Xiaowen Deng, Yanan Hu, Binghui Hu, Ziyi Wang, Guozheng Kang
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引用次数: 0
摘要
棘轮效应对材料疲劳寿命的不利影响需要精确的预测模型来保证工程结构的安全性。本研究主要采用基于机器学习(ML)的方法预测挤压成型的 AZ31 镁(Mg)合金的单轴棘轮效应。首先,基于现有的镁合金实验结果,总结了棘轮效应的演变和变形机制。随后,针对工程应用开发了一个半经验预测模型,用于描述棘轮应变的演变。然后,提出了一种基于纯数据驱动的 ML 预测模型,以克服半经验模型中存在的缺陷,提高对镁合金单轴棘轮应变的预测精度。最后,提出了一种基于物理信息的 ML 模型,将半经验模型中的物理信息融入其中,以进一步提高其预测精度和泛化能力。与相应实验数据的比较表明,所提出的基于物理信息的 ML 模型具有很高的预测精度和概括能力。
Machine learning based prediction models for uniaxial ratchetting of extruded AZ31 magnesium alloy
The detrimental effect of ratchetting on the fatigue life of materials requires precise prediction models to guarantee the safety of engineering structures. This study focuses on predicting the uniaxial ratchetting of extruded AZ31 magnesium (Mg) alloy using machine learning (ML) based approaches. At first, the evolution and deformation mechanisms of ratchetting are summarized based on the existing experimental results of the Mg alloy. Subsequently, a semi-empirical prediction model, tailored for engineering applications, is developed to describe the evolution of ratchetting strain. Then, a pure data-driven ML based prediction model is proposed to overcome the shortcoming existed in the semi-empirical model and improve the prediction accuracy to the uniaxial ratchetting of the Mg alloy. Finally, a physics-informed ML based model, incorporating the physical information derived from the semi-empirical one, is proposed to further enhance its prediction accuracy and generalization ability. The comparison with correspondent experimental data demonstrates that the proposed physics-informed ML based model exhibits high prediction accuracy and generalization ability.
期刊介绍:
Extreme Mechanics Letters (EML) enables rapid communication of research that highlights the role of mechanics in multi-disciplinary areas across materials science, physics, chemistry, biology, medicine and engineering. Emphasis is on the impact, depth and originality of new concepts, methods and observations at the forefront of applied sciences.