A Machine Learning Constitutive Model for Plasticity and Strain Hardening of Polycrystalline Metals Based on Data from Micromechanical Simulations

Ronak Shoghi, A. Hartmaier
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Abstract

Machine Learning (ML) methods have emerged as promising tools for generating constitutive models directly from mechanical data. Constitutive models are fundamental in describing and predicting the mechanical behavior of materials under arbitrary loading conditions. In recent approaches, the yield function, central to constitutive models, has been formulated in a data-oriented manner using ML. Many ML approaches have primarily focused on initial yielding, and the effect of strain hardening has not been widely considered. However, taking strain hardening into account is crucial for accurately describing the deformation behavior of polycrystalline metals. To address this problem, the present study introduces an ML-based yield function formulated as a Support Vector Classification (SVC) model, which encompasses strain hardening. This function was trained using a 12-dimensional feature vector that includes stress and plastic strain components resulting from crystal-plasticity finite element method (CPFEM) simulations on a three-dimensional representative volume element (RVE) with 343 grains with a random crystallographic texture. These simulations were carried out to mimic multi-axial mechanical testing of the polycrystal under proportional loading in 300 different directions, which were selected to ensure proper coverage of the full stress space. The training data were directly taken from the stress-strain results obtained for the 300 multi-axial load cases. It is shown that the ML yield function trained on these data describes not only the initial yield behavior but also the flow stresses in the plastic regime with a very high accuracy and robustness. The workflow introduced in this work to generate synthetic mechanical data based on realistic CPFEM simulations and to train an ML yield function, including strain hardening, will open new possibilities in microstructure-sensitive materials modeling and thus pave the way for obtaining digital material twins.
基于微机械模拟数据的多晶金属塑性和应变硬化机器学习构造模型
机器学习(ML)方法已成为直接从力学数据生成构造模型的有效工具。构造模型是描述和预测任意加载条件下材料力学行为的基础。在最近的方法中,屈服函数是构成模型的核心,已通过使用 ML 以数据为导向的方式进行了表述。许多 ML 方法主要关注初始屈服,应变硬化的影响尚未得到广泛考虑。然而,考虑应变硬化对于准确描述多晶金属的变形行为至关重要。为解决这一问题,本研究引入了基于 ML 的屈服函数,该函数以支持向量分类 (SVC) 模型的形式制定,其中包含应变硬化。该函数使用 12 维特征向量进行训练,特征向量包括晶体塑性有限元法 (CPFEM) 模拟中产生的应力和塑性应变成分,模拟对象是具有随机晶体纹理的 343 个晶粒的三维代表体积元素 (RVE)。进行这些模拟是为了模拟多晶体在 300 个不同方向上按比例加载的多轴机械测试,选择这些方向是为了确保适当覆盖整个应力空间。训练数据直接取自 300 个多轴载荷情况下获得的应力-应变结果。结果表明,在这些数据上训练出的 ML 屈服函数不仅能描述初始屈服行为,还能以极高的精度和鲁棒性描述塑性状态下的流动应力。这项工作中引入的基于真实的 CPFEM 模拟生成合成力学数据并训练 ML 屈服函数(包括应变硬化)的工作流程将为微观结构敏感材料建模开辟新的可能性,从而为获得数字材料孪生铺平道路。
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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