。通过构造表征在恒定负载期间的演化错开配置的描述符,显示了混淆算法能够将系统区分成两个单独的阶段。这些阶段与在装载过程中观察到的放松率的变化很好。我们的结果还提供了两个阶段位错网络结构的见解。

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