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Modeling Macroscopic Material Behavior With Machine Learning Algorithms Trained by Micromechanical Simulations

机译:用微机械模拟训练机器学习算法建模宏观材料行为

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Micromechanical modeling of material behavior has become an accepted approach to describe the macroscopic mechanical properties of polycrystalline materials in a micro- structure-sensitive way. The microstructure is modeled by a representative volume ele- ment (RVE), and the anisotropic mechanical behavior of individual grains is described by a crystal plasticity model. Such micromechanical models are subjected to mechanical loads in a finite element (FE) simulation and their macroscopic behavior is obtained from a homogenization procedure. However, such micromechanical simulations with a discrete representation of the material microstructure are computationally very expensive, in par- ticular when conducted for 3D models, such that it is prohibitive to apply them for process simulations of macroscopic components. In this work, we suggest a new approach to de- velop microstructure-sensitive, yet flexible and numerically efficient macroscopic material models by using micromechanical simulations for training Machine Learning (ML) algo- rithms to capture the mechanical response of various microstructures under different loads. In this way, the trained ML algorithms represent a new macroscopic constitutive relation, which is demonstrated here for the case of damage modeling. In a second application of the combination of ML algorithms and micromechanical modeling, a proof of concept is presented for the application of trained ML algorithms for microstructure design with respect to desired mechanical properties. The input data consist of different stress-strain curves obtained from micromechanical simulations of uniaxial testing of a wide range of microstructures. The trained ML algorithm is then used to suggest grain size distributions, grain morphologies and crystallographic textures, which yield the desired mechanical response for a given application. For validation purposes, 1the resulting grain microstructure parameters are used to generate RVEs, accordingly and the macroscopic stress-strain curves for those microstructures are calculated and compared with the target quantities. The two examples presented in this work, demonstrate clearly that ML methods can be trained by micromechanical simulations, which capture material behaviour and its relation to microstructural mechanisms in a physically sound way. Since the quality of the ML algorithms is only as good as that of the micromechanical model, it is essential to validate these models properly. Furthermore.
机译:材料行为的微机械建模已成为描述多晶材料以微结构敏感方式的宏观力学性能的接受方法。微观结构由代表性体积(RVE)建模,并且通过晶体塑性模型描述各种晶粒的各向异性机械行为。这种微机械模型在有限元(Fe)模拟中受到机械载荷,并且它们的宏观行为是从均质化过程中获得的。然而,这种具有离散表示的微机械模拟材料微结构的分散表示是非常昂贵的,其在为3D模型进行时,使得对于宏观组分的过程模拟来说是令人望而却要的。在这项工作中,我们建议通过使用微机械模拟来培训机器学习(ML)算法来实现微观结构敏感,且数量有效的宏观材料模型的新方法,以捕获不同负载下各种微观结构的机械响应。以这种方式,训练的ML算法代表了一种新的宏观本构关系,其在此进行损坏建模的情况。在二次应用M1算法和微机械建模的组合中,呈现概念证明,用于应用训练的ML算法,用于相对于期望的机械性能的微观结构设计。输入数据由从微观机械模拟获得的单轴测试的不同微观结构的不同应力 - 应变曲线组成。然后使用训练的ML算法来提示晶粒尺寸分布,晶粒形态和晶体纹理,从而产生给定应用的所需机械响应。为了验证目的,使用所得到的晶粒微观结构参数来产生r瓦,因此计算并将用于这些微结构的宏观应力 - 应变曲线进行计算并与目标量进行比较。本作作品中提出的两个示例清楚地证明了ML方法可以通过微机械模拟训练,其以物理声音方式捕获材料行为及其与微观结构机制的关系。由于ML算法的质量与微机械模型的质量一样好,因此必须正确验证这些模型。此外。

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