本构方程
非线性系统
可塑性
实验数据
材料科学
有限元法
压力(语言学)
概括性
计算机科学
机械
结构工程
数学
工程类
物理
语言学
统计
哲学
量子力学
复合材料
心理学
心理治疗师
作者
Xin Li,Ziqi Li,Yang Chen,Chao Zhang
标识
DOI:10.1016/j.euromechsol.2023.104996
摘要
Data-driven and machine-learning based approaches provide a highly compatible and efficient fundamentals for the mechanical constitutive modeling of engineering materials. In this work, an enhanced data-driven constitutive model is developed to predict the stress–strain relationship of an elastoplastic material through the integration of a data-driven concept with fundamental plasticity theory. A novel strain reconfiguration strategy is proposed to improve the learning capability and predictability of the data-driven model, along with a two-step training method. A compatible numerical implementation algorithm is developed to incorporate the data-driven approach into a finite element calculation. This developed data-driven constitutive model is applied to learn and predict the mechanical response of Ti-6Al-4V titanium alloy under multiple loading conditions, including five different loading rates, four different temperatures, and thirteen different stress states. The excellent correlation with the experimental results demonstrates the high accuracy and generality of the presented approach, especially its capability for predicting unknown nonlinear stress–strain response. The presented theory reveals the great potential of employing such a data-driven approach in computational mechanics.
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