基于疲劳指标参数的物理信息神经网络框架,用于超高循环钛合金的疲劳寿命预测

IF 3.1 2区 材料科学 Q2 ENGINEERING, MECHANICAL
Hang Li, Guanze Sun, Zhao Tian, Kezhi Huang, Zihua Zhao
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引用次数: 0

摘要

基于疲劳指标参数的疲劳寿命预测方法的应用揭示了缺陷尺寸、位置和形态对添加制造金属疲劳寿命和疲劳行为的影响。同时,数据驱动的寿命预测方法虽然省时高效,但却难以解释。目前基于机器学习的疲劳寿命预测方法不仅要求预测结果的准确性,还要求预测结果的可解释性和稳定性。因此,物理方法与机器学习方法的融合一直是疲劳寿命预测领域的热门研究课题。在本研究中,通过将基于缺陷的疲劳指标参数整合到损失函数的物理约束项中,提出了一种新颖的物理信息神经网络框架。在高循环和超高循环条件下,该方法优于传统的机器学习方法,表现出卓越的预测性能和泛化能力。此外,预测结果可以从物理角度进行解释,与所引入的描述缺陷位置的物理方程的适用范围相关联。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A physics-informed neural network framework based on fatigue indicator parameters for very high cycle fatigue life prediction of an additively manufactured titanium alloy

The exploitation of fatigue life prediction methods based on fatigue indicator parameters revealed the influence of the defect size, position, and morphology on the fatigue life and fatigue behavior of additively manufactured metals. Meanwhile, Data-driven life prediction methods are time-efficient but inexplainable. Current machine learning-based fatigue life prediction methods call for not only the accuracy but also the interpretability and stability of prediction results. Thus, the fusion of physical methods and machine learning methods has been a prevailing research topic in fatigue life prediction. In this study, a novel physics-informed neural network framework is proposed by integrating a fatigue indicator parameter based on defects into the physical constraints term of a loss function. This method outperforms conventional machine learning methods in high-cycle and very high-cycle regimes, exhibiting superior prediction performance and generalization ability. Furthermore, the prediction results can be explained from a physical standpoint, correlating with the applicability range of the introduced physical equation describing defect positions.

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来源期刊
CiteScore
6.30
自引率
18.90%
发文量
256
审稿时长
4 months
期刊介绍: Fatigue & Fracture of Engineering Materials & Structures (FFEMS) encompasses the broad topic of structural integrity which is founded on the mechanics of fatigue and fracture, and is concerned with the reliability and effectiveness of various materials and structural components of any scale or geometry. The editors publish original contributions that will stimulate the intellectual innovation that generates elegant, effective and economic engineering designs. The journal is interdisciplinary and includes papers from scientists and engineers in the fields of materials science, mechanics, physics, chemistry, etc.
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