Oleh Yasniy , Sergiy Fedak , Iryna Didych , Sofia Fedak , Nadiya Kryva
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引用次数: 0
摘要
对研究 AMg6 铝合金跳跃变形的各种方法进行了比较。AMg6 合金的特点是在塑性区域内进行单轴拉伸时,变形会瞬间增大。假设跳跃式拉伸变形的过程是由材料体积中的分散体开裂引起的。基于这一假设,提出了根据被破坏夹杂物的比例预测跳跃变形的开始和大小的方法。特别是使用 ANSYS 软件综合体来预测跃迁变形,其中开发了几组有限元模型,以确定模拟环境的结构异质性参数对应力-应变状态的主要影响模式。此外,考虑到大量的实验数据,学习如何利用机器学习(ML),特别是神经网络来解决此类问题非常重要。已经证实,最常用的 ML 方法之一,即神经网络的预测准确率超过 90%。
Methods of jump-like modeling of the discontinuous yield of AMg6 aluminum alloy
Various approaches for studying the jump-like deformation of AMg6 aluminum alloy are being compared. AMg6 alloy is characterized by instantaneous deformation increases during uniaxial stretching in the area of plasticity. It was assumed that the process of jump-like tensile deformation is caused by the cracking of dispersoids in the volume of the material. Based on that assumption, the methods that predict the initiation and magnitude of jump-like deformation depending on the proportion of destroyed inclusions were proposed. In particular, the ANSYS software complex was used to predict jump-like deformation, in which the groups of finite element models were developed to determine the main patterns of influence of structural heterogeneity parameters of the simulated environment on the stress-strain state. In addition, given the large amount of experimental data, it is important to learn how to solve such problems using machine learning (ML), particularly neural networks. It has been established that the prediction accuracy by one of the most common ML methods, that was neural networks, comprised more than 90%.