Learning-based approach to plasticity in athermal sheared amorphous packings: Improving softness

J. Rocks, S. Ridout, Andrea J. Liu
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引用次数: 9

Abstract

The plasticity of amorphous solids undergoing shear is characterized by quasi-localized rearrangements of particles. While many models of plasticity exist, the precise relationship between plastic dynamics and the structure of a particle's local environment remains an open question. Previously, machine learning was used to identify a structural predictor of rearrangements, called "softness." Although softness has been shown to predict which particles will rearrange with high accuracy, the method can be difficult to implement in experiments where data is limited and the combinations of descriptors it identifies are often difficult to interpret physically. Here we address both of these weaknesses, presenting two major improvements to the standard softness method. First, we present a natural representation of each particle's observed mobility, allowing for the use of statistical models which are both simpler and provide greater accuracy in limited data sets. Second, we employ persistent homology as a systematic means of identifying simple, topologically-informed, structural quantities that are easy to interpret and measure experimentally. We test our methods on two-dimensional athermal packings of soft spheres under quasi-static shear. We find that the same structural information which predicts small variations in the response is also predictive of where plastic events will localize. We also find that excellent accuracy is achieved in athermal sheared packings using simply a particle's species and the number of nearest neighbor contacts.
基于学习的非热剪切非晶填料塑性研究方法:改善柔软性
剪切作用下非晶固体的塑性表现为准局域重排。虽然存在许多塑性模型,但塑性动力学与粒子局部环境结构之间的精确关系仍然是一个悬而未决的问题。以前,机器学习被用来识别重排的结构预测因子,称为“柔软度”。虽然软性已经被证明可以高精度地预测哪些粒子会重新排列,但在数据有限的实验中,这种方法很难实施,而且它识别的描述符组合通常很难在物理上解释。在这里,我们解决了这两个弱点,提出了对标准柔软度方法的两个主要改进。首先,我们给出了观察到的每个粒子迁移率的自然表示,允许使用既简单又在有限数据集中提供更高精度的统计模型。其次,我们采用持久同源性作为识别简单,拓扑信息,结构量的系统手段,易于解释和测量实验。在准静态剪切作用下对软球二维非热填料进行了实验。我们发现,同样的结构信息可以预测响应的微小变化,也可以预测塑性事件将发生在哪里。我们还发现,在非热剪切填料中,仅使用粒子的种类和最近邻接触的数量就可以获得极好的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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