论文标题
机器学习降低了位错堆积
Machine learning depinning of dislocation pileups
论文作者
论文摘要
我们研究了由外部压力驱动并与随机猝灭障碍相互作用的脱位堆积的一维模型,重点是塑性变形过程的可预测性。在对零的外部施加应力提升时,系统会通过表现出不规则的应力 - 应变曲线,该曲线由一系列应变爆发,即临界级别的脱位雪崩。应变爆发是分布到截止量表的幂律,随着应力水平增加到临界流动应力值。在那里,系统经历了默认的相变,并且位错开始无限期地移动,即应变爆发尺寸差异。使用有关固定景观以及初始位错配置作为输入的样本特异性信息,我们采用了预测模型,例如线性回归,简单的神经网络和卷积神经网络,以研究单个样品的模拟应力 - 应变曲线的可预测性。我们的结果表明,可以很好地预测系统的响应(包括流动应力值),而预测和实际应力之间的相关系数表现出对应变的非单调依赖性。我们还讨论了预测个体应变爆发的尝试。
We study a one-dimensional model of a dislocation pileup driven by an external stress and interacting with random quenched disorder, focusing on predictability of the plastic deformation process. Upon quasistatically ramping up the externally applied stress from zero the system responds by exhibiting an irregular stress--strain curve consisting of a sequence of strain bursts, i.e., critical-like dislocation avalanches. The strain bursts are power-law distributed up to a cutoff scale which increases with the stress level up to a critical flow stress value. There, the system undergoes a depinning phase transition and the dislocations start moving indefinitely, i.e., the strain burst size diverges. Using sample-specific information about the pinning landscape as well as the initial dislocation configuration as input, we employ predictive models such as linear regression, simple neural networks and convolutional neural networks to study the predictability of the simulated stress--strain curves of individual samples. Our results show that the response of the system -- including the flow stress value -- can be predicted quite well, with the correlation coefficient between predicted and actual stress exhibiting a non-monotonic dependence on strain. We also discuss our attempts to predict the individual strain bursts.